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| | #include "convolution_x86_avx.h" |
| |
|
| | #if __SSE2__ |
| | #include <emmintrin.h> |
| | #if __SSSE3__ |
| | #include <tmmintrin.h> |
| | #if __SSE4_1__ |
| | #include <smmintrin.h> |
| | #if __AVX__ |
| | #include <immintrin.h> |
| | #endif |
| | #endif |
| | #endif |
| | #endif |
| | #include "x86_activation.h" |
| | #include "x86_usability.h" |
| |
|
| | #include "benchmark.h" |
| | #include "cpu.h" |
| | #include "layer_type.h" |
| |
|
| | namespace ncnn { |
| |
|
| | #include "convolution_3x3.h" |
| | #include "convolution_5x5.h" |
| |
|
| | #include "convolution_3x3_winograd.h" |
| | #include "convolution_packed.h" |
| |
|
| | #if NCNN_INT8 |
| | #include "convolution_3x3_int8.h" |
| |
|
| | #include "convolution_packed_int8.h" |
| | #include "convolution_im2col_gemm_int8.h" |
| | #endif |
| |
|
| | #if __SSE2__ |
| | #include "convolution_3x3_pack1to4.h" |
| |
|
| | #if NCNN_INT8 |
| | #include "convolution_3x3_pack8to4_int8.h" |
| | #include "convolution_3x3_pack8to1_int8.h" |
| | #endif |
| |
|
| | #if __AVX__ |
| | #include "convolution_3x3_pack1to8.h" |
| | #include "convolution_3x3_pack8to1.h" |
| | #include "convolution_3x3_pack8.h" |
| | #include "convolution_2x2_pack8.h" |
| |
|
| | #if __AVX512F__ |
| | #include "convolution_3x3_pack16to1.h" |
| | #endif |
| | #endif |
| | #endif |
| |
|
| | Convolution_x86_avx::Convolution_x86_avx() |
| | { |
| | #if __SSE2__ |
| | support_packing = true; |
| | #endif |
| |
|
| | activation = 0; |
| | nT = 0; |
| | convolution_dilation1 = 0; |
| | gemm = 0; |
| | } |
| |
|
| | static void convolution_transform_kernel_packed_sse(const Mat& weight_data, Mat& weight_data_tm, int num_input, int num_output, int kernel_w, int kernel_h, int elempack, int out_elempack) |
| | { |
| | const int maxk = kernel_w * kernel_h; |
| |
|
| | |
| | |
| | { |
| | Mat weight_data_r2 = weight_data.reshape(maxk, num_input, num_output); |
| |
|
| | weight_data_tm.create(maxk, num_input / elempack, num_output / out_elempack, (size_t)4u * elempack * out_elempack, elempack * out_elempack); |
| |
|
| | for (int q = 0; q + (out_elempack - 1) < num_output; q += out_elempack) |
| | { |
| | float* g00 = weight_data_tm.channel(q / out_elempack); |
| |
|
| | for (int p = 0; p + (elempack - 1) < num_input; p += elempack) |
| | { |
| | for (int k = 0; k < maxk; k++) |
| | { |
| | for (int i = 0; i < elempack; i++) |
| | { |
| | for (int j = 0; j < out_elempack; j++) |
| | { |
| | const float* k00 = weight_data_r2.channel(q + j).row(p + i); |
| |
|
| | g00[0] = k00[k]; |
| |
|
| | g00++; |
| | } |
| | } |
| | } |
| | } |
| | } |
| | } |
| | } |
| |
|
| | static bool test_prefer_winograd63(int num_input, int num_output, int w, int h) |
| | { |
| | |
| |
|
| | int minwh = std::min(w, h); |
| |
|
| | if (num_input >= 64) |
| | { |
| | return false; |
| | } |
| | if (num_input >= 32) |
| | { |
| | if (num_output >= 64) return false; |
| | if (num_output >= 32) return (minwh >= 11 && minwh <= 14) |
| | || (minwh >= 19 && minwh <= 20) |
| | || (minwh >= 23 && minwh <= 44) |
| | || (minwh >= 47 && minwh <= 56) |
| | || (minwh >= 63 && minwh <= 130); |
| | if (num_output >= 16) return (minwh >= 13 && minwh <= 14) |
| | || (minwh >= 19 && minwh <= 20) |
| | || (minwh >= 23 && minwh <= 38) |
| | || (minwh >= 43 && minwh <= 44) |
| | || (minwh >= 47 && minwh <= 140); |
| | if (num_output >= 8) return (minwh >= 11 && minwh <= 14) |
| | || (minwh >= 19 && minwh <= 20) |
| | || (minwh >= 31 && minwh <= 38) |
| | || (minwh >= 43 && minwh <= 44) |
| | || (minwh >= 55 && minwh <= 162); |
| | return false; |
| | } |
| | if (num_input >= 16) |
| | { |
| | if (num_output >= 64) return false; |
| | if (num_output >= 32) return (minwh >= 11 && minwh <= 14) |
| | || (minwh >= 19 && minwh <= 20) |
| | || (minwh >= 23 && minwh <= 44) |
| | || (minwh >= 47 && minwh <= 92) |
| | || (minwh >= 95 && minwh <= 188); |
| | if (num_output >= 16) return (minwh >= 11 && minwh <= 14) |
| | || (minwh >= 27 && minwh <= 38) |
| | || (minwh >= 43 && minwh <= 44) |
| | || (minwh >= 47 && minwh <= 74) |
| | || (minwh >= 81 && minwh <= 110) |
| | || (minwh >= 117 && minwh <= 170) |
| | || (minwh >= 177 && minwh <= 182); |
| | if (num_output >= 8) return (minwh >= 19 && minwh <= 20) |
| | || (minwh >= 33 && minwh <= 38) |
| | || (minwh >= 43 && minwh <= 44) |
| | || (minwh >= 47 && minwh <= 128) |
| | || (minwh >= 155 && minwh <= 210); |
| | return false; |
| | } |
| | if (num_input >= 8) |
| | { |
| | if (num_output >= 64) return false; |
| | if (num_output >= 32) return (minwh >= 7 && minwh <= 14) |
| | || (minwh >= 17 && minwh <= 20) |
| | || (minwh >= 23 && minwh <= 26) |
| | || (minwh >= 31 && minwh <= 38) |
| | || (minwh >= 43 && minwh <= 162); |
| | if (num_output >= 16) return minwh == 31 || minwh == 32 |
| | || (minwh >= 39 && minwh <= 44) |
| | || (minwh >= 47 && minwh <= 212); |
| | if (num_output >= 8) return false; |
| | return false; |
| | } |
| |
|
| | return false; |
| | } |
| |
|
| | static bool test_prefer_winograd23(int num_input, int num_output, int w, int h) |
| | { |
| | int minwh = std::min(w, h); |
| |
|
| | if (num_input >= 512) |
| | { |
| | if (num_output >= 512) return (minwh >= 3 && minwh <= 14); |
| | if (num_output >= 256) return (minwh >= 3 && minwh <= 14); |
| | if (num_output >= 128) return (minwh >= 3 && minwh <= 14); |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 8) || (minwh >= 11 && minwh <= 12); |
| | if (num_output >= 32) return (minwh >= 3 && minwh <= 8); |
| | if (num_output >= 16) return (minwh >= 3 && minwh <= 8); |
| | if (num_output >= 8) return (minwh >= 3 && minwh <= 6); |
| | return false; |
| | } |
| | if (num_input >= 256) |
| | { |
| | if (num_output >= 512) return (minwh >= 3 && minwh <= 14); |
| | if (num_output >= 256) return (minwh >= 3 && minwh <= 14); |
| | if (num_output >= 128) return (minwh >= 3 && minwh <= 12); |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 4); |
| | if (num_output >= 32) return (minwh >= 3 && minwh <= 8); |
| | if (num_output >= 16) return (minwh >= 3 && minwh <= 8); |
| | if (num_output >= 8) return (minwh >= 3 && minwh <= 6); |
| | return false; |
| | } |
| | if (num_input >= 128) |
| | { |
| | if (num_output >= 512) return (minwh >= 3 && minwh <= 14); |
| | if (num_output >= 256) return (minwh >= 3 && minwh <= 8) || (minwh >= 11 && minwh <= 12); |
| | if (num_output >= 128) return (minwh >= 3 && minwh <= 10); |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 8); |
| | if (num_output >= 32) return (minwh >= 3 && minwh <= 10); |
| | if (num_output >= 16) return (minwh >= 3 && minwh <= 6); |
| | if (num_output >= 8) return (minwh >= 3 && minwh <= 6); |
| | return false; |
| | } |
| | if (num_input >= 64) |
| | { |
| | if (num_output >= 512) return (minwh >= 3 && minwh <= 8) || (minwh >= 11 && minwh <= 12) || (minwh >= 15 && minwh <= 20); |
| | if (num_output >= 256) return (minwh >= 7 && minwh <= 8); |
| | if (num_output >= 128) return (minwh >= 3 && minwh <= 8) || (minwh >= 19 && minwh <= 22); |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 12); |
| | if (num_output >= 32) return (minwh >= 3 && minwh <= 12); |
| | if (num_output >= 16) return (minwh >= 3 && minwh <= 12); |
| | if (num_output >= 8) return (minwh >= 3 && minwh <= 12); |
| | return false; |
| | } |
| | if (num_input >= 32) |
| | { |
| | if (num_output >= 512) return (minwh >= 3 && minwh <= 6) || (minwh >= 11 && minwh <= 12); |
| | if (num_output >= 256) return (minwh >= 3 && minwh <= 6) || (minwh >= 11 && minwh <= 12); |
| | if (num_output >= 128) return (minwh >= 3 && minwh <= 4) || (minwh >= 7 && minwh <= 16); |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 8); |
| | if (num_output >= 32) return (minwh >= 7 && minwh <= 8); |
| | if (num_output >= 16) return (minwh >= 7 && minwh <= 8); |
| | if (num_output >= 8) return (minwh >= 3 && minwh <= 10); |
| | return false; |
| | } |
| | if (num_input >= 16) |
| | { |
| | if (num_output >= 512) return (minwh >= 11 && minwh <= 12); |
| | if (num_output >= 256) return (minwh >= 3 && minwh <= 12); |
| | if (num_output >= 128) return (minwh >= 3 && minwh <= 6) |
| | || (minwh >= 9 && minwh <= 18); |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 4) |
| | || (minwh >= 7 && minwh <= 8) |
| | || (minwh >= 11 && minwh <= 12) |
| | || (minwh >= 15 && minwh <= 18); |
| | if (num_output >= 32) return (minwh >= 3 && minwh <= 4) |
| | || (minwh >= 9 && minwh <= 10); |
| | if (num_output >= 16) return (minwh >= 3 && minwh <= 10); |
| | if (num_output >= 8) return (minwh >= 3 && minwh <= 8) |
| | || (minwh >= 11 && minwh <= 12); |
| | return false; |
| | } |
| | if (num_input >= 8) |
| | { |
| | if (num_output >= 128) return false; |
| | if (num_output >= 64) return (minwh >= 3 && minwh <= 4) |
| | || (minwh >= 7 && minwh <= 14) |
| | || (minwh >= 47 && minwh <= 48); |
| | if (num_output >= 32) return (minwh >= 3 && minwh <= 6) |
| | || (minwh >= 15 && minwh <= 16); |
| | if (num_output >= 16) return (minwh >= 3 && minwh <= 6) |
| | || (minwh >= 9 && minwh <= 14) |
| | || (minwh >= 47 && minwh <= 212); |
| | if (num_output >= 8) return true; |
| | return false; |
| | } |
| |
|
| | return false; |
| | } |
| |
|
| | int Convolution_x86_avx::create_pipeline(const Option& opt) |
| | { |
| | if (dynamic_weight) |
| | return 0; |
| |
|
| | activation = create_activation_layer(activation_type, activation_params, opt); |
| | nT = opt.num_threads; |
| |
|
| | #if NCNN_INT8 |
| | if (opt.use_int8_inference && weight_data.elemsize == (size_t)1u) |
| | { |
| | return create_pipeline_int8_x86(opt); |
| | } |
| | #endif |
| |
|
| | int kernel_size = kernel_w * kernel_h; |
| | int num_input = weight_data_size / kernel_size / num_output; |
| |
|
| | if (!opt.use_packing_layout && kernel_w == kernel_h && dilation_w != 1 && dilation_h == dilation_w && stride_w == 1 && stride_h == 1) |
| | { |
| | convolution_dilation1 = ncnn::create_layer(ncnn::LayerType::Convolution); |
| |
|
| | |
| | ncnn::ParamDict pd; |
| | pd.set(0, num_output); |
| | pd.set(1, kernel_w); |
| | pd.set(11, kernel_h); |
| | pd.set(2, 1); |
| | pd.set(12, 1); |
| | pd.set(3, 1); |
| | pd.set(13, 1); |
| | pd.set(4, 0); |
| | pd.set(14, 0); |
| | pd.set(5, bias_term); |
| | pd.set(6, weight_data_size); |
| |
|
| | convolution_dilation1->load_param(pd); |
| |
|
| | |
| | if (bias_term) |
| | { |
| | ncnn::Mat weights[2]; |
| | weights[0] = weight_data; |
| | weights[1] = bias_data; |
| |
|
| | convolution_dilation1->load_model(ModelBinFromMatArray(weights)); |
| | } |
| | else |
| | { |
| | ncnn::Mat weights[1]; |
| | weights[0] = weight_data; |
| |
|
| | convolution_dilation1->load_model(ModelBinFromMatArray(weights)); |
| | } |
| |
|
| | convolution_dilation1->create_pipeline(opt); |
| |
|
| | if (opt.lightmode) |
| | { |
| | weight_data.release(); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int elempack = 1; |
| | int out_elempack = 1; |
| |
|
| | #if __SSE2__ |
| | if (opt.use_packing_layout) |
| | { |
| | #if __AVX512F__ |
| | elempack = num_input % 16 == 0 ? 16 : num_input % 8 == 0 ? 8 : num_input % 4 == 0 ? 4 : 1; |
| | out_elempack = num_output % 16 == 0 ? 16 : num_output % 8 == 0 ? 8 : num_output % 4 == 0 ? 4 : 1; |
| | #elif __AVX__ |
| | elempack = num_input % 8 == 0 ? 8 : num_input % 4 == 0 ? 4 : 1; |
| | out_elempack = num_output % 8 == 0 ? 8 : num_output % 4 == 0 ? 4 : 1; |
| | #else |
| | elempack = num_input % 4 == 0 ? 4 : 1; |
| | out_elempack = num_output % 4 == 0 ? 4 : 1; |
| | #endif |
| | } |
| | #endif |
| |
|
| | bool prefer_winograd = (opt.use_winograd23_convolution || opt.use_winograd43_convolution || opt.use_winograd63_convolution) && (num_input > 8 || num_output > 8); |
| |
|
| | if (opt.use_winograd_convolution && prefer_winograd && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | if ((bottom_shapes.empty() || bottom_shapes[0].w == 0 || bottom_shapes[0].h == 0) && (top_shapes.empty() || top_shapes[0].w == 0 || top_shapes[0].h == 0)) |
| | { |
| | |
| | if ((opt.use_winograd63_convolution) && (num_input <= 32 && num_output <= 32)) |
| | conv3x3s1_winograd63_transform_kernel(weight_data, weight_winograd63_data, num_input, num_output, opt); |
| | else if (opt.use_winograd43_convolution) |
| | conv3x3s1_winograd43_transform_kernel(weight_data, weight_winograd43_data, num_input, num_output, opt); |
| | else |
| | conv3x3s1_winograd23_transform_kernel(weight_data, weight_winograd23_data, num_input, num_output, opt); |
| | } |
| | else |
| | { |
| | int w; |
| | int h; |
| | if (top_shapes.empty() || top_shapes[0].w == 0 || top_shapes[0].h == 0) |
| | { |
| | w = bottom_shapes[0].w; |
| | h = bottom_shapes[0].h; |
| |
|
| | |
| | if (pad_left > 0 || pad_right > 0 || pad_top > 0 || pad_bottom > 0) |
| | { |
| | w += pad_left + pad_right; |
| | h += pad_top + pad_bottom; |
| | } |
| | else if ((pad_left == -233 && pad_right == -233 && pad_top == -233 && pad_bottom == -233) |
| | || (pad_left == -234 && pad_right == -234 && pad_top == -234 && pad_bottom == -234)) |
| | { |
| | |
| | w += 2; |
| | h += 2; |
| | } |
| | } |
| | else |
| | { |
| | w = top_shapes[0].w + 2; |
| | h = top_shapes[0].h + 2; |
| | } |
| |
|
| | bool prefer_winograd63 = test_prefer_winograd63(num_input, num_output, w, h); |
| | bool prefer_winograd23 = test_prefer_winograd23(num_input, num_output, w, h); |
| | bool prefer_winograd43 = !prefer_winograd63 && !prefer_winograd23; |
| |
|
| | if (prefer_winograd23 && !opt.use_winograd23_convolution) |
| | { |
| | |
| | prefer_winograd23 = false; |
| | prefer_winograd43 = true; |
| | } |
| |
|
| | if (prefer_winograd63 && !opt.use_winograd63_convolution) |
| | { |
| | |
| | prefer_winograd63 = false; |
| | prefer_winograd43 = true; |
| | } |
| |
|
| | if (prefer_winograd43 && !opt.use_winograd43_convolution) |
| | { |
| | |
| | prefer_winograd43 = false; |
| | if (opt.use_winograd63_convolution) |
| | { |
| | prefer_winograd63 = true; |
| | } |
| | else |
| | { |
| | prefer_winograd23 = true; |
| | } |
| | } |
| |
|
| | if (prefer_winograd23) |
| | { |
| | conv3x3s1_winograd23_transform_kernel(weight_data, weight_winograd23_data, num_input, num_output, opt); |
| | } |
| | else if (prefer_winograd43) |
| | { |
| | conv3x3s1_winograd43_transform_kernel(weight_data, weight_winograd43_data, num_input, num_output, opt); |
| | } |
| | else if (prefer_winograd63) |
| | { |
| | conv3x3s1_winograd63_transform_kernel(weight_data, weight_winograd63_data, num_input, num_output, opt); |
| | } |
| | else |
| | { |
| | |
| | } |
| | } |
| |
|
| | if (opt.lightmode) |
| | { |
| | weight_data.release(); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int l2_cache_size = get_cpu_level2_cache_size(); |
| | bool prefer_sgemm = num_input * num_output * kernel_w * kernel_h * dilation_w * dilation_h * stride_w * stride_h * (int)sizeof(float) * 2 > l2_cache_size || (num_input > 16 || num_output > 16); |
| |
|
| | if ((opt.use_sgemm_convolution && prefer_sgemm) || (kernel_w == 1 && kernel_h == 1)) |
| | { |
| | const int maxk = kernel_w * kernel_h; |
| |
|
| | gemm = ncnn::create_layer(ncnn::LayerType::Gemm); |
| |
|
| | ncnn::ParamDict pd; |
| | pd.set(2, 0); |
| | pd.set(3, 0); |
| | pd.set(4, 1); |
| | pd.set(5, 0); |
| | pd.set(6, 1); |
| | pd.set(7, num_output); |
| | pd.set(8, 0); |
| | pd.set(9, maxk * num_input); |
| | pd.set(10, bias_term ? 1 : -1); |
| | pd.set(11, 1); |
| |
|
| | gemm->load_param(pd); |
| |
|
| | |
| | Mat tmp; |
| | { |
| | Mat weight_data_r2 = weight_data.reshape(maxk, num_input, num_output); |
| |
|
| | tmp.create(maxk * num_input, num_output); |
| |
|
| | for (int q = 0; q < num_output; q += 1) |
| | { |
| | float* g00 = tmp.row(q); |
| |
|
| | for (int p = 0; p + (elempack - 1) < num_input; p += elempack) |
| | { |
| | for (int k = 0; k < maxk; k++) |
| | { |
| | for (int i = 0; i < elempack; i++) |
| | { |
| | const float* k00 = weight_data_r2.channel(q).row(p + i); |
| | g00[0] = k00[k]; |
| | g00++; |
| | } |
| | } |
| | } |
| | } |
| | } |
| |
|
| | if (bias_term) |
| | { |
| | ncnn::Mat weights[2]; |
| | weights[0] = tmp; |
| | weights[1] = bias_data; |
| |
|
| | gemm->load_model(ModelBinFromMatArray(weights)); |
| | } |
| | else |
| | { |
| | ncnn::Mat weights[1]; |
| | weights[0] = tmp; |
| |
|
| | gemm->load_model(ModelBinFromMatArray(weights)); |
| | } |
| |
|
| | gemm->create_pipeline(opt); |
| | } |
| | else |
| | { |
| | if ((elempack == 16 && out_elempack == 1 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | || (elempack == 8 && out_elempack == 8 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | || (elempack == 8 && out_elempack == 8 && kernel_w == 2 && kernel_h == 2 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | || (elempack == 1 && out_elempack == 8 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | || (elempack == 1 && out_elempack == 8 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 2 && stride_h == 2) |
| | || (elempack == 8 && out_elempack == 1 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | || (elempack == 1 && out_elempack == 4 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | || (elempack == 1 && out_elempack == 4 && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 2 && stride_h == 2)) |
| | { |
| | convolution_transform_kernel_packed_sse(weight_data, weight_data_tm, num_input, num_output, kernel_w, kernel_h, elempack, out_elempack); |
| | } |
| | else |
| | { |
| | convolution_transform_kernel_packed(weight_data, weight_data_tm, num_input, num_output, kernel_w, kernel_h); |
| | } |
| | } |
| |
|
| | if (opt.lightmode) |
| | { |
| | weight_data.release(); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int Convolution_x86_avx::destroy_pipeline(const Option& opt) |
| | { |
| | if (activation) |
| | { |
| | activation->destroy_pipeline(opt); |
| | delete activation; |
| | activation = 0; |
| | } |
| |
|
| | if (convolution_dilation1) |
| | { |
| | convolution_dilation1->destroy_pipeline(opt); |
| | delete convolution_dilation1; |
| | convolution_dilation1 = 0; |
| | } |
| |
|
| | if (gemm) |
| | { |
| | gemm->destroy_pipeline(opt); |
| | delete gemm; |
| | gemm = 0; |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int Convolution_x86_avx::forward(const Mat& bottom_blob, Mat& top_blob, const Option& opt) const |
| | { |
| | #if NCNN_INT8 |
| | if (opt.use_int8_inference && int8_scale_term) |
| | { |
| | return forward_int8_x86(bottom_blob, top_blob, opt); |
| | } |
| | #endif |
| |
|
| | |
| | if (bottom_blob.dims == 1 && kernel_w == 1 && kernel_h == 1) |
| | { |
| | Mat bottom_blob_3d; |
| | if (bottom_blob.elemsize % 16 == 0) |
| | { |
| | bottom_blob_3d = bottom_blob; |
| | bottom_blob_3d.dims = 3; |
| | bottom_blob_3d.w = 1; |
| | bottom_blob_3d.h = 1; |
| | bottom_blob_3d.c = bottom_blob.w; |
| | bottom_blob_3d.cstep = 1; |
| | } |
| | else |
| | { |
| | bottom_blob_3d = bottom_blob.reshape(1, 1, bottom_blob.w, opt.workspace_allocator); |
| | } |
| |
|
| | Mat top_blob_3d; |
| | int ret = forward(bottom_blob_3d, top_blob_3d, opt); |
| | if (ret != 0) |
| | return ret; |
| |
|
| | if (top_blob_3d.elemsize % 16 == 0) |
| | { |
| | top_blob = top_blob_3d; |
| | top_blob.dims = 1; |
| | top_blob.w = top_blob_3d.c; |
| | top_blob.h = 1; |
| | top_blob.c = 1; |
| | bottom_blob_3d.cstep = top_blob_3d.c; |
| | } |
| | else |
| | { |
| | top_blob = top_blob_3d.reshape(top_blob_3d.c, opt.blob_allocator); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int w = bottom_blob.w; |
| | int h = bottom_blob.h; |
| | int channels = bottom_blob.c; |
| | size_t elemsize = bottom_blob.elemsize; |
| | int elempack = bottom_blob.elempack; |
| |
|
| | const int kernel_extent_w = dilation_w * (kernel_w - 1) + 1; |
| | const int kernel_extent_h = dilation_h * (kernel_h - 1) + 1; |
| |
|
| | Mat bottom_blob_bordered; |
| | make_padding(bottom_blob, bottom_blob_bordered, opt); |
| | if (bottom_blob_bordered.empty()) |
| | return -100; |
| |
|
| | w = bottom_blob_bordered.w; |
| | h = bottom_blob_bordered.h; |
| |
|
| | int outw = (w - kernel_extent_w) / stride_w + 1; |
| | int outh = (h - kernel_extent_h) / stride_h + 1; |
| | int out_elempack = 1; |
| | #if __SSE2__ |
| | if (opt.use_packing_layout) |
| | { |
| | #if __AVX512F__ |
| | out_elempack = num_output % 16 == 0 ? 16 : num_output % 8 == 0 ? 8 : num_output % 4 == 0 ? 4 : 1; |
| | #elif __AVX__ |
| | out_elempack = num_output % 8 == 0 ? 8 : num_output % 4 == 0 ? 4 : 1; |
| | #else |
| | out_elempack = num_output % 4 == 0 ? 4 : 1; |
| | #endif |
| | } |
| | #endif |
| | size_t out_elemsize = elemsize / elempack * out_elempack; |
| |
|
| | top_blob.create(outw, outh, num_output / out_elempack, out_elemsize, out_elempack, opt.blob_allocator); |
| | if (top_blob.empty()) |
| | return -100; |
| |
|
| | if (!opt.use_packing_layout && kernel_w == kernel_h && dilation_w != 1 && dilation_h == dilation_w && stride_w == 1 && stride_h == 1) |
| | { |
| | if (outw >= dilation_w && outh >= dilation_h) |
| | { |
| | return forwardDilation_x86(bottom_blob_bordered, top_blob, opt); |
| | } |
| | } |
| |
|
| | const int num_input = channels * elempack; |
| |
|
| | bool prefer_winograd = (opt.use_winograd23_convolution || opt.use_winograd43_convolution || opt.use_winograd63_convolution) && (num_input > 8 || num_output > 8); |
| |
|
| | if (opt.use_winograd_convolution && prefer_winograd && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | bool prefer_winograd63 = test_prefer_winograd63(num_input, num_output, w, h); |
| | bool prefer_winograd23 = test_prefer_winograd23(num_input, num_output, w, h); |
| | bool prefer_winograd43 = !prefer_winograd63 && !prefer_winograd23; |
| |
|
| | if (prefer_winograd23 && (!opt.use_winograd23_convolution || weight_winograd23_data.empty())) |
| | { |
| | |
| | prefer_winograd23 = false; |
| | prefer_winograd43 = true; |
| | } |
| |
|
| | if (prefer_winograd63 && (!opt.use_winograd63_convolution || weight_winograd63_data.empty())) |
| | { |
| | |
| | prefer_winograd63 = false; |
| | prefer_winograd43 = true; |
| | } |
| |
|
| | if (prefer_winograd43 && (!opt.use_winograd43_convolution || weight_winograd43_data.empty())) |
| | { |
| | |
| | prefer_winograd43 = false; |
| | if (opt.use_winograd63_convolution && !weight_winograd63_data.empty()) |
| | { |
| | prefer_winograd63 = true; |
| | } |
| | else |
| | { |
| | prefer_winograd23 = true; |
| | } |
| | } |
| |
|
| | int _nT = nT ? nT : opt.num_threads; |
| | if (nT != 0 && opt.num_threads != nT) |
| | { |
| | |
| | |
| | NCNN_LOGE("opt.num_threads %d changed, convolution winograd will use load-time value %d", opt.num_threads, nT); |
| | } |
| |
|
| | if (prefer_winograd23) |
| | { |
| | conv3x3s1_winograd23(bottom_blob_bordered, top_blob, weight_winograd23_data, bias_data, _nT, opt); |
| | } |
| | else if (prefer_winograd43) |
| | { |
| | conv3x3s1_winograd43(bottom_blob_bordered, top_blob, weight_winograd43_data, bias_data, _nT, opt); |
| | } |
| | else if (prefer_winograd63) |
| | { |
| | conv3x3s1_winograd63(bottom_blob_bordered, top_blob, weight_winograd63_data, bias_data, _nT, opt); |
| | } |
| | else |
| | { |
| | |
| | } |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| |
|
| | int l2_cache_size = get_cpu_level2_cache_size(); |
| | bool prefer_sgemm = num_input * num_output * kernel_w * kernel_h * dilation_w * dilation_h * stride_w * stride_h * (int)sizeof(float) * 2 > l2_cache_size || (num_input > 16 || num_output > 16); |
| |
|
| | if ((opt.use_sgemm_convolution && prefer_sgemm) || (kernel_w == 1 && kernel_h == 1)) |
| | { |
| | |
| | Mat bottom_im2col; |
| | if (kernel_w == 1 && kernel_h == 1 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | bottom_im2col = bottom_blob_bordered; |
| | bottom_im2col.w = w * h; |
| | bottom_im2col.h = 1; |
| | } |
| | else if (kernel_w == 1 && kernel_h == 1) |
| | { |
| | const int size = outw * outh; |
| |
|
| | bottom_im2col.create(size, channels, elemsize, elempack, opt.workspace_allocator); |
| | if (bottom_im2col.empty()) |
| | return -100; |
| |
|
| | const int gap = (w * stride_h - outw * stride_w) * elempack; |
| |
|
| | #if __SSE2__ |
| | #if __AVX__ |
| | #if __AVX512F__ |
| | if (elempack == 16) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const float* sptr = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p); |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | __m512 _val = _mm512_load_ps(sptr); |
| | _mm512_store_ps(ptr, _val); |
| |
|
| | sptr += stride_w * 16; |
| | ptr += 16; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 8) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const float* sptr = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p); |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | __m256 _val = _mm256_load_ps(sptr); |
| | _mm256_store_ps(ptr, _val); |
| |
|
| | sptr += stride_w * 8; |
| | ptr += 8; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 4) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const float* sptr = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p); |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | __m128 _val = _mm_load_ps(sptr); |
| | _mm_store_ps(ptr, _val); |
| |
|
| | sptr += stride_w * 4; |
| | ptr += 4; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 1) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const float* sptr = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p); |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | ptr[0] = sptr[0]; |
| |
|
| | sptr += stride_w; |
| | ptr += 1; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | } |
| | else |
| | { |
| | const int size = outw * outh; |
| | const int maxk = kernel_w * kernel_h; |
| |
|
| | bottom_im2col.create(size, maxk * channels, elemsize, elempack, opt.workspace_allocator); |
| | if (bottom_im2col.empty()) |
| | return -100; |
| |
|
| | const int gap = (w * stride_h - outw * stride_w) * elempack; |
| |
|
| | #if __SSE2__ |
| | #if __AVX__ |
| | #if __AVX512F__ |
| | if (elempack == 16) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const Mat img = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p * maxk); |
| |
|
| | for (int u = 0; u < kernel_h; u++) |
| | { |
| | for (int v = 0; v < kernel_w; v++) |
| | { |
| | const float* sptr = img.row(dilation_h * u) + dilation_w * v * 16; |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | __m512 _val = _mm512_load_ps(sptr); |
| | _mm512_store_ps(ptr, _val); |
| |
|
| | sptr += stride_w * 16; |
| | ptr += 16; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 8) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const Mat img = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p * maxk); |
| |
|
| | for (int u = 0; u < kernel_h; u++) |
| | { |
| | for (int v = 0; v < kernel_w; v++) |
| | { |
| | const float* sptr = img.row(dilation_h * u) + dilation_w * v * 8; |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | __m256 _val = _mm256_load_ps(sptr); |
| | _mm256_store_ps(ptr, _val); |
| |
|
| | sptr += stride_w * 8; |
| | ptr += 8; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 4) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const Mat img = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p * maxk); |
| |
|
| | for (int u = 0; u < kernel_h; u++) |
| | { |
| | for (int v = 0; v < kernel_w; v++) |
| | { |
| | const float* sptr = img.row(dilation_h * u) + dilation_w * v * 4; |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | __m128 _val = _mm_load_ps(sptr); |
| | _mm_store_ps(ptr, _val); |
| |
|
| | sptr += stride_w * 4; |
| | ptr += 4; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 1) |
| | { |
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int p = 0; p < channels; p++) |
| | { |
| | const Mat img = bottom_blob_bordered.channel(p); |
| | float* ptr = bottom_im2col.row(p * maxk); |
| |
|
| | for (int u = 0; u < kernel_h; u++) |
| | { |
| | for (int v = 0; v < kernel_w; v++) |
| | { |
| | const float* sptr = img.row(dilation_h * u) + dilation_w * v; |
| |
|
| | for (int i = 0; i < outh; i++) |
| | { |
| | for (int j = 0; j < outw; j++) |
| | { |
| | ptr[0] = sptr[0]; |
| |
|
| | sptr += stride_w; |
| | ptr += 1; |
| | } |
| |
|
| | sptr += gap; |
| | } |
| | } |
| | } |
| | } |
| | } |
| | } |
| |
|
| | |
| | { |
| | top_blob.w = outw * outh; |
| | top_blob.h = 1; |
| | } |
| | Option opt_b = opt; |
| | opt_b.blob_allocator = top_blob.allocator; |
| | gemm->forward(bottom_im2col, top_blob, opt_b); |
| | { |
| | top_blob.w = outw; |
| | top_blob.h = outh; |
| | } |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | } |
| | else |
| | { |
| | #if __SSE2__ |
| | #if __AVX__ |
| | #if __AVX512F__ |
| | if (elempack == 16 && out_elempack == 1) |
| | { |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | conv3x3s1_pack16to1_avx512(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 8 && out_elempack == 8) |
| | { |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | conv3x3s1_pack8_avx(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | if (kernel_w == 2 && kernel_h == 2 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | conv2x2s1_pack8_avx(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | } |
| |
|
| | if (elempack == 1 && out_elempack == 8) |
| | { |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | conv3x3s1_pack1to8_avx(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 2 && stride_h == 2) |
| | { |
| | conv3x3s2_pack1to8_avx(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | } |
| |
|
| | if (elempack == 8 && out_elempack == 1) |
| | { |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | conv3x3s1_pack8to1_avx(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | } |
| | #endif |
| |
|
| | if (elempack == 1 && out_elempack == 4) |
| | { |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | conv3x3s1_pack1to4_sse(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | if (kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 2 && stride_h == 2) |
| | { |
| | conv3x3s2_pack1to4_sse(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | return 0; |
| | } |
| | } |
| | #endif |
| |
|
| | convolution_packed(bottom_blob_bordered, top_blob, weight_data_tm, bias_data, kernel_w, kernel_h, dilation_w, dilation_h, stride_w, stride_h, activation_type, activation_params, opt); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int Convolution_x86_avx::forward(const std::vector<Mat>& bottom_blobs, std::vector<Mat>& top_blobs, const Option& opt) const |
| | { |
| | const Mat& bottom_blob = bottom_blobs[0]; |
| | const Mat& _weight_data = bottom_blobs[1]; |
| | Mat& top_blob = top_blobs[0]; |
| |
|
| | const int _kernel_w = _weight_data.w; |
| | const int _kernel_h = _weight_data.h; |
| | const int _num_output = _weight_data.c * _weight_data.elempack; |
| |
|
| | Mat weight_data_flattened; |
| | flatten(_weight_data, weight_data_flattened, opt); |
| | if (weight_data_flattened.empty()) |
| | return -100; |
| |
|
| | |
| | weight_data_flattened.w *= weight_data_flattened.elempack; |
| | weight_data_flattened.elemsize /= weight_data_flattened.elempack; |
| | weight_data_flattened.elempack = 1; |
| |
|
| | Mat bias_data_flattened; |
| | if (bias_term) |
| | { |
| | const Mat& _bias_data = bottom_blobs[2]; |
| | flatten(_bias_data, bias_data_flattened, opt); |
| | if (bias_data_flattened.empty()) |
| | return -100; |
| |
|
| | |
| | bias_data_flattened.w *= bias_data_flattened.elempack; |
| | bias_data_flattened.elemsize /= bias_data_flattened.elempack; |
| | bias_data_flattened.elempack = 1; |
| | } |
| |
|
| | ncnn::Layer* op = ncnn::create_layer(ncnn::LayerType::Convolution); |
| |
|
| | ncnn::ParamDict pd; |
| | pd.set(0, _num_output); |
| | pd.set(1, _kernel_w); |
| | pd.set(11, _kernel_h); |
| | pd.set(2, dilation_w); |
| | pd.set(21, dilation_h); |
| | pd.set(3, stride_w); |
| | pd.set(31, stride_h); |
| | pd.set(4, pad_left); |
| | pd.set(15, pad_right); |
| | pd.set(14, pad_top); |
| | pd.set(16, pad_bottom); |
| | pd.set(18, pad_value); |
| | pd.set(5, bias_term); |
| | pd.set(6, weight_data_flattened.w); |
| | pd.set(8, int8_scale_term); |
| | pd.set(9, activation_type); |
| | pd.set(10, activation_params); |
| |
|
| | op->load_param(pd); |
| |
|
| | ncnn::Mat weights[2]; |
| | weights[0] = weight_data_flattened; |
| | weights[1] = bias_data_flattened; |
| |
|
| | op->load_model(ncnn::ModelBinFromMatArray(weights)); |
| |
|
| | op->create_pipeline(opt); |
| |
|
| | op->forward(bottom_blob, top_blob, opt); |
| |
|
| | op->destroy_pipeline(opt); |
| |
|
| | delete op; |
| |
|
| | return 0; |
| | } |
| |
|
| | #if NCNN_INT8 |
| | int Convolution_x86_avx::create_pipeline_int8_x86(const Option& opt) |
| | { |
| | const int maxk = kernel_w * kernel_h; |
| | const int num_input = weight_data_size / maxk / num_output; |
| |
|
| | int elempack = 1; |
| | int out_elempack_int32 = 1; |
| | #if __SSE2__ |
| | if (opt.use_packing_layout) |
| | { |
| | elempack = num_input % 8 == 0 ? 8 : 1; |
| | out_elempack_int32 = num_output % 4 == 0 ? 4 : 1; |
| | } |
| | #endif |
| |
|
| | if (elempack == 8 && out_elempack_int32 == 4 && opt.use_winograd_convolution && opt.use_winograd43_convolution && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | #if __SSE2__ |
| | conv3x3s1_winograd43_transform_kernel_pack8to4_int8_sse(weight_data, weight_winograd43_data, num_input, num_output, opt); |
| | #endif |
| | } |
| | else if (elempack == 8 && out_elempack_int32 == 1 && opt.use_winograd_convolution && opt.use_winograd43_convolution && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | #if __SSE2__ |
| | conv3x3s1_winograd43_transform_kernel_pack8to1_int8_sse(weight_data, weight_winograd43_data, num_input, num_output, opt); |
| | #endif |
| | } |
| | else if (elempack == 1 && out_elempack_int32 == 1 && opt.use_winograd_convolution && opt.use_winograd23_convolution && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1 && num_input >= 16 && num_output >= 16) |
| | { |
| | conv3x3s1_winograd23_transform_kernel_int8_sse(weight_data, weight_winograd23_data, num_input, num_output, opt); |
| | |
| | } |
| | else if (opt.use_sgemm_convolution) |
| | { |
| | convolution_im2col_gemm_transform_kernel_int8(weight_data, weight_sgemm_data, num_input, num_output, kernel_w, kernel_h, opt); |
| | } |
| | else |
| | { |
| | convolution_transform_kernel_packed_int8(weight_data, weight_data_tm, num_input, num_output, kernel_w, kernel_h); |
| | } |
| |
|
| | scale_in_data.create(num_output); |
| | for (int p = 0; p < num_output; p++) |
| | { |
| | |
| | float scale_in; |
| | if (weight_data_int8_scales[p] == 0) |
| | scale_in = 0; |
| | else |
| | scale_in = 1.f / (bottom_blob_int8_scales[0] * weight_data_int8_scales[p]); |
| |
|
| | scale_in_data[p] = scale_in; |
| | } |
| |
|
| | if (opt.lightmode) |
| | { |
| | weight_data.release(); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | int Convolution_x86_avx::forward_int8_x86(const Mat& bottom_blob, Mat& top_blob, const Option& opt) const |
| | { |
| | int elembits = bottom_blob.elembits(); |
| |
|
| | Mat bottom_blob_int8 = bottom_blob; |
| | if (elembits != 8) |
| | { |
| | Option opt_q = opt; |
| | opt_q.blob_allocator = opt.workspace_allocator; |
| | quantize_to_int8(bottom_blob, bottom_blob_int8, bottom_blob_int8_scales, opt_q); |
| | } |
| |
|
| | |
| |
|
| | Mat bottom_blob_bordered; |
| | make_padding(bottom_blob_int8, bottom_blob_bordered, opt); |
| | if (bottom_blob_bordered.empty()) |
| | return -100; |
| |
|
| | int w = bottom_blob_bordered.w; |
| | int h = bottom_blob_bordered.h; |
| | int channels = bottom_blob_bordered.c; |
| | int elempack = bottom_blob_bordered.elempack; |
| |
|
| | const int kernel_extent_w = dilation_w * (kernel_w - 1) + 1; |
| | const int kernel_extent_h = dilation_h * (kernel_h - 1) + 1; |
| |
|
| | int outw = (w - kernel_extent_w) / stride_w + 1; |
| | int outh = (h - kernel_extent_h) / stride_h + 1; |
| |
|
| | bool use_int8_requantize = int8_scale_term > 100; |
| | int out_elempack = 1; |
| | #if __SSE2__ |
| | if (opt.use_packing_layout) |
| | { |
| | if (use_int8_requantize) |
| | out_elempack = num_output % 8 == 0 ? 8 : 1; |
| | else |
| | out_elempack = num_output % 4 == 0 ? 4 : 1; |
| | } |
| | #endif |
| | size_t out_elemsize = use_int8_requantize ? 1u * out_elempack : 4u * out_elempack; |
| |
|
| | |
| |
|
| | top_blob.create(outw, outh, num_output / out_elempack, out_elemsize, out_elempack, opt.blob_allocator); |
| | if (top_blob.empty()) |
| | return -100; |
| |
|
| | const int num_input = channels * elempack; |
| |
|
| | int out_elempack_int32 = 1; |
| | #if __SSE2__ |
| | if (opt.use_packing_layout) |
| | { |
| | out_elempack_int32 = num_output % 4 == 0 ? 4 : 1; |
| | } |
| | #endif |
| |
|
| | Mat top_blob_int32; |
| | top_blob_int32.create(outw, outh, num_output / out_elempack_int32, (size_t)(4u * out_elempack_int32), out_elempack_int32, opt.workspace_allocator); |
| | if (top_blob_int32.empty()) |
| | return -100; |
| |
|
| | int _nT = nT ? nT : opt.num_threads; |
| | if (nT != 0 && opt.num_threads != nT) |
| | { |
| | |
| | |
| | NCNN_LOGE("opt.num_threads %d changed, convolution gemm will use load-time value %d", opt.num_threads, nT); |
| | } |
| |
|
| | if (elempack == 8 && out_elempack_int32 == 4 && opt.use_winograd_convolution && opt.use_winograd43_convolution && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | #if __SSE2__ |
| | conv3x3s1_winograd43_pack8to4_int8_sse(bottom_blob_bordered, top_blob_int32, weight_winograd43_data, opt); |
| | #endif |
| | } |
| | else if (elempack == 8 && out_elempack_int32 == 1 && opt.use_winograd_convolution && opt.use_winograd43_convolution && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1) |
| | { |
| | #if __SSE2__ |
| | conv3x3s1_winograd43_pack8to1_int8_sse(bottom_blob_bordered, top_blob_int32, weight_winograd43_data, opt); |
| | #endif |
| | } |
| | else if (elempack == 1 && out_elempack_int32 == 1 && opt.use_winograd_convolution && opt.use_winograd23_convolution && kernel_w == 3 && kernel_h == 3 && dilation_w == 1 && dilation_h == 1 && stride_w == 1 && stride_h == 1 && num_input >= 16 && num_output >= 16) |
| | { |
| | conv3x3s1_winograd23_int8_sse(bottom_blob_bordered, top_blob_int32, weight_winograd23_data, opt); |
| | |
| | } |
| | else if (opt.use_sgemm_convolution) |
| | { |
| | convolution_im2col_gemm_int8(bottom_blob_bordered, top_blob_int32, weight_sgemm_data, kernel_w, kernel_h, dilation_w, dilation_h, stride_w, stride_h, _nT, opt); |
| | } |
| | else |
| | { |
| | convolution_packed_int8(bottom_blob_bordered, top_blob_int32, weight_data_tm, kernel_w, kernel_h, dilation_w, dilation_h, stride_w, stride_h, opt); |
| | } |
| |
|
| | if (use_int8_requantize) |
| | { |
| | requantize_from_int32_to_int8(top_blob_int32, top_blob, scale_in_data, top_blob_int8_scales, bias_data, activation_type, activation_params, opt); |
| | } |
| | else |
| | { |
| | dequantize_from_int32(top_blob_int32, top_blob, scale_in_data, bias_data, opt); |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| | } |
| |
|
| | return 0; |
| | } |
| | #endif |
| |
|
| | int Convolution_x86_avx::forwardDilation_x86(const Mat& bottom_blob, Mat& top_blob, const Option& opt) const |
| | { |
| | int w = bottom_blob.w; |
| | int h = bottom_blob.h; |
| | size_t elemsize = bottom_blob.elemsize; |
| |
|
| | const int kernel_size = kernel_w; |
| | const int stride = stride_w; |
| | const int dilation = dilation_w; |
| | const int kernel_extent = dilation * (kernel_size - 1) + 1; |
| |
|
| | int outw = (w - kernel_extent) / stride + 1; |
| | int outh = (h - kernel_extent) / stride + 1; |
| |
|
| | top_blob.create(outw, outh, num_output, elemsize, opt.blob_allocator); |
| | if (top_blob.empty()) |
| | return -100; |
| |
|
| | |
| | Mat inner_bottom_blob; |
| | Mat inner_top_blob; |
| | for (int x = 0; x < dilation; x++) |
| | { |
| | for (int y = 0; y < dilation; y++) |
| | { |
| | int inner_w = (w - y + dilation - 1) / dilation; |
| | int inner_h = (h - x + dilation - 1) / dilation; |
| |
|
| | int inner_outw = (inner_w - kernel_size) / stride + 1; |
| | int inner_outh = (inner_h - kernel_size) / stride + 1; |
| |
|
| | inner_bottom_blob.create(inner_w, inner_h, bottom_blob.c, elemsize, opt.workspace_allocator); |
| | if (inner_bottom_blob.empty()) |
| | return -100; |
| |
|
| | inner_top_blob.create(inner_outw, inner_outh, num_output, elemsize, opt.workspace_allocator); |
| | if (inner_top_blob.empty()) |
| | return -100; |
| |
|
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int c = 0; c < bottom_blob.c; c++) |
| | { |
| | float* outptr = inner_bottom_blob.channel(c); |
| |
|
| | for (int i = 0; i < inner_h; i++) |
| | { |
| | const float* ptr = (const float*)bottom_blob.channel(c) + dilation * i * w + x * w + y; |
| | for (int j = 0; j < inner_w; j++) |
| | { |
| | outptr[j] = ptr[j * dilation]; |
| | } |
| | outptr += inner_w; |
| | } |
| | } |
| |
|
| | Option opt_g = opt; |
| | opt_g.blob_allocator = inner_top_blob.allocator; |
| | convolution_dilation1->forward(inner_bottom_blob, inner_top_blob, opt_g); |
| |
|
| | #pragma omp parallel for num_threads(opt.num_threads) |
| | for (int c = 0; c < num_output; c++) |
| | { |
| | float* outptr = (float*)top_blob.channel(c) + x * outw + y; |
| | for (int i = 0; i < inner_outh; i++) |
| | { |
| | const float* ptr = (const float*)inner_top_blob.channel(c) + i * inner_outw; |
| | for (int j = 0; j < inner_outw; j++) |
| | { |
| | outptr[j * dilation] = ptr[j]; |
| | } |
| | outptr += dilation * outw; |
| | } |
| | } |
| | } |
| | } |
| |
|
| | if (activation) |
| | { |
| | activation->forward_inplace(top_blob, opt); |
| | } |
| |
|
| | return 0; |
| | } |
| |
|
| | } |
| |
|