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|
| import logging |
| import copy |
| import time |
| import os |
|
|
| from huggingface_hub import snapshot_download |
|
|
| from api.utils.file_utils import get_project_base_directory |
| from .operators import * |
| from . import operators |
| import math |
| import numpy as np |
| import cv2 |
| import onnxruntime as ort |
|
|
| from .postprocess import build_post_process |
|
|
|
|
| def transform(data, ops=None): |
| """ transform """ |
| if ops is None: |
| ops = [] |
| for op in ops: |
| data = op(data) |
| if data is None: |
| return None |
| return data |
|
|
|
|
| def create_operators(op_param_list, global_config=None): |
| """ |
| create operators based on the config |
| |
| Args: |
| params(list): a dict list, used to create some operators |
| """ |
| assert isinstance( |
| op_param_list, list), ('operator config should be a list') |
| ops = [] |
| for operator in op_param_list: |
| assert isinstance(operator, |
| dict) and len(operator) == 1, "yaml format error" |
| op_name = list(operator)[0] |
| param = {} if operator[op_name] is None else operator[op_name] |
| if global_config is not None: |
| param.update(global_config) |
| op = getattr(operators, op_name)(**param) |
| ops.append(op) |
| return ops |
|
|
|
|
| def load_model(model_dir, nm): |
| model_file_path = os.path.join(model_dir, nm + ".onnx") |
| if not os.path.exists(model_file_path): |
| raise ValueError("not find model file path {}".format( |
| model_file_path)) |
|
|
| def cuda_is_available(): |
| try: |
| import torch |
| if torch.cuda.is_available(): |
| return True |
| except Exception: |
| return False |
| return False |
|
|
| options = ort.SessionOptions() |
| options.enable_cpu_mem_arena = False |
| options.execution_mode = ort.ExecutionMode.ORT_SEQUENTIAL |
| options.intra_op_num_threads = 2 |
| options.inter_op_num_threads = 2 |
|
|
| |
| |
| run_options = ort.RunOptions() |
| if cuda_is_available(): |
| cuda_provider_options = { |
| "device_id": 0, |
| "gpu_mem_limit": 512 * 1024 * 1024, |
| "arena_extend_strategy": "kNextPowerOfTwo", |
| } |
| sess = ort.InferenceSession( |
| model_file_path, |
| options=options, |
| providers=['CUDAExecutionProvider'], |
| provider_options=[cuda_provider_options] |
| ) |
| run_options.add_run_config_entry("memory.enable_memory_arena_shrinkage", "gpu:0") |
| logging.info(f"TextRecognizer {nm} uses GPU") |
| else: |
| sess = ort.InferenceSession( |
| model_file_path, |
| options=options, |
| providers=['CPUExecutionProvider']) |
| run_options.add_run_config_entry("memory.enable_memory_arena_shrinkage", "cpu") |
| logging.info(f"TextRecognizer {nm} uses CPU") |
| return sess, sess.get_inputs()[0], run_options |
|
|
|
|
| class TextRecognizer(object): |
| def __init__(self, model_dir): |
| self.rec_image_shape = [int(v) for v in "3, 48, 320".split(",")] |
| self.rec_batch_num = 16 |
| postprocess_params = { |
| 'name': 'CTCLabelDecode', |
| "character_dict_path": os.path.join(model_dir, "ocr.res"), |
| "use_space_char": True |
| } |
| self.postprocess_op = build_post_process(postprocess_params) |
| self.predictor, self.input_tensor, self.run_options = load_model(model_dir, 'rec') |
|
|
| def resize_norm_img(self, img, max_wh_ratio): |
| imgC, imgH, imgW = self.rec_image_shape |
|
|
| assert imgC == img.shape[2] |
| imgW = int((imgH * max_wh_ratio)) |
| w = self.input_tensor.shape[3:][0] |
| if isinstance(w, str): |
| pass |
| elif w is not None and w > 0: |
| imgW = w |
| h, w = img.shape[:2] |
| ratio = w / float(h) |
| if math.ceil(imgH * ratio) > imgW: |
| resized_w = imgW |
| else: |
| resized_w = int(math.ceil(imgH * ratio)) |
|
|
| resized_image = cv2.resize(img, (resized_w, imgH)) |
| resized_image = resized_image.astype('float32') |
| resized_image = resized_image.transpose((2, 0, 1)) / 255 |
| resized_image -= 0.5 |
| resized_image /= 0.5 |
| padding_im = np.zeros((imgC, imgH, imgW), dtype=np.float32) |
| padding_im[:, :, 0:resized_w] = resized_image |
| return padding_im |
|
|
| def resize_norm_img_vl(self, img, image_shape): |
|
|
| imgC, imgH, imgW = image_shape |
| img = img[:, :, ::-1] |
| resized_image = cv2.resize( |
| img, (imgW, imgH), interpolation=cv2.INTER_LINEAR) |
| resized_image = resized_image.astype('float32') |
| resized_image = resized_image.transpose((2, 0, 1)) / 255 |
| return resized_image |
|
|
| def resize_norm_img_srn(self, img, image_shape): |
| imgC, imgH, imgW = image_shape |
|
|
| img_black = np.zeros((imgH, imgW)) |
| im_hei = img.shape[0] |
| im_wid = img.shape[1] |
|
|
| if im_wid <= im_hei * 1: |
| img_new = cv2.resize(img, (imgH * 1, imgH)) |
| elif im_wid <= im_hei * 2: |
| img_new = cv2.resize(img, (imgH * 2, imgH)) |
| elif im_wid <= im_hei * 3: |
| img_new = cv2.resize(img, (imgH * 3, imgH)) |
| else: |
| img_new = cv2.resize(img, (imgW, imgH)) |
|
|
| img_np = np.asarray(img_new) |
| img_np = cv2.cvtColor(img_np, cv2.COLOR_BGR2GRAY) |
| img_black[:, 0:img_np.shape[1]] = img_np |
| img_black = img_black[:, :, np.newaxis] |
|
|
| row, col, c = img_black.shape |
| c = 1 |
|
|
| return np.reshape(img_black, (c, row, col)).astype(np.float32) |
|
|
| def srn_other_inputs(self, image_shape, num_heads, max_text_length): |
|
|
| imgC, imgH, imgW = image_shape |
| feature_dim = int((imgH / 8) * (imgW / 8)) |
|
|
| encoder_word_pos = np.array(range(0, feature_dim)).reshape( |
| (feature_dim, 1)).astype('int64') |
| gsrm_word_pos = np.array(range(0, max_text_length)).reshape( |
| (max_text_length, 1)).astype('int64') |
|
|
| gsrm_attn_bias_data = np.ones((1, max_text_length, max_text_length)) |
| gsrm_slf_attn_bias1 = np.triu(gsrm_attn_bias_data, 1).reshape( |
| [-1, 1, max_text_length, max_text_length]) |
| gsrm_slf_attn_bias1 = np.tile( |
| gsrm_slf_attn_bias1, |
| [1, num_heads, 1, 1]).astype('float32') * [-1e9] |
|
|
| gsrm_slf_attn_bias2 = np.tril(gsrm_attn_bias_data, -1).reshape( |
| [-1, 1, max_text_length, max_text_length]) |
| gsrm_slf_attn_bias2 = np.tile( |
| gsrm_slf_attn_bias2, |
| [1, num_heads, 1, 1]).astype('float32') * [-1e9] |
|
|
| encoder_word_pos = encoder_word_pos[np.newaxis, :] |
| gsrm_word_pos = gsrm_word_pos[np.newaxis, :] |
|
|
| return [ |
| encoder_word_pos, gsrm_word_pos, gsrm_slf_attn_bias1, |
| gsrm_slf_attn_bias2 |
| ] |
|
|
| def process_image_srn(self, img, image_shape, num_heads, max_text_length): |
| norm_img = self.resize_norm_img_srn(img, image_shape) |
| norm_img = norm_img[np.newaxis, :] |
|
|
| [encoder_word_pos, gsrm_word_pos, gsrm_slf_attn_bias1, gsrm_slf_attn_bias2] = \ |
| self.srn_other_inputs(image_shape, num_heads, max_text_length) |
|
|
| gsrm_slf_attn_bias1 = gsrm_slf_attn_bias1.astype(np.float32) |
| gsrm_slf_attn_bias2 = gsrm_slf_attn_bias2.astype(np.float32) |
| encoder_word_pos = encoder_word_pos.astype(np.int64) |
| gsrm_word_pos = gsrm_word_pos.astype(np.int64) |
|
|
| return (norm_img, encoder_word_pos, gsrm_word_pos, gsrm_slf_attn_bias1, |
| gsrm_slf_attn_bias2) |
|
|
| def resize_norm_img_sar(self, img, image_shape, |
| width_downsample_ratio=0.25): |
| imgC, imgH, imgW_min, imgW_max = image_shape |
| h = img.shape[0] |
| w = img.shape[1] |
| valid_ratio = 1.0 |
| |
| width_divisor = int(1 / width_downsample_ratio) |
| |
| ratio = w / float(h) |
| resize_w = math.ceil(imgH * ratio) |
| if resize_w % width_divisor != 0: |
| resize_w = round(resize_w / width_divisor) * width_divisor |
| if imgW_min is not None: |
| resize_w = max(imgW_min, resize_w) |
| if imgW_max is not None: |
| valid_ratio = min(1.0, 1.0 * resize_w / imgW_max) |
| resize_w = min(imgW_max, resize_w) |
| resized_image = cv2.resize(img, (resize_w, imgH)) |
| resized_image = resized_image.astype('float32') |
| |
| if image_shape[0] == 1: |
| resized_image = resized_image / 255 |
| resized_image = resized_image[np.newaxis, :] |
| else: |
| resized_image = resized_image.transpose((2, 0, 1)) / 255 |
| resized_image -= 0.5 |
| resized_image /= 0.5 |
| resize_shape = resized_image.shape |
| padding_im = -1.0 * np.ones((imgC, imgH, imgW_max), dtype=np.float32) |
| padding_im[:, :, 0:resize_w] = resized_image |
| pad_shape = padding_im.shape |
|
|
| return padding_im, resize_shape, pad_shape, valid_ratio |
|
|
| def resize_norm_img_spin(self, img): |
| img = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY) |
| |
| img = cv2.resize(img, tuple([100, 32]), cv2.INTER_CUBIC) |
| img = np.array(img, np.float32) |
| img = np.expand_dims(img, -1) |
| img = img.transpose((2, 0, 1)) |
| mean = [127.5] |
| std = [127.5] |
| mean = np.array(mean, dtype=np.float32) |
| std = np.array(std, dtype=np.float32) |
| mean = np.float32(mean.reshape(1, -1)) |
| stdinv = 1 / np.float32(std.reshape(1, -1)) |
| img -= mean |
| img *= stdinv |
| return img |
|
|
| def resize_norm_img_svtr(self, img, image_shape): |
|
|
| imgC, imgH, imgW = image_shape |
| resized_image = cv2.resize( |
| img, (imgW, imgH), interpolation=cv2.INTER_LINEAR) |
| resized_image = resized_image.astype('float32') |
| resized_image = resized_image.transpose((2, 0, 1)) / 255 |
| resized_image -= 0.5 |
| resized_image /= 0.5 |
| return resized_image |
|
|
| def resize_norm_img_abinet(self, img, image_shape): |
|
|
| imgC, imgH, imgW = image_shape |
|
|
| resized_image = cv2.resize( |
| img, (imgW, imgH), interpolation=cv2.INTER_LINEAR) |
| resized_image = resized_image.astype('float32') |
| resized_image = resized_image / 255. |
|
|
| mean = np.array([0.485, 0.456, 0.406]) |
| std = np.array([0.229, 0.224, 0.225]) |
| resized_image = ( |
| resized_image - mean[None, None, ...]) / std[None, None, ...] |
| resized_image = resized_image.transpose((2, 0, 1)) |
| resized_image = resized_image.astype('float32') |
|
|
| return resized_image |
|
|
| def norm_img_can(self, img, image_shape): |
|
|
| img = cv2.cvtColor( |
| img, cv2.COLOR_BGR2GRAY) |
|
|
| if self.rec_image_shape[0] == 1: |
| h, w = img.shape |
| _, imgH, imgW = self.rec_image_shape |
| if h < imgH or w < imgW: |
| padding_h = max(imgH - h, 0) |
| padding_w = max(imgW - w, 0) |
| img_padded = np.pad(img, ((0, padding_h), (0, padding_w)), |
| 'constant', |
| constant_values=(255)) |
| img = img_padded |
|
|
| img = np.expand_dims(img, 0) / 255.0 |
| img = img.astype('float32') |
|
|
| return img |
|
|
| def __call__(self, img_list): |
| img_num = len(img_list) |
| |
| width_list = [] |
| for img in img_list: |
| width_list.append(img.shape[1] / float(img.shape[0])) |
| |
| indices = np.argsort(np.array(width_list)) |
| rec_res = [['', 0.0]] * img_num |
| batch_num = self.rec_batch_num |
| st = time.time() |
|
|
| for beg_img_no in range(0, img_num, batch_num): |
| end_img_no = min(img_num, beg_img_no + batch_num) |
| norm_img_batch = [] |
| imgC, imgH, imgW = self.rec_image_shape[:3] |
| max_wh_ratio = imgW / imgH |
| |
| for ino in range(beg_img_no, end_img_no): |
| h, w = img_list[indices[ino]].shape[0:2] |
| wh_ratio = w * 1.0 / h |
| max_wh_ratio = max(max_wh_ratio, wh_ratio) |
| for ino in range(beg_img_no, end_img_no): |
| norm_img = self.resize_norm_img(img_list[indices[ino]], |
| max_wh_ratio) |
| norm_img = norm_img[np.newaxis, :] |
| norm_img_batch.append(norm_img) |
| norm_img_batch = np.concatenate(norm_img_batch) |
| norm_img_batch = norm_img_batch.copy() |
|
|
| input_dict = {} |
| input_dict[self.input_tensor.name] = norm_img_batch |
| for i in range(100000): |
| try: |
| outputs = self.predictor.run(None, input_dict, self.run_options) |
| break |
| except Exception as e: |
| if i >= 3: |
| raise e |
| time.sleep(5) |
| preds = outputs[0] |
| rec_result = self.postprocess_op(preds) |
| for rno in range(len(rec_result)): |
| rec_res[indices[beg_img_no + rno]] = rec_result[rno] |
|
|
| return rec_res, time.time() - st |
|
|
|
|
| class TextDetector(object): |
| def __init__(self, model_dir): |
| pre_process_list = [{ |
| 'DetResizeForTest': { |
| 'limit_side_len': 960, |
| 'limit_type': "max", |
| } |
| }, { |
| 'NormalizeImage': { |
| 'std': [0.229, 0.224, 0.225], |
| 'mean': [0.485, 0.456, 0.406], |
| 'scale': '1./255.', |
| 'order': 'hwc' |
| } |
| }, { |
| 'ToCHWImage': None |
| }, { |
| 'KeepKeys': { |
| 'keep_keys': ['image', 'shape'] |
| } |
| }] |
| postprocess_params = {"name": "DBPostProcess", "thresh": 0.3, "box_thresh": 0.5, "max_candidates": 1000, |
| "unclip_ratio": 1.5, "use_dilation": False, "score_mode": "fast", "box_type": "quad"} |
|
|
| self.postprocess_op = build_post_process(postprocess_params) |
| self.predictor, self.input_tensor, self.run_options = load_model(model_dir, 'det') |
|
|
| img_h, img_w = self.input_tensor.shape[2:] |
| if isinstance(img_h, str) or isinstance(img_w, str): |
| pass |
| elif img_h is not None and img_w is not None and img_h > 0 and img_w > 0: |
| pre_process_list[0] = { |
| 'DetResizeForTest': { |
| 'image_shape': [img_h, img_w] |
| } |
| } |
| self.preprocess_op = create_operators(pre_process_list) |
|
|
| def order_points_clockwise(self, pts): |
| rect = np.zeros((4, 2), dtype="float32") |
| s = pts.sum(axis=1) |
| rect[0] = pts[np.argmin(s)] |
| rect[2] = pts[np.argmax(s)] |
| tmp = np.delete(pts, (np.argmin(s), np.argmax(s)), axis=0) |
| diff = np.diff(np.array(tmp), axis=1) |
| rect[1] = tmp[np.argmin(diff)] |
| rect[3] = tmp[np.argmax(diff)] |
| return rect |
|
|
| def clip_det_res(self, points, img_height, img_width): |
| for pno in range(points.shape[0]): |
| points[pno, 0] = int(min(max(points[pno, 0], 0), img_width - 1)) |
| points[pno, 1] = int(min(max(points[pno, 1], 0), img_height - 1)) |
| return points |
|
|
| def filter_tag_det_res(self, dt_boxes, image_shape): |
| img_height, img_width = image_shape[0:2] |
| dt_boxes_new = [] |
| for box in dt_boxes: |
| if isinstance(box, list): |
| box = np.array(box) |
| box = self.order_points_clockwise(box) |
| box = self.clip_det_res(box, img_height, img_width) |
| rect_width = int(np.linalg.norm(box[0] - box[1])) |
| rect_height = int(np.linalg.norm(box[0] - box[3])) |
| if rect_width <= 3 or rect_height <= 3: |
| continue |
| dt_boxes_new.append(box) |
| dt_boxes = np.array(dt_boxes_new) |
| return dt_boxes |
|
|
| def filter_tag_det_res_only_clip(self, dt_boxes, image_shape): |
| img_height, img_width = image_shape[0:2] |
| dt_boxes_new = [] |
| for box in dt_boxes: |
| if isinstance(box, list): |
| box = np.array(box) |
| box = self.clip_det_res(box, img_height, img_width) |
| dt_boxes_new.append(box) |
| dt_boxes = np.array(dt_boxes_new) |
| return dt_boxes |
|
|
| def __call__(self, img): |
| ori_im = img.copy() |
| data = {'image': img} |
|
|
| st = time.time() |
| data = transform(data, self.preprocess_op) |
| img, shape_list = data |
| if img is None: |
| return None, 0 |
| img = np.expand_dims(img, axis=0) |
| shape_list = np.expand_dims(shape_list, axis=0) |
| img = img.copy() |
| input_dict = {} |
| input_dict[self.input_tensor.name] = img |
| for i in range(100000): |
| try: |
| outputs = self.predictor.run(None, input_dict, self.run_options) |
| break |
| except Exception as e: |
| if i >= 3: |
| raise e |
| time.sleep(5) |
|
|
| post_result = self.postprocess_op({"maps": outputs[0]}, shape_list) |
| dt_boxes = post_result[0]['points'] |
| dt_boxes = self.filter_tag_det_res(dt_boxes, ori_im.shape) |
|
|
| return dt_boxes, time.time() - st |
|
|
|
|
| class OCR(object): |
| def __init__(self, model_dir=None): |
| """ |
| If you have trouble downloading HuggingFace models, -_^ this might help!! |
| |
| For Linux: |
| export HF_ENDPOINT=https://hf-mirror.com |
| |
| For Windows: |
| Good luck |
| ^_- |
| |
| """ |
| if not model_dir: |
| try: |
| model_dir = os.path.join( |
| get_project_base_directory(), |
| "rag/res/deepdoc") |
| self.text_detector = TextDetector(model_dir) |
| self.text_recognizer = TextRecognizer(model_dir) |
| except Exception: |
| model_dir = snapshot_download(repo_id="InfiniFlow/deepdoc", |
| local_dir=os.path.join(get_project_base_directory(), "rag/res/deepdoc"), |
| local_dir_use_symlinks=False) |
| self.text_detector = TextDetector(model_dir) |
| self.text_recognizer = TextRecognizer(model_dir) |
|
|
| self.drop_score = 0.5 |
| self.crop_image_res_index = 0 |
|
|
| def get_rotate_crop_image(self, img, points): |
| ''' |
| img_height, img_width = img.shape[0:2] |
| left = int(np.min(points[:, 0])) |
| right = int(np.max(points[:, 0])) |
| top = int(np.min(points[:, 1])) |
| bottom = int(np.max(points[:, 1])) |
| img_crop = img[top:bottom, left:right, :].copy() |
| points[:, 0] = points[:, 0] - left |
| points[:, 1] = points[:, 1] - top |
| ''' |
| assert len(points) == 4, "shape of points must be 4*2" |
| img_crop_width = int( |
| max( |
| np.linalg.norm(points[0] - points[1]), |
| np.linalg.norm(points[2] - points[3]))) |
| img_crop_height = int( |
| max( |
| np.linalg.norm(points[0] - points[3]), |
| np.linalg.norm(points[1] - points[2]))) |
| pts_std = np.float32([[0, 0], [img_crop_width, 0], |
| [img_crop_width, img_crop_height], |
| [0, img_crop_height]]) |
| M = cv2.getPerspectiveTransform(points, pts_std) |
| dst_img = cv2.warpPerspective( |
| img, |
| M, (img_crop_width, img_crop_height), |
| borderMode=cv2.BORDER_REPLICATE, |
| flags=cv2.INTER_CUBIC) |
| dst_img_height, dst_img_width = dst_img.shape[0:2] |
| if dst_img_height * 1.0 / dst_img_width >= 1.5: |
| dst_img = np.rot90(dst_img) |
| return dst_img |
|
|
| def sorted_boxes(self, dt_boxes): |
| """ |
| Sort text boxes in order from top to bottom, left to right |
| args: |
| dt_boxes(array):detected text boxes with shape [4, 2] |
| return: |
| sorted boxes(array) with shape [4, 2] |
| """ |
| num_boxes = dt_boxes.shape[0] |
| sorted_boxes = sorted(dt_boxes, key=lambda x: (x[0][1], x[0][0])) |
| _boxes = list(sorted_boxes) |
|
|
| for i in range(num_boxes - 1): |
| for j in range(i, -1, -1): |
| if abs(_boxes[j + 1][0][1] - _boxes[j][0][1]) < 10 and \ |
| (_boxes[j + 1][0][0] < _boxes[j][0][0]): |
| tmp = _boxes[j] |
| _boxes[j] = _boxes[j + 1] |
| _boxes[j + 1] = tmp |
| else: |
| break |
| return _boxes |
|
|
| def detect(self, img): |
| time_dict = {'det': 0, 'rec': 0, 'cls': 0, 'all': 0} |
|
|
| if img is None: |
| return None, None, time_dict |
|
|
| start = time.time() |
| dt_boxes, elapse = self.text_detector(img) |
| time_dict['det'] = elapse |
|
|
| if dt_boxes is None: |
| end = time.time() |
| time_dict['all'] = end - start |
| return None, None, time_dict |
|
|
| return zip(self.sorted_boxes(dt_boxes), [ |
| ("", 0) for _ in range(len(dt_boxes))]) |
|
|
| def recognize(self, ori_im, box): |
| img_crop = self.get_rotate_crop_image(ori_im, box) |
|
|
| rec_res, elapse = self.text_recognizer([img_crop]) |
| text, score = rec_res[0] |
| if score < self.drop_score: |
| return "" |
| return text |
|
|
| def __call__(self, img, cls=True): |
| time_dict = {'det': 0, 'rec': 0, 'cls': 0, 'all': 0} |
|
|
| if img is None: |
| return None, None, time_dict |
|
|
| start = time.time() |
| ori_im = img.copy() |
| dt_boxes, elapse = self.text_detector(img) |
| time_dict['det'] = elapse |
|
|
| if dt_boxes is None: |
| end = time.time() |
| time_dict['all'] = end - start |
| return None, None, time_dict |
|
|
| img_crop_list = [] |
|
|
| dt_boxes = self.sorted_boxes(dt_boxes) |
|
|
| for bno in range(len(dt_boxes)): |
| tmp_box = copy.deepcopy(dt_boxes[bno]) |
| img_crop = self.get_rotate_crop_image(ori_im, tmp_box) |
| img_crop_list.append(img_crop) |
|
|
| rec_res, elapse = self.text_recognizer(img_crop_list) |
|
|
| time_dict['rec'] = elapse |
|
|
| filter_boxes, filter_rec_res = [], [] |
| for box, rec_result in zip(dt_boxes, rec_res): |
| text, score = rec_result |
| if score >= self.drop_score: |
| filter_boxes.append(box) |
| filter_rec_res.append(rec_result) |
| end = time.time() |
| time_dict['all'] = end - start |
|
|
| |
| |
|
|
| return list(zip([a.tolist() for a in filter_boxes], filter_rec_res)) |
|
|