# copyright (c) 2022 PaddlePaddle Authors. All Rights Reserve. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. import numpy as np import paddle from paddle.nn import functional as F import re from shapely.geometry import Polygon import pyclipper import cv2 import copy def build_post_process(config, global_config=None): support_dict = [ 'DBPostProcess', 'CTCLabelDecode', 'AttnLabelDecode', 'SRNLabelDecode', 'DistillationCTCLabelDecode', 'TableLabelDecode', 'NRTRLabelDecode', 'SARLabelDecode', 'SEEDLabelDecode', 'PRENLabelDecode', 'DistillationSARLabelDecode' ] if config['name'] == 'PSEPostProcess': from .pse_postprocess import PSEPostProcess support_dict.append('PSEPostProcess') config = copy.deepcopy(config) module_name = config.pop('name') if module_name == "None": return if global_config is not None: config.update(global_config) assert module_name in support_dict, Exception( 'post process only support {}'.format(support_dict)) module_class = eval(module_name)(**config) return module_class class DBPostProcess(object): """ The post process for Differentiable Binarization (DB). """ def __init__(self, thresh=0.3, box_thresh=0.7, max_candidates=1000, unclip_ratio=2.0, use_dilation=False, score_mode="fast", **kwargs): self.thresh = thresh self.box_thresh = box_thresh self.max_candidates = max_candidates self.unclip_ratio = unclip_ratio self.min_size = 3 self.score_mode = score_mode assert score_mode in [ "slow", "fast" ], "Score mode must be in [slow, fast] but got: {}".format(score_mode) self.dilation_kernel = None if not use_dilation else np.array( [[1, 1], [1, 1]]) def boxes_from_bitmap(self, pred, _bitmap, dest_width, dest_height): ''' _bitmap: single map with shape (1, H, W), whose values are binarized as {0, 1} ''' bitmap = _bitmap height, width = bitmap.shape outs = cv2.findContours((bitmap * 255).astype(np.uint8), cv2.RETR_LIST, cv2.CHAIN_APPROX_SIMPLE) if len(outs) == 3: img, contours, _ = outs[0], outs[1], outs[2] elif len(outs) == 2: contours, _ = outs[0], outs[1] num_contours = min(len(contours), self.max_candidates) boxes = [] scores = [] for index in range(num_contours): contour = contours[index] points, sside = self.get_mini_boxes(contour) if sside < self.min_size: continue points = np.array(points) if self.score_mode == "fast": score = self.box_score_fast(pred, points.reshape(-1, 2)) else: score = self.box_score_slow(pred, contour) if self.box_thresh > score: continue box = self.unclip(points).reshape(-1, 1, 2) box, sside = self.get_mini_boxes(box) if sside < self.min_size + 2: continue box = np.array(box) box[:, 0] = np.clip( np.round(box[:, 0] / width * dest_width), 0, dest_width) box[:, 1] = np.clip( np.round(box[:, 1] / height * dest_height), 0, dest_height) boxes.append(box.astype(np.int16)) scores.append(score) return np.array(boxes, dtype=np.int16), scores def unclip(self, box): unclip_ratio = self.unclip_ratio poly = Polygon(box) distance = poly.area * unclip_ratio / poly.length offset = pyclipper.PyclipperOffset() offset.AddPath(box, pyclipper.JT_ROUND, pyclipper.ET_CLOSEDPOLYGON) expanded = np.array(offset.Execute(distance)) return expanded def get_mini_boxes(self, contour): bounding_box = cv2.minAreaRect(contour) points = sorted(list(cv2.boxPoints(bounding_box)), key=lambda x: x[0]) index_1, index_2, index_3, index_4 = 0, 1, 2, 3 if points[1][1] > points[0][1]: index_1 = 0 index_4 = 1 else: index_1 = 1 index_4 = 0 if points[3][1] > points[2][1]: index_2 = 2 index_3 = 3 else: index_2 = 3 index_3 = 2 box = [ points[index_1], points[index_2], points[index_3], points[index_4] ] return box, min(bounding_box[1]) def box_score_fast(self, bitmap, _box): ''' box_score_fast: use bbox mean score as the mean score ''' h, w = bitmap.shape[:2] box = _box.copy() xmin = np.clip(np.floor(box[:, 0].min()).astype(np.int), 0, w - 1) xmax = np.clip(np.ceil(box[:, 0].max()).astype(np.int), 0, w - 1) ymin = np.clip(np.floor(box[:, 1].min()).astype(np.int), 0, h - 1) ymax = np.clip(np.ceil(box[:, 1].max()).astype(np.int), 0, h - 1) mask = np.zeros((ymax - ymin + 1, xmax - xmin + 1), dtype=np.uint8) box[:, 0] = box[:, 0] - xmin box[:, 1] = box[:, 1] - ymin cv2.fillPoly(mask, box.reshape(1, -1, 2).astype(np.int32), 1) return cv2.mean(bitmap[ymin:ymax + 1, xmin:xmax + 1], mask)[0] def box_score_slow(self, bitmap, contour): ''' box_score_slow: use polyon mean score as the mean score ''' h, w = bitmap.shape[:2] contour = contour.copy() contour = np.reshape(contour, (-1, 2)) xmin = np.clip(np.min(contour[:, 0]), 0, w - 1) xmax = np.clip(np.max(contour[:, 0]), 0, w - 1) ymin = np.clip(np.min(contour[:, 1]), 0, h - 1) ymax = np.clip(np.max(contour[:, 1]), 0, h - 1) mask = np.zeros((ymax - ymin + 1, xmax - xmin + 1), dtype=np.uint8) contour[:, 0] = contour[:, 0] - xmin contour[:, 1] = contour[:, 1] - ymin cv2.fillPoly(mask, contour.reshape(1, -1, 2).astype(np.int32), 1) return cv2.mean(bitmap[ymin:ymax + 1, xmin:xmax + 1], mask)[0] def __call__(self, outs_dict, shape_list): pred = outs_dict['maps'] if isinstance(pred, paddle.Tensor): pred = pred.numpy() pred = pred[:, 0, :, :] segmentation = pred > self.thresh boxes_batch = [] for batch_index in range(pred.shape[0]): src_h, src_w = shape_list[batch_index] if self.dilation_kernel is not None: mask = cv2.dilate( np.array(segmentation[batch_index]).astype(np.uint8), self.dilation_kernel) else: mask = segmentation[batch_index] boxes, scores = self.boxes_from_bitmap(pred[batch_index], mask, src_w, src_h) boxes_batch.append({'points': boxes}) return boxes_batch class BaseRecLabelDecode(object): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False): self.beg_str = "sos" self.end_str = "eos" self.character_str = [] if character_dict_path is None: self.character_str = "0123456789abcdefghijklmnopqrstuvwxyz" dict_character = list(self.character_str) else: with open(character_dict_path, "rb") as fin: lines = fin.readlines() for line in lines: line = line.decode('utf-8').strip("\n").strip("\r\n") self.character_str.append(line) if use_space_char: self.character_str.append(" ") dict_character = list(self.character_str) dict_character = self.add_special_char(dict_character) self.dict = {} for i, char in enumerate(dict_character): self.dict[char] = i self.character = dict_character def add_special_char(self, dict_character): return dict_character def decode(self, text_index, text_prob=None, is_remove_duplicate=False): """ convert text-index into text-label. """ result_list = [] ignored_tokens = self.get_ignored_tokens() batch_size = len(text_index) for batch_idx in range(batch_size): selection = np.ones(len(text_index[batch_idx]), dtype=bool) if is_remove_duplicate: selection[1:] = text_index[batch_idx][1:] != text_index[ batch_idx][:-1] for ignored_token in ignored_tokens: selection &= text_index[batch_idx] != ignored_token char_list = [ self.character[text_id] for text_id in text_index[batch_idx][selection] ] if text_prob is not None: conf_list = text_prob[batch_idx][selection] else: conf_list = [1] * len(selection) if len(conf_list) == 0: conf_list = [0] text = ''.join(char_list) result_list.append((text, np.mean(conf_list).tolist())) return result_list def get_ignored_tokens(self): return [0] # for ctc blank class CTCLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, **kwargs): super(CTCLabelDecode, self).__init__(character_dict_path, use_space_char) def __call__(self, preds, label=None, *args, **kwargs): if isinstance(preds, tuple) or isinstance(preds, list): preds = preds[-1] if isinstance(preds, paddle.Tensor): preds = preds.numpy() preds_idx = preds.argmax(axis=2) preds_prob = preds.max(axis=2) text = self.decode(preds_idx, preds_prob, is_remove_duplicate=True) if label is None: return text label = self.decode(label) return text, label def add_special_char(self, dict_character): dict_character = ['blank'] + dict_character return dict_character class DistillationCTCLabelDecode(CTCLabelDecode): """ Convert Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, model_name=["student"], key=None, multi_head=False, **kwargs): super(DistillationCTCLabelDecode, self).__init__(character_dict_path, use_space_char) if not isinstance(model_name, list): model_name = [model_name] self.model_name = model_name self.key = key self.multi_head = multi_head def __call__(self, preds, label=None, *args, **kwargs): output = dict() for name in self.model_name: pred = preds[name] if self.key is not None: pred = pred[self.key] if self.multi_head and isinstance(pred, dict): pred = pred['ctc'] output[name] = super().__call__(pred, label=label, *args, **kwargs) return output class NRTRLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=True, **kwargs): super(NRTRLabelDecode, self).__init__(character_dict_path, use_space_char) def __call__(self, preds, label=None, *args, **kwargs): if len(preds) == 2: preds_id = preds[0] preds_prob = preds[1] if isinstance(preds_id, paddle.Tensor): preds_id = preds_id.numpy() if isinstance(preds_prob, paddle.Tensor): preds_prob = preds_prob.numpy() if preds_id[0][0] == 2: preds_idx = preds_id[:, 1:] preds_prob = preds_prob[:, 1:] else: preds_idx = preds_id text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False) if label is None: return text label = self.decode(label[:, 1:]) else: if isinstance(preds, paddle.Tensor): preds = preds.numpy() preds_idx = preds.argmax(axis=2) preds_prob = preds.max(axis=2) text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False) if label is None: return text label = self.decode(label[:, 1:]) return text, label def add_special_char(self, dict_character): dict_character = ['blank', '', '', ''] + dict_character return dict_character def decode(self, text_index, text_prob=None, is_remove_duplicate=False): """ convert text-index into text-label. """ result_list = [] batch_size = len(text_index) for batch_idx in range(batch_size): char_list = [] conf_list = [] for idx in range(len(text_index[batch_idx])): if text_index[batch_idx][idx] == 3: # end break try: char_list.append(self.character[int(text_index[batch_idx][ idx])]) except: continue if text_prob is not None: conf_list.append(text_prob[batch_idx][idx]) else: conf_list.append(1) text = ''.join(char_list) result_list.append((text.lower(), np.mean(conf_list).tolist())) return result_list class AttnLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, **kwargs): super(AttnLabelDecode, self).__init__(character_dict_path, use_space_char) def add_special_char(self, dict_character): self.beg_str = "sos" self.end_str = "eos" dict_character = dict_character dict_character = [self.beg_str] + dict_character + [self.end_str] return dict_character def decode(self, text_index, text_prob=None, is_remove_duplicate=False): """ convert text-index into text-label. """ result_list = [] ignored_tokens = self.get_ignored_tokens() [beg_idx, end_idx] = self.get_ignored_tokens() batch_size = len(text_index) for batch_idx in range(batch_size): char_list = [] conf_list = [] for idx in range(len(text_index[batch_idx])): if text_index[batch_idx][idx] in ignored_tokens: continue if int(text_index[batch_idx][idx]) == int(end_idx): break if is_remove_duplicate: # only for predict if idx > 0 and text_index[batch_idx][idx - 1] == text_index[ batch_idx][idx]: continue char_list.append(self.character[int(text_index[batch_idx][ idx])]) if text_prob is not None: conf_list.append(text_prob[batch_idx][idx]) else: conf_list.append(1) text = ''.join(char_list) result_list.append((text, np.mean(conf_list).tolist())) return result_list def __call__(self, preds, label=None, *args, **kwargs): """ text = self.decode(text) if label is None: return text else: label = self.decode(label, is_remove_duplicate=False) return text, label """ if isinstance(preds, paddle.Tensor): preds = preds.numpy() preds_idx = preds.argmax(axis=2) preds_prob = preds.max(axis=2) text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False) if label is None: return text label = self.decode(label, is_remove_duplicate=False) return text, label def get_ignored_tokens(self): beg_idx = self.get_beg_end_flag_idx("beg") end_idx = self.get_beg_end_flag_idx("end") return [beg_idx, end_idx] def get_beg_end_flag_idx(self, beg_or_end): if beg_or_end == "beg": idx = np.array(self.dict[self.beg_str]) elif beg_or_end == "end": idx = np.array(self.dict[self.end_str]) else: assert False, "unsupport type %s in get_beg_end_flag_idx" \ % beg_or_end return idx class SEEDLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, **kwargs): super(SEEDLabelDecode, self).__init__(character_dict_path, use_space_char) def add_special_char(self, dict_character): self.padding_str = "padding" self.end_str = "eos" self.unknown = "unknown" dict_character = dict_character + [ self.end_str, self.padding_str, self.unknown ] return dict_character def get_ignored_tokens(self): end_idx = self.get_beg_end_flag_idx("eos") return [end_idx] def get_beg_end_flag_idx(self, beg_or_end): if beg_or_end == "sos": idx = np.array(self.dict[self.beg_str]) elif beg_or_end == "eos": idx = np.array(self.dict[self.end_str]) else: assert False, "unsupport type %s in get_beg_end_flag_idx" % beg_or_end return idx def decode(self, text_index, text_prob=None, is_remove_duplicate=False): """ convert text-index into text-label. """ result_list = [] [end_idx] = self.get_ignored_tokens() batch_size = len(text_index) for batch_idx in range(batch_size): char_list = [] conf_list = [] for idx in range(len(text_index[batch_idx])): if int(text_index[batch_idx][idx]) == int(end_idx): break if is_remove_duplicate: # only for predict if idx > 0 and text_index[batch_idx][idx - 1] == text_index[ batch_idx][idx]: continue char_list.append(self.character[int(text_index[batch_idx][ idx])]) if text_prob is not None: conf_list.append(text_prob[batch_idx][idx]) else: conf_list.append(1) text = ''.join(char_list) result_list.append((text, np.mean(conf_list).tolist())) return result_list def __call__(self, preds, label=None, *args, **kwargs): """ text = self.decode(text) if label is None: return text else: label = self.decode(label, is_remove_duplicate=False) return text, label """ preds_idx = preds["rec_pred"] if isinstance(preds_idx, paddle.Tensor): preds_idx = preds_idx.numpy() if "rec_pred_scores" in preds: preds_idx = preds["rec_pred"] preds_prob = preds["rec_pred_scores"] else: preds_idx = preds["rec_pred"].argmax(axis=2) preds_prob = preds["rec_pred"].max(axis=2) text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False) if label is None: return text label = self.decode(label, is_remove_duplicate=False) return text, label class SRNLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, **kwargs): super(SRNLabelDecode, self).__init__(character_dict_path, use_space_char) self.max_text_length = kwargs.get('max_text_length', 25) def __call__(self, preds, label=None, *args, **kwargs): pred = preds['predict'] char_num = len(self.character_str) + 2 if isinstance(pred, paddle.Tensor): pred = pred.numpy() pred = np.reshape(pred, [-1, char_num]) preds_idx = np.argmax(pred, axis=1) preds_prob = np.max(pred, axis=1) preds_idx = np.reshape(preds_idx, [-1, self.max_text_length]) preds_prob = np.reshape(preds_prob, [-1, self.max_text_length]) text = self.decode(preds_idx, preds_prob) if label is None: text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False) return text label = self.decode(label) return text, label def decode(self, text_index, text_prob=None, is_remove_duplicate=False): """ convert text-index into text-label. """ result_list = [] ignored_tokens = self.get_ignored_tokens() batch_size = len(text_index) for batch_idx in range(batch_size): char_list = [] conf_list = [] for idx in range(len(text_index[batch_idx])): if text_index[batch_idx][idx] in ignored_tokens: continue if is_remove_duplicate: # only for predict if idx > 0 and text_index[batch_idx][idx - 1] == text_index[ batch_idx][idx]: continue char_list.append(self.character[int(text_index[batch_idx][ idx])]) if text_prob is not None: conf_list.append(text_prob[batch_idx][idx]) else: conf_list.append(1) text = ''.join(char_list) result_list.append((text, np.mean(conf_list).tolist())) return result_list def add_special_char(self, dict_character): dict_character = dict_character + [self.beg_str, self.end_str] return dict_character def get_ignored_tokens(self): beg_idx = self.get_beg_end_flag_idx("beg") end_idx = self.get_beg_end_flag_idx("end") return [beg_idx, end_idx] def get_beg_end_flag_idx(self, beg_or_end): if beg_or_end == "beg": idx = np.array(self.dict[self.beg_str]) elif beg_or_end == "end": idx = np.array(self.dict[self.end_str]) else: assert False, "unsupport type %s in get_beg_end_flag_idx" \ % beg_or_end return idx class TableLabelDecode(object): """ """ def __init__(self, character_dict_path, **kwargs): list_character, list_elem = self.load_char_elem_dict( character_dict_path) list_character = self.add_special_char(list_character) list_elem = self.add_special_char(list_elem) self.dict_character = {} self.dict_idx_character = {} for i, char in enumerate(list_character): self.dict_idx_character[i] = char self.dict_character[char] = i self.dict_elem = {} self.dict_idx_elem = {} for i, elem in enumerate(list_elem): self.dict_idx_elem[i] = elem self.dict_elem[elem] = i def load_char_elem_dict(self, character_dict_path): list_character = [] list_elem = [] with open(character_dict_path, "rb") as fin: lines = fin.readlines() substr = lines[0].decode('utf-8').strip("\n").strip("\r\n").split( "\t") character_num = int(substr[0]) elem_num = int(substr[1]) for cno in range(1, 1 + character_num): character = lines[cno].decode('utf-8').strip("\n").strip("\r\n") list_character.append(character) for eno in range(1 + character_num, 1 + character_num + elem_num): elem = lines[eno].decode('utf-8').strip("\n").strip("\r\n") list_elem.append(elem) return list_character, list_elem def add_special_char(self, list_character): self.beg_str = "sos" self.end_str = "eos" list_character = [self.beg_str] + list_character + [self.end_str] return list_character def __call__(self, preds): structure_probs = preds['structure_probs'] loc_preds = preds['loc_preds'] if isinstance(structure_probs, paddle.Tensor): structure_probs = structure_probs.numpy() if isinstance(loc_preds, paddle.Tensor): loc_preds = loc_preds.numpy() structure_idx = structure_probs.argmax(axis=2) structure_probs = structure_probs.max(axis=2) structure_str, structure_pos, result_score_list, result_elem_idx_list = self.decode( structure_idx, structure_probs, 'elem') res_html_code_list = [] res_loc_list = [] batch_num = len(structure_str) for bno in range(batch_num): res_loc = [] for sno in range(len(structure_str[bno])): text = structure_str[bno][sno] if text in ['', ' 0 and tmp_elem_idx == end_idx: break if tmp_elem_idx in ignored_tokens: continue char_list.append(current_dict[tmp_elem_idx]) elem_pos_list.append(idx) score_list.append(structure_probs[batch_idx, idx]) elem_idx_list.append(tmp_elem_idx) result_list.append(char_list) result_pos_list.append(elem_pos_list) result_score_list.append(score_list) result_elem_idx_list.append(elem_idx_list) return result_list, result_pos_list, result_score_list, result_elem_idx_list def get_ignored_tokens(self, char_or_elem): beg_idx = self.get_beg_end_flag_idx("beg", char_or_elem) end_idx = self.get_beg_end_flag_idx("end", char_or_elem) return [beg_idx, end_idx] def get_beg_end_flag_idx(self, beg_or_end, char_or_elem): if char_or_elem == "char": if beg_or_end == "beg": idx = self.dict_character[self.beg_str] elif beg_or_end == "end": idx = self.dict_character[self.end_str] else: assert False, "Unsupport type %s in get_beg_end_flag_idx of char" \ % beg_or_end elif char_or_elem == "elem": if beg_or_end == "beg": idx = self.dict_elem[self.beg_str] elif beg_or_end == "end": idx = self.dict_elem[self.end_str] else: assert False, "Unsupport type %s in get_beg_end_flag_idx of elem" \ % beg_or_end else: assert False, "Unsupport type %s in char_or_elem" \ % char_or_elem return idx class SARLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, **kwargs): super(SARLabelDecode, self).__init__(character_dict_path, use_space_char) self.rm_symbol = kwargs.get('rm_symbol', False) def add_special_char(self, dict_character): beg_end_str = "" unknown_str = "" padding_str = "" dict_character = dict_character + [unknown_str] self.unknown_idx = len(dict_character) - 1 dict_character = dict_character + [beg_end_str] self.start_idx = len(dict_character) - 1 self.end_idx = len(dict_character) - 1 dict_character = dict_character + [padding_str] self.padding_idx = len(dict_character) - 1 return dict_character def decode(self, text_index, text_prob=None, is_remove_duplicate=False): """ convert text-index into text-label. """ result_list = [] ignored_tokens = self.get_ignored_tokens() batch_size = len(text_index) for batch_idx in range(batch_size): char_list = [] conf_list = [] for idx in range(len(text_index[batch_idx])): if text_index[batch_idx][idx] in ignored_tokens: continue if int(text_index[batch_idx][idx]) == int(self.end_idx): if text_prob is None and idx == 0: continue else: break if is_remove_duplicate: # only for predict if idx > 0 and text_index[batch_idx][idx - 1] == text_index[ batch_idx][idx]: continue char_list.append(self.character[int(text_index[batch_idx][ idx])]) if text_prob is not None: conf_list.append(text_prob[batch_idx][idx]) else: conf_list.append(1) text = ''.join(char_list) if self.rm_symbol: comp = re.compile('[^A-Z^a-z^0-9^\u4e00-\u9fa5]') text = text.lower() text = comp.sub('', text) result_list.append((text, np.mean(conf_list).tolist())) return result_list def __call__(self, preds, label=None, *args, **kwargs): if isinstance(preds, paddle.Tensor): preds = preds.numpy() preds_idx = preds.argmax(axis=2) preds_prob = preds.max(axis=2) text = self.decode(preds_idx, preds_prob, is_remove_duplicate=False) if label is None: return text label = self.decode(label, is_remove_duplicate=False) return text, label def get_ignored_tokens(self): return [self.padding_idx] class DistillationSARLabelDecode(SARLabelDecode): """ Convert Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, model_name=["student"], key=None, multi_head=False, **kwargs): super(DistillationSARLabelDecode, self).__init__(character_dict_path, use_space_char) if not isinstance(model_name, list): model_name = [model_name] self.model_name = model_name self.key = key self.multi_head = multi_head def __call__(self, preds, label=None, *args, **kwargs): output = dict() for name in self.model_name: pred = preds[name] if self.key is not None: pred = pred[self.key] if self.multi_head and isinstance(pred, dict): pred = pred['sar'] output[name] = super().__call__(pred, label=label, *args, **kwargs) return output class PRENLabelDecode(BaseRecLabelDecode): """ Convert between text-label and text-index """ def __init__(self, character_dict_path=None, use_space_char=False, **kwargs): super(PRENLabelDecode, self).__init__(character_dict_path, use_space_char) def add_special_char(self, dict_character): padding_str = '' # 0 end_str = '' # 1 unknown_str = '' # 2 dict_character = [padding_str, end_str, unknown_str] + dict_character self.padding_idx = 0 self.end_idx = 1 self.unknown_idx = 2 return dict_character def decode(self, text_index, text_prob=None): """ convert text-index into text-label. """ result_list = [] batch_size = len(text_index) for batch_idx in range(batch_size): char_list = [] conf_list = [] for idx in range(len(text_index[batch_idx])): if text_index[batch_idx][idx] == self.end_idx: break if text_index[batch_idx][idx] in \ [self.padding_idx, self.unknown_idx]: continue char_list.append(self.character[int(text_index[batch_idx][ idx])]) if text_prob is not None: conf_list.append(text_prob[batch_idx][idx]) else: conf_list.append(1) text = ''.join(char_list) if len(text) > 0: result_list.append((text, np.mean(conf_list).tolist())) else: # here confidence of empty recog result is 1 result_list.append(('', 1)) return result_list def __call__(self, preds, label=None, *args, **kwargs): preds = preds.numpy() preds_idx = preds.argmax(axis=2) preds_prob = preds.max(axis=2) text = self.decode(preds_idx, preds_prob) if label is None: return text label = self.decode(label) return text, label