| |
| #include "../../../../classifier/ei_classifier_config.h" |
| #if 0 == 1 |
| |
| #elif EI_CLASSIFIER_TFLITE_ENABLE_CMSIS_NN == 1 |
| |
| |
| |
| |
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|
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/add.h" |
|
|
| #include "edge-impulse-sdk/CMSIS/NN/Include/arm_nnfunctions.h" |
| #include "edge-impulse-sdk/tensorflow/lite/c/builtin_op_data.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/quantization_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/integer_ops/add.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/process_broadcast_shapes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/tensor_ctypes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/op_macros.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/memory_helpers.h" |
|
|
| namespace tflite { |
| namespace ops { |
| namespace micro { |
| namespace add { |
|
|
| constexpr int kInputTensor1 = 0; |
| constexpr int kInputTensor2 = 1; |
| constexpr int kOutputTensor = 0; |
|
|
| struct OpData { |
| bool requires_broadcast; |
|
|
| |
| |
| int input1_shift; |
| int input2_shift; |
| int32_t output_activation_min; |
| int32_t output_activation_max; |
|
|
| |
| int32_t input1_multiplier; |
| int32_t input2_multiplier; |
| int32_t output_multiplier; |
| int output_shift; |
| int left_shift; |
| int32_t input1_offset; |
| int32_t input2_offset; |
| int32_t output_offset; |
|
|
| |
| float output_activation_min_f32; |
| float output_activation_max_f32; |
| }; |
|
|
| TfLiteStatus CalculateOpData(TfLiteContext* context, TfLiteAddParams* params, |
| const TfLiteTensor* input1, |
| const TfLiteTensor* input2, TfLiteTensor* output, |
| OpData* data) { |
| data->requires_broadcast = !HaveSameShapes(input1, input2); |
|
|
| if (output->type == kTfLiteUInt8 || output->type == kTfLiteInt8) { |
| |
| data->input1_offset = -input1->params.zero_point; |
| data->input2_offset = -input2->params.zero_point; |
| data->output_offset = output->params.zero_point; |
| data->left_shift = 20; |
| const double twice_max_input_scale = |
| 2 * static_cast<double>( |
| std::max(input1->params.scale, input2->params.scale)); |
| const double real_input1_multiplier = |
| static_cast<double>(input1->params.scale) / twice_max_input_scale; |
| const double real_input2_multiplier = |
| static_cast<double>(input2->params.scale) / twice_max_input_scale; |
| const double real_output_multiplier = |
| twice_max_input_scale / |
| ((1 << data->left_shift) * static_cast<double>(output->params.scale)); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input1_multiplier, &data->input1_multiplier, &data->input1_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input2_multiplier, &data->input2_multiplier, &data->input2_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_output_multiplier, &data->output_multiplier, &data->output_shift); |
|
|
| TF_LITE_ENSURE_STATUS(CalculateActivationRangeQuantized( |
| context, params->activation, output, &data->output_activation_min, |
| &data->output_activation_max)); |
| } else if (output->type == kTfLiteFloat32) { |
| CalculateActivationRange(params->activation, |
| &data->output_activation_min_f32, |
| &data->output_activation_max_f32); |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| void EvalAdd(TfLiteContext* context, TfLiteNode* node, TfLiteAddParams* params, |
| const OpData* data, const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, TfLiteEvalTensor* output) { |
| tflite::ArithmeticParams op_params; |
| SetActivationParams(data->output_activation_min_f32, |
| data->output_activation_max_f32, &op_params); |
| #define TF_LITE_ADD(opname) \ |
| reference_ops::opname(op_params, tflite::micro::GetTensorShape(input1), \ |
| tflite::micro::GetTensorData<float>(input1), \ |
| tflite::micro::GetTensorShape(input2), \ |
| tflite::micro::GetTensorData<float>(input2), \ |
| tflite::micro::GetTensorShape(output), \ |
| tflite::micro::GetTensorData<float>(output)) |
| if (data->requires_broadcast) { |
| TF_LITE_ADD(BroadcastAdd4DSlow); |
| } else { |
| TF_LITE_ADD(Add); |
| } |
| #undef TF_LITE_ADD |
| } |
|
|
| TfLiteStatus EvalAddQuantized(TfLiteContext* context, TfLiteNode* node, |
| TfLiteAddParams* params, const OpData* data, |
| const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, |
| TfLiteEvalTensor* output) { |
| if (output->type == kTfLiteUInt8 || output->type == kTfLiteInt8) { |
| tflite::ArithmeticParams op_params; |
| op_params.left_shift = data->left_shift; |
| op_params.input1_offset = data->input1_offset; |
| op_params.input1_multiplier = data->input1_multiplier; |
| op_params.input1_shift = data->input1_shift; |
| op_params.input2_offset = data->input2_offset; |
| op_params.input2_multiplier = data->input2_multiplier; |
| op_params.input2_shift = data->input2_shift; |
| op_params.output_offset = data->output_offset; |
| op_params.output_multiplier = data->output_multiplier; |
| op_params.output_shift = data->output_shift; |
| SetActivationParams(data->output_activation_min, |
| data->output_activation_max, &op_params); |
| bool need_broadcast = reference_ops::ProcessBroadcastShapes( |
| tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorShape(input2), &op_params); |
| #define TF_LITE_ADD(type, opname, dtype) \ |
| type::opname(op_params, tflite::micro::GetTensorShape(input1), \ |
| tflite::micro::GetTensorData<dtype>(input1), \ |
| tflite::micro::GetTensorShape(input2), \ |
| tflite::micro::GetTensorData<dtype>(input2), \ |
| tflite::micro::GetTensorShape(output), \ |
| tflite::micro::GetTensorData<dtype>(output)); |
| if (output->type == kTfLiteInt8) { |
| if (need_broadcast) { |
| TF_LITE_ADD(reference_integer_ops, BroadcastAdd4DSlow, int8_t); |
| } else { |
| arm_elementwise_add_s8( |
| tflite::micro::GetTensorData<int8_t>(input1), |
| tflite::micro::GetTensorData<int8_t>(input2), |
| op_params.input1_offset, op_params.input1_multiplier, |
| op_params.input1_shift, op_params.input2_offset, |
| op_params.input2_multiplier, op_params.input2_shift, |
| op_params.left_shift, tflite::micro::GetTensorData<int8_t>(output), |
| op_params.output_offset, op_params.output_multiplier, |
| op_params.output_shift, op_params.quantized_activation_min, |
| op_params.quantized_activation_max, |
| MatchingElementsSize(tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorShape(output))); |
| } |
| } else { |
| if (need_broadcast) { |
| TF_LITE_ADD(reference_ops, BroadcastAdd4DSlow, uint8_t); |
| } else { |
| TF_LITE_ADD(reference_ops, Add, uint8_t); |
| } |
| } |
| #undef TF_LITE_ADD |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| void* Init(TfLiteContext* context, const char* buffer, size_t length) { |
| TFLITE_DCHECK(context->AllocatePersistentBuffer != nullptr); |
| return context->AllocatePersistentBuffer(context, sizeof(OpData)); |
| } |
|
|
| TfLiteStatus Prepare(TfLiteContext* context, TfLiteNode* node) { |
| TFLITE_DCHECK(node->user_data != nullptr); |
| TFLITE_DCHECK(node->builtin_data != nullptr); |
|
|
| const TfLiteTensor* input1 = GetInput(context, node, kInputTensor1); |
| TF_LITE_ENSURE(context, input1 != nullptr); |
| const TfLiteTensor* input2 = GetInput(context, node, kInputTensor2); |
| TF_LITE_ENSURE(context, input2 != nullptr); |
| TfLiteTensor* output = GetOutput(context, node, kOutputTensor); |
| TF_LITE_ENSURE(context, output != nullptr); |
|
|
| OpData* data = static_cast<OpData*>(node->user_data); |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TF_LITE_ENSURE_STATUS( |
| CalculateOpData(context, params, input1, input2, output, data)); |
|
|
| return kTfLiteOk; |
| } |
|
|
| TfLiteStatus Eval(TfLiteContext* context, TfLiteNode* node) { |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| const TfLiteEvalTensor* input1 = |
| tflite::micro::GetEvalInput(context, node, kInputTensor1); |
| const TfLiteEvalTensor* input2 = |
| tflite::micro::GetEvalInput(context, node, kInputTensor2); |
| TfLiteEvalTensor* output = |
| tflite::micro::GetEvalOutput(context, node, kOutputTensor); |
|
|
| TFLITE_DCHECK(node->user_data != nullptr); |
| const OpData* data = static_cast<const OpData*>(node->user_data); |
|
|
| if (output->type == kTfLiteFloat32) { |
| EvalAdd(context, node, params, data, input1, input2, output); |
| } else if (output->type == kTfLiteUInt8 || output->type == kTfLiteInt8) { |
| TF_LITE_ENSURE_OK(context, EvalAddQuantized(context, node, params, data, |
| input1, input2, output)); |
| } else { |
| TF_LITE_KERNEL_LOG(context, "Type %s (%d) not supported.", |
| TfLiteTypeGetName(output->type), output->type); |
| return kTfLiteError; |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| } |
|
|
| TfLiteRegistration Register_ADD() { |
| return {add::Init, |
| nullptr, |
| add::Prepare, |
| add::Eval, |
| nullptr, |
| 0, |
| nullptr, |
| 0}; |
| } |
|
|
| } |
| } |
| } |
|
|
| #elif EI_CLASSIFIER_TFLITE_ENABLE_SILABS_MVP == 1 |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/add.h" |
|
|
| #include "edge-impulse-sdk/tensorflow/lite/c/builtin_op_data.h" |
| #include "edge-impulse-sdk/tensorflow/lite/c/common.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/quantization_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/integer_ops/add.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/process_broadcast_shapes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/tensor_ctypes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/op_macros.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/kernels/kernel_util.h" |
| #include "sl_mvp_ml_add.h" |
|
|
| namespace tflite { |
| namespace sl { |
| namespace add { |
|
|
| constexpr int kInputTensor1 = 0; |
| constexpr int kInputTensor2 = 1; |
| constexpr int kOutputTensor = 0; |
|
|
| struct OpData { |
| bool requires_broadcast; |
|
|
| int input1_shift; |
| int input2_shift; |
| int32_t input1_multiplier; |
| int32_t input2_multiplier; |
| int32_t output_multiplier; |
| int output_shift; |
| int left_shift; |
|
|
| sli_mvp_ml_add_s8_params_t params; |
|
|
| |
| float output_activation_min_f32; |
| float output_activation_max_f32; |
| }; |
|
|
| TfLiteStatus CalculateOpData(TfLiteContext* context, TfLiteAddParams* params, |
| const TfLiteTensor* input1, |
| const TfLiteTensor* input2, TfLiteTensor* output, |
| OpData* data) { |
| data->requires_broadcast = !HaveSameShapes(input1, input2); |
|
|
| if (output->type == kTfLiteInt8) { |
| data->params.input1_offset = -input1->params.zero_point; |
| data->params.input2_offset = -input2->params.zero_point; |
| data->params.output_offset = output->params.zero_point; |
| data->params.input1_multiplier = input1->params.scale; |
| data->params.input2_multiplier = input2->params.scale; |
| data->params.output_multiplier = 1.0 / output->params.scale; |
| data->params.length = GetTensorShape(input1).FlatSize(); |
|
|
| int32_t activation_min; |
| int32_t activation_max; |
| TF_LITE_ENSURE_STATUS(CalculateActivationRangeQuantized( |
| context, params->activation, output, &activation_min, |
| &activation_max)); |
| data->params.activation_min = static_cast<int8_t>(activation_min); |
| data->params.activation_max = static_cast<int8_t>(activation_max); |
|
|
| |
| |
| data->left_shift = 20; |
| const double twice_max_input_scale = |
| 2 * static_cast<double>( |
| std::max(input1->params.scale, input2->params.scale)); |
| const double real_input1_multiplier = |
| static_cast<double>(input1->params.scale) / twice_max_input_scale; |
| const double real_input2_multiplier = |
| static_cast<double>(input2->params.scale) / twice_max_input_scale; |
| const double real_output_multiplier = |
| twice_max_input_scale / |
| ((1 << data->left_shift) * static_cast<double>(output->params.scale)); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input1_multiplier, &data->input1_multiplier, &data->input1_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input2_multiplier, &data->input2_multiplier, &data->input2_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_output_multiplier, &data->output_multiplier, &data->output_shift); |
|
|
| } else if (output->type == kTfLiteFloat32) { |
| CalculateActivationRange(params->activation, |
| &data->output_activation_min_f32, |
| &data->output_activation_max_f32); |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| void EvalAdd(TfLiteContext* context, TfLiteNode* node, TfLiteAddParams* params, |
| const OpData* data, const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, TfLiteEvalTensor* output) { |
| tflite::ArithmeticParams op_params; |
| SetActivationParams(data->output_activation_min_f32, |
| data->output_activation_max_f32, &op_params); |
| if (data->requires_broadcast) { |
| reference_ops::BroadcastAdd4DSlow(op_params, tflite::micro::GetTensorShape(input1), tflite::micro::GetTensorData<float>(input1), |
| tflite::micro::GetTensorShape(input2), tflite::micro::GetTensorData<float>(input2), |
| tflite::micro::GetTensorShape(output), tflite::micro::GetTensorData<float>(output)); |
| } else { |
| reference_ops::Add(op_params, |
| tflite::micro::GetTensorShape(input1), tflite::micro::GetTensorData<float>(input1), |
| tflite::micro::GetTensorShape(input2), tflite::micro::GetTensorData<float>(input2), |
| tflite::micro::GetTensorShape(output), tflite::micro::GetTensorData<float>(output)); |
| } |
| } |
|
|
| TfLiteStatus EvalAddQuantized(TfLiteContext* context, TfLiteNode* node, |
| TfLiteAddParams* params, const OpData* data, |
| const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, |
| TfLiteEvalTensor* output) { |
| TfLiteStatus status = kTfLiteOk; |
| tflite::ArithmeticParams op_params; |
| op_params.left_shift = data->left_shift; |
| op_params.input1_offset = data->params.input1_offset; |
| op_params.input1_multiplier = data->input1_multiplier; |
| op_params.input1_shift = data->input1_shift; |
| op_params.input2_offset = data->params.input2_offset; |
| op_params.input2_multiplier = data->input2_multiplier; |
| op_params.input2_shift = data->input2_shift; |
| op_params.output_offset = data->params.output_offset; |
| op_params.output_multiplier = data->output_multiplier; |
| op_params.output_shift = data->output_shift; |
| op_params.quantized_activation_min = data->params.activation_min; |
| op_params.quantized_activation_max = data->params.activation_max; |
|
|
| |
| bool need_broadcast = reference_ops::ProcessBroadcastShapes(tflite::micro::GetTensorShape(input1), tflite::micro::GetTensorShape(input2), &op_params); |
|
|
| if (need_broadcast) { |
| reference_integer_ops::BroadcastAdd4DSlow(op_params, |
| tflite::micro::GetTensorShape(input1), tflite::micro::GetTensorData<int8_t>(input1), |
| tflite::micro::GetTensorShape(input2), tflite::micro::GetTensorData<int8_t>(input2), |
| tflite::micro::GetTensorShape(output), tflite::micro::GetTensorData<int8_t>(output)); |
| } else { |
| sli_mvp_ml_add_s8_params_t params = data->params; |
| params.input1 = tflite::micro::GetTensorData<int8_t>(input1); |
| params.input2 = tflite::micro::GetTensorData<int8_t>(input2); |
| params.output = tflite::micro::GetTensorData<int8_t>(output); |
| sl_status_t ret = sli_mvp_ml_add_s8(¶ms); |
| if (ret != SL_STATUS_OK) { |
| status = kTfLiteError; |
| } |
| } |
|
|
| return status; |
| } |
|
|
| void* Init(TfLiteContext* context, const char* buffer, size_t length) { |
| TFLITE_DCHECK(context->AllocatePersistentBuffer != nullptr); |
| return context->AllocatePersistentBuffer(context, sizeof(OpData)); |
| } |
|
|
| TfLiteStatus Prepare(TfLiteContext* context, TfLiteNode* node) { |
| TFLITE_DCHECK(node->user_data != nullptr); |
| TFLITE_DCHECK(node->builtin_data != nullptr); |
|
|
| const TfLiteTensor* input1 = GetInput(context, node, kInputTensor1); |
| TF_LITE_ENSURE(context, input1 != nullptr); |
| const TfLiteTensor* input2 = GetInput(context, node, kInputTensor2); |
| TF_LITE_ENSURE(context, input2 != nullptr); |
| TfLiteTensor* output = GetOutput(context, node, kOutputTensor); |
| TF_LITE_ENSURE(context, output != nullptr); |
|
|
| OpData* data = static_cast<OpData*>(node->user_data); |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TF_LITE_ENSURE_STATUS( |
| CalculateOpData(context, params, input1, input2, output, data)); |
|
|
| return kTfLiteOk; |
| } |
|
|
| TfLiteStatus Eval(TfLiteContext* context, TfLiteNode* node) { |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TFLITE_DCHECK(node->user_data != nullptr); |
| const OpData* data = static_cast<const OpData*>(node->user_data); |
|
|
| const TfLiteEvalTensor* input1 = tflite::micro::GetEvalInput(context, node, kInputTensor1); |
| const TfLiteEvalTensor* input2 = tflite::micro::GetEvalInput(context, node, kInputTensor2); |
| TfLiteEvalTensor* output = tflite::micro::GetEvalOutput(context, node, kOutputTensor); |
|
|
| if (output->type == kTfLiteFloat32) { |
| EvalAdd(context, node, params, data, input1, input2, output); |
| } else if (output->type == kTfLiteInt8) { |
| TF_LITE_ENSURE_OK(context, EvalAddQuantized(context, node, params, data, |
| input1, input2, output)); |
| } else { |
| TF_LITE_KERNEL_LOG(context, "Type %s (%d) not supported.", |
| TfLiteTypeGetName(output->type), output->type); |
| return kTfLiteError; |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| } |
| } |
|
|
| namespace ops { |
| namespace micro { |
| TfLiteRegistration Register_ADD() { |
| return {sl::add::Init, |
| nullptr, |
| sl::add::Prepare, |
| sl::add::Eval, |
| nullptr, |
| 0, |
| nullptr, |
| 0}; |
| } |
|
|
| } |
| } |
| } |
|
|
| #elif EI_CLASSIFIER_TFLITE_ENABLE_ESP_NN == 1 |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| #include "edge-impulse-sdk/tensorflow/lite/c/builtin_op_data.h" |
| #include "edge-impulse-sdk/tensorflow/lite/c/common.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/quantization_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/add.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/integer_ops/add.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/process_broadcast_shapes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/tensor_ctypes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/op_macros.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/memory_helpers.h" |
|
|
| #include <esp_timer.h> |
| #include "edge-impulse-sdk/porting/espressif/ESP-NN/include/esp_nn.h" |
|
|
| long long add_total_time = 0; |
|
|
| namespace tflite { |
| namespace ops { |
| namespace micro { |
| namespace add { |
|
|
| constexpr int kInputTensor1 = 0; |
| constexpr int kInputTensor2 = 1; |
| constexpr int kOutputTensor = 0; |
|
|
| struct OpData { |
| bool requires_broadcast; |
|
|
| |
| |
| int input1_shift; |
| int input2_shift; |
| int32_t output_activation_min; |
| int32_t output_activation_max; |
|
|
| |
| int32_t input1_multiplier; |
| int32_t input2_multiplier; |
| int32_t output_multiplier; |
| int output_shift; |
| int left_shift; |
| int32_t input1_offset; |
| int32_t input2_offset; |
| int32_t output_offset; |
|
|
| |
| float output_activation_min_f32; |
| float output_activation_max_f32; |
| }; |
|
|
| void EvalAdd(TfLiteContext* context, TfLiteNode* node, TfLiteAddParams* params, |
| const OpData* data, const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, TfLiteEvalTensor* output) { |
| tflite::ArithmeticParams op_params; |
| SetActivationParams(data->output_activation_min_f32, |
| data->output_activation_max_f32, &op_params); |
| if (data->requires_broadcast) { |
| reference_ops::BroadcastAdd4DSlow( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<float>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<float>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<float>(output)); |
| } else { |
| reference_ops::Add(op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<float>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<float>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<float>(output)); |
| } |
| } |
|
|
| TfLiteStatus EvalAddQuantized(TfLiteContext* context, TfLiteNode* node, |
| TfLiteAddParams* params, const OpData* data, |
| const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, |
| TfLiteEvalTensor* output) { |
| tflite::ArithmeticParams op_params; |
| op_params.left_shift = data->left_shift; |
| op_params.input1_offset = data->input1_offset; |
| op_params.input1_multiplier = data->input1_multiplier; |
| op_params.input1_shift = data->input1_shift; |
| op_params.input2_offset = data->input2_offset; |
| op_params.input2_multiplier = data->input2_multiplier; |
| op_params.input2_shift = data->input2_shift; |
| op_params.output_offset = data->output_offset; |
| op_params.output_multiplier = data->output_multiplier; |
| op_params.output_shift = data->output_shift; |
| SetActivationParams(data->output_activation_min, data->output_activation_max, |
| &op_params); |
| bool need_broadcast = reference_ops::ProcessBroadcastShapes( |
| tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorShape(input2), &op_params); |
|
|
| switch (output->type) { |
| case kTfLiteInt8: { |
| if (need_broadcast) { |
| reference_integer_ops::BroadcastAdd4DSlow( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<int8_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<int8_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<int8_t>(output)); |
| } else { |
| const int8_t *input1_data = tflite::micro::GetTensorData<int8_t>(input1); |
| const int8_t *input2_data = tflite::micro::GetTensorData<int8_t>(input2); |
| int8_t *out_data = tflite::micro::GetTensorData<int8_t>(output); |
|
|
| esp_nn_add_elementwise_s8(input1_data, |
| input2_data, |
| data->input1_offset, |
| data->input2_offset, |
| data->input1_multiplier, |
| data->input2_multiplier, |
| data->input1_shift, |
| data->input2_shift, |
| data->left_shift, |
| out_data, |
| data->output_offset, |
| data->output_multiplier, |
| data->output_shift, |
| data->output_activation_min, |
| data->output_activation_max, |
| MatchingElementsSize(tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorShape(output)) |
| ); |
| } |
| break; |
| } |
| case kTfLiteInt16: { |
| if (need_broadcast) { |
| reference_ops::BroadcastAdd4DSlow( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<int16_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<int16_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<int16_t>(output)); |
| } else { |
| reference_ops::Add(op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<int16_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<int16_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<int16_t>(output), |
| false); |
| } |
| break; |
| } |
| default: |
| TF_LITE_KERNEL_LOG(context, "Type %s (%d) not supported.", |
| TfLiteTypeGetName(output->type), output->type); |
| return kTfLiteError; |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| TfLiteStatus CalculateOpDataAdd(TfLiteContext* context, TfLiteAddParams* params, |
| const TfLiteTensor* input1, |
| const TfLiteTensor* input2, |
| TfLiteTensor* output, OpData* data) { |
| data->requires_broadcast = !HaveSameShapes(input1, input2); |
|
|
| if (output->type == kTfLiteInt8 || output->type == kTfLiteInt16) { |
| |
| data->input1_offset = -input1->params.zero_point; |
| data->input2_offset = -input2->params.zero_point; |
| data->output_offset = output->params.zero_point; |
| data->left_shift = (output->type == kTfLiteInt16) ? 15 : 20; |
| const double twice_max_input_scale = |
| 2 * static_cast<double>( |
| std::max(input1->params.scale, input2->params.scale)); |
| const double real_input1_multiplier = |
| static_cast<double>(input1->params.scale) / twice_max_input_scale; |
| const double real_input2_multiplier = |
| static_cast<double>(input2->params.scale) / twice_max_input_scale; |
| const double real_output_multiplier = |
| twice_max_input_scale / |
| ((1 << data->left_shift) * static_cast<double>(output->params.scale)); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input1_multiplier, &data->input1_multiplier, &data->input1_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input2_multiplier, &data->input2_multiplier, &data->input2_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_output_multiplier, &data->output_multiplier, &data->output_shift); |
|
|
| TF_LITE_ENSURE_STATUS(CalculateActivationRangeQuantized( |
| context, params->activation, output, &data->output_activation_min, |
| &data->output_activation_max)); |
| } else if (output->type == kTfLiteFloat32) { |
| CalculateActivationRange(params->activation, |
| &data->output_activation_min_f32, |
| &data->output_activation_max_f32); |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| void* Init(TfLiteContext* context, const char* buffer, size_t length) { |
| TFLITE_DCHECK(context->AllocatePersistentBuffer != nullptr); |
| return context->AllocatePersistentBuffer(context, sizeof(OpData)); |
| } |
|
|
| TfLiteStatus Prepare(TfLiteContext* context, TfLiteNode* node) { |
| TFLITE_DCHECK(node->user_data != nullptr); |
| TFLITE_DCHECK(node->builtin_data != nullptr); |
|
|
| const TfLiteTensor* input1 = GetInput(context, node, kInputTensor1); |
| TF_LITE_ENSURE(context, input1 != nullptr); |
| const TfLiteTensor* input2 = GetInput(context, node, kInputTensor2); |
| TF_LITE_ENSURE(context, input2 != nullptr); |
| TfLiteTensor* output = GetOutput(context, node, kOutputTensor); |
| TF_LITE_ENSURE(context, output != nullptr); |
|
|
| OpData* data = static_cast<OpData*>(node->user_data); |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TF_LITE_ENSURE_STATUS( |
| CalculateOpDataAdd(context, params, input1, input2, output, data)); |
|
|
| return kTfLiteOk; |
| } |
|
|
| TfLiteStatus Eval(TfLiteContext* context, TfLiteNode* node) { |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TFLITE_DCHECK(node->user_data != nullptr); |
| const OpData* data = static_cast<const OpData*>(node->user_data); |
|
|
| const TfLiteEvalTensor* input1 = |
| tflite::micro::GetEvalInput(context, node, kInputTensor1); |
| const TfLiteEvalTensor* input2 = |
| tflite::micro::GetEvalInput(context, node, kInputTensor2); |
| TfLiteEvalTensor* output = |
| tflite::micro::GetEvalOutput(context, node, kOutputTensor); |
|
|
| long long start_time = esp_timer_get_time(); |
|
|
| if (output->type == kTfLiteFloat32) { |
| EvalAdd(context, node, params, data, input1, input2, output); |
| } else if (output->type == kTfLiteInt8 || output->type == kTfLiteInt16) { |
| TF_LITE_ENSURE_OK(context, EvalAddQuantized(context, node, params, data, |
| input1, input2, output)); |
| } else { |
| TF_LITE_KERNEL_LOG(context, "Type %s (%d) not supported.", |
| TfLiteTypeGetName(output->type), output->type); |
| return kTfLiteError; |
| } |
| add_total_time += esp_timer_get_time() - start_time; |
|
|
| return kTfLiteOk; |
| } |
|
|
| } |
|
|
| TfLiteRegistration Register_ADD() { |
| return {add::Init, |
| nullptr, |
| add::Prepare, |
| add::Eval, |
| nullptr, |
| 0, |
| nullptr, |
| 0}; |
| } |
|
|
| } |
| } |
| } |
|
|
| #else |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/add.h" |
|
|
| #include "edge-impulse-sdk/tensorflow/lite/c/builtin_op_data.h" |
| #include "edge-impulse-sdk/tensorflow/lite/c/common.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/quantization_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/integer_ops/add.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/reference/process_broadcast_shapes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/internal/tensor_ctypes.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/kernels/op_macros.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/kernels/kernel_util.h" |
| #include "edge-impulse-sdk/tensorflow/lite/micro/memory_helpers.h" |
|
|
| namespace tflite { |
| namespace ops { |
| namespace micro { |
| namespace add { |
|
|
| constexpr int kInputTensor1 = 0; |
| constexpr int kInputTensor2 = 1; |
| constexpr int kOutputTensor = 0; |
|
|
| struct OpData { |
| bool requires_broadcast; |
|
|
| |
| |
| int input1_shift; |
| int input2_shift; |
| int32_t output_activation_min; |
| int32_t output_activation_max; |
|
|
| |
| int32_t input1_multiplier; |
| int32_t input2_multiplier; |
| int32_t output_multiplier; |
| int output_shift; |
| int left_shift; |
| int32_t input1_offset; |
| int32_t input2_offset; |
| int32_t output_offset; |
|
|
| |
| float output_activation_min_f32; |
| float output_activation_max_f32; |
| }; |
|
|
| TfLiteStatus CalculateOpData(TfLiteContext* context, TfLiteAddParams* params, |
| const TfLiteTensor* input1, |
| const TfLiteTensor* input2, TfLiteTensor* output, |
| OpData* data) { |
| data->requires_broadcast = !HaveSameShapes(input1, input2); |
|
|
| if (output->type == kTfLiteUInt8 || output->type == kTfLiteInt8) { |
| |
| data->input1_offset = -input1->params.zero_point; |
| data->input2_offset = -input2->params.zero_point; |
| data->output_offset = output->params.zero_point; |
| data->left_shift = 20; |
| const double twice_max_input_scale = |
| 2 * static_cast<double>( |
| std::max(input1->params.scale, input2->params.scale)); |
| const double real_input1_multiplier = |
| static_cast<double>(input1->params.scale) / twice_max_input_scale; |
| const double real_input2_multiplier = |
| static_cast<double>(input2->params.scale) / twice_max_input_scale; |
| const double real_output_multiplier = |
| twice_max_input_scale / |
| ((1 << data->left_shift) * static_cast<double>(output->params.scale)); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input1_multiplier, &data->input1_multiplier, &data->input1_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_input2_multiplier, &data->input2_multiplier, &data->input2_shift); |
|
|
| QuantizeMultiplierSmallerThanOneExp( |
| real_output_multiplier, &data->output_multiplier, &data->output_shift); |
|
|
| TF_LITE_ENSURE_STATUS(CalculateActivationRangeQuantized( |
| context, params->activation, output, &data->output_activation_min, |
| &data->output_activation_max)); |
| } else if (output->type == kTfLiteFloat32) { |
| CalculateActivationRange(params->activation, |
| &data->output_activation_min_f32, |
| &data->output_activation_max_f32); |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| void EvalAdd(TfLiteContext* context, TfLiteNode* node, TfLiteAddParams* params, |
| const OpData* data, const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, TfLiteEvalTensor* output) { |
| tflite::ArithmeticParams op_params; |
| SetActivationParams(data->output_activation_min_f32, |
| data->output_activation_max_f32, &op_params); |
| if (data->requires_broadcast) { |
| reference_ops::BroadcastAdd4DSlow( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<float>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<float>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<float>(output)); |
| } else { |
| reference_ops::Add(op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<float>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<float>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<float>(output)); |
| } |
| } |
|
|
| TfLiteStatus EvalAddQuantized(TfLiteContext* context, TfLiteNode* node, |
| TfLiteAddParams* params, const OpData* data, |
| const TfLiteEvalTensor* input1, |
| const TfLiteEvalTensor* input2, |
| TfLiteEvalTensor* output) { |
| if (output->type == kTfLiteUInt8 || output->type == kTfLiteInt8) { |
| tflite::ArithmeticParams op_params; |
| op_params.left_shift = data->left_shift; |
| op_params.input1_offset = data->input1_offset; |
| op_params.input1_multiplier = data->input1_multiplier; |
| op_params.input1_shift = data->input1_shift; |
| op_params.input2_offset = data->input2_offset; |
| op_params.input2_multiplier = data->input2_multiplier; |
| op_params.input2_shift = data->input2_shift; |
| op_params.output_offset = data->output_offset; |
| op_params.output_multiplier = data->output_multiplier; |
| op_params.output_shift = data->output_shift; |
| SetActivationParams(data->output_activation_min, |
| data->output_activation_max, &op_params); |
| bool need_broadcast = reference_ops::ProcessBroadcastShapes( |
| tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorShape(input2), &op_params); |
| if (output->type == kTfLiteInt8) { |
| if (need_broadcast) { |
| reference_integer_ops::BroadcastAdd4DSlow( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<int8_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<int8_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<int8_t>(output)); |
| } else { |
| reference_integer_ops::Add( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<int8_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<int8_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<int8_t>(output)); |
| } |
| } else { |
| if (need_broadcast) { |
| reference_ops::BroadcastAdd4DSlow( |
| op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<uint8_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<uint8_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<uint8_t>(output)); |
| } else { |
| reference_ops::Add(op_params, tflite::micro::GetTensorShape(input1), |
| tflite::micro::GetTensorData<uint8_t>(input1), |
| tflite::micro::GetTensorShape(input2), |
| tflite::micro::GetTensorData<uint8_t>(input2), |
| tflite::micro::GetTensorShape(output), |
| tflite::micro::GetTensorData<uint8_t>(output)); |
| } |
| } |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| void* Init(TfLiteContext* context, const char* buffer, size_t length) { |
| TFLITE_DCHECK(context->AllocatePersistentBuffer != nullptr); |
| return context->AllocatePersistentBuffer(context, sizeof(OpData)); |
| } |
|
|
| TfLiteStatus Prepare(TfLiteContext* context, TfLiteNode* node) { |
| TFLITE_DCHECK(node->user_data != nullptr); |
| TFLITE_DCHECK(node->builtin_data != nullptr); |
|
|
| const TfLiteTensor* input1 = GetInput(context, node, kInputTensor1); |
| TF_LITE_ENSURE(context, input1 != nullptr); |
| const TfLiteTensor* input2 = GetInput(context, node, kInputTensor2); |
| TF_LITE_ENSURE(context, input2 != nullptr); |
| TfLiteTensor* output = GetOutput(context, node, kOutputTensor); |
| TF_LITE_ENSURE(context, output != nullptr); |
|
|
| OpData* data = static_cast<OpData*>(node->user_data); |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TF_LITE_ENSURE_STATUS( |
| CalculateOpData(context, params, input1, input2, output, data)); |
|
|
| return kTfLiteOk; |
| } |
|
|
| TfLiteStatus Eval(TfLiteContext* context, TfLiteNode* node) { |
| auto* params = reinterpret_cast<TfLiteAddParams*>(node->builtin_data); |
|
|
| TFLITE_DCHECK(node->user_data != nullptr); |
| const OpData* data = static_cast<const OpData*>(node->user_data); |
|
|
| const TfLiteEvalTensor* input1 = |
| tflite::micro::GetEvalInput(context, node, kInputTensor1); |
| const TfLiteEvalTensor* input2 = |
| tflite::micro::GetEvalInput(context, node, kInputTensor2); |
| TfLiteEvalTensor* output = |
| tflite::micro::GetEvalOutput(context, node, kOutputTensor); |
|
|
| if (output->type == kTfLiteFloat32) { |
| EvalAdd(context, node, params, data, input1, input2, output); |
| } else if (output->type == kTfLiteUInt8 || output->type == kTfLiteInt8) { |
| TF_LITE_ENSURE_OK(context, EvalAddQuantized(context, node, params, data, |
| input1, input2, output)); |
| } else { |
| TF_LITE_KERNEL_LOG(context, "Type %s (%d) not supported.", |
| TfLiteTypeGetName(output->type), output->type); |
| return kTfLiteError; |
| } |
|
|
| return kTfLiteOk; |
| } |
|
|
| } |
|
|
| TfLiteRegistration Register_ADD() { |
| return {add::Init, |
| nullptr, |
| add::Prepare, |
| add::Eval, |
| nullptr, |
| 0, |
| nullptr, |
| 0}; |
| } |
|
|
| } |
| } |
| } |
|
|
| #endif |
|
|