| New file |
| | |
| | | import copy |
| | | import numpy as np |
| | | import time |
| | | import torch |
| | | from eend.utils.power import create_powerlabel |
| | | from itertools import combinations |
| | | |
| | | metrics = [ |
| | | ('diarization_error', 'speaker_scored', 'DER'), |
| | | ('speech_miss', 'speech_scored', 'SAD_MR'), |
| | | ('speech_falarm', 'speech_scored', 'SAD_FR'), |
| | | ('speaker_miss', 'speaker_scored', 'MI'), |
| | | ('speaker_falarm', 'speaker_scored', 'FA'), |
| | | ('speaker_error', 'speaker_scored', 'CF'), |
| | | ('correct', 'frames', 'accuracy') |
| | | ] |
| | | |
| | | |
| | | def recover_prediction(y, n_speaker): |
| | | if n_speaker <= 1: |
| | | return y |
| | | elif n_speaker == 2: |
| | | com_index = torch.from_numpy( |
| | | np.array(list(combinations(np.arange(n_speaker), 2)))).to( |
| | | y.dtype) |
| | | num_coms = com_index.shape[0] |
| | | y_single = y[:, :-num_coms] |
| | | y_olp = y[:, -num_coms:] |
| | | olp_map_index = torch.where(y_olp > 0.5) |
| | | olp_map_index = torch.stack(olp_map_index, dim=1) |
| | | com_map_index = com_index[olp_map_index[:, -1]] |
| | | speaker_map_index = torch.from_numpy(np.array(com_map_index)).view(-1).to(torch.int64) |
| | | frame_map_index = olp_map_index[:, 0][:, None].repeat([1, 2]).view(-1).to( |
| | | torch.int64) |
| | | y_single[frame_map_index] = 0 |
| | | y_single[frame_map_index, speaker_map_index] = 1 |
| | | return y_single |
| | | else: |
| | | olp2_com_index = torch.from_numpy(np.array(list(combinations(np.arange(n_speaker), 2)))).to(y.dtype) |
| | | olp2_num_coms = olp2_com_index.shape[0] |
| | | olp3_com_index = torch.from_numpy(np.array(list(combinations(np.arange(n_speaker), 3)))).to(y.dtype) |
| | | olp3_num_coms = olp3_com_index.shape[0] |
| | | y_single = y[:, :n_speaker] |
| | | y_olp2 = y[:, n_speaker:n_speaker + olp2_num_coms] |
| | | y_olp3 = y[:, -olp3_num_coms:] |
| | | |
| | | olp3_map_index = torch.where(y_olp3 > 0.5) |
| | | olp3_map_index = torch.stack(olp3_map_index, dim=1) |
| | | olp3_com_map_index = olp3_com_index[olp3_map_index[:, -1]] |
| | | olp3_speaker_map_index = torch.from_numpy(np.array(olp3_com_map_index)).view(-1).to(torch.int64) |
| | | olp3_frame_map_index = olp3_map_index[:, 0][:, None].repeat([1, 3]).view(-1).to(torch.int64) |
| | | y_single[olp3_frame_map_index] = 0 |
| | | y_single[olp3_frame_map_index, olp3_speaker_map_index] = 1 |
| | | y_olp2[olp3_frame_map_index] = 0 |
| | | |
| | | olp2_map_index = torch.where(y_olp2 > 0.5) |
| | | olp2_map_index = torch.stack(olp2_map_index, dim=1) |
| | | olp2_com_map_index = olp2_com_index[olp2_map_index[:, -1]] |
| | | olp2_speaker_map_index = torch.from_numpy(np.array(olp2_com_map_index)).view(-1).to(torch.int64) |
| | | olp2_frame_map_index = olp2_map_index[:, 0][:, None].repeat([1, 2]).view(-1).to(torch.int64) |
| | | y_single[olp2_frame_map_index] = 0 |
| | | y_single[olp2_frame_map_index, olp2_speaker_map_index] = 1 |
| | | return y_single |
| | | |
| | | |
| | | class PowerReporter(): |
| | | def __init__(self, valid_data_loader, mapping_dict, max_n_speaker): |
| | | valid_data_loader_cp = copy.deepcopy(valid_data_loader) |
| | | self.valid_data_loader = valid_data_loader_cp |
| | | del valid_data_loader |
| | | self.mapping_dict = mapping_dict |
| | | self.max_n_speaker = max_n_speaker |
| | | |
| | | def report(self, model, eidx, device): |
| | | self.report_val(model, eidx, device) |
| | | |
| | | def report_val(self, model, eidx, device): |
| | | model.eval() |
| | | ud_valid_start = time.time() |
| | | valid_res, valid_loss, stats_keys, vad_valid_accuracy = self.report_core(model, self.valid_data_loader, device) |
| | | |
| | | # Epoch Display |
| | | valid_der = valid_res['diarization_error'] / valid_res['speaker_scored'] |
| | | valid_accuracy = valid_res['correct'].to(torch.float32) / valid_res['frames'] * 100 |
| | | vad_valid_accuracy = vad_valid_accuracy * 100 |
| | | print('Epoch ', eidx + 1, 'Valid Loss ', valid_loss, 'Valid_DER %.5f' % valid_der, |
| | | 'Valid_Accuracy %.5f%% ' % valid_accuracy, 'VAD_Valid_Accuracy %.5f%% ' % vad_valid_accuracy) |
| | | ud_valid = (time.time() - ud_valid_start) / 60. |
| | | print('Valid cost time ... ', ud_valid) |
| | | |
| | | def inv_mapping_func(self, label, mapping_dict): |
| | | if not isinstance(label, int): |
| | | label = int(label) |
| | | if label in mapping_dict['label2dec'].keys(): |
| | | num = mapping_dict['label2dec'][label] |
| | | else: |
| | | num = -1 |
| | | return num |
| | | |
| | | def report_core(self, model, data_loader, device): |
| | | res = {} |
| | | for item in metrics: |
| | | res[item[0]] = 0. |
| | | res[item[1]] = 0. |
| | | with torch.no_grad(): |
| | | loss_s = 0. |
| | | uidx = 0 |
| | | for xs, ts, orders in data_loader: |
| | | xs = [x.to(device) for x in xs] |
| | | ts = [t.to(device) for t in ts] |
| | | orders = [o.to(device) for o in orders] |
| | | loss, pit_loss, mpit_loss, att_loss, ys, logits, labels, attractors = model(xs, ts, orders) |
| | | loss_s += loss.item() |
| | | uidx += 1 |
| | | |
| | | for logit, t, att in zip(logits, labels, attractors): |
| | | pred = torch.argmax(torch.softmax(logit, dim=-1), dim=-1) # (T, ) |
| | | oov_index = torch.where(pred == self.mapping_dict['oov'])[0] |
| | | for i in oov_index: |
| | | if i > 0: |
| | | pred[i] = pred[i - 1] |
| | | else: |
| | | pred[i] = 0 |
| | | pred = [self.inv_mapping_func(i, self.mapping_dict) for i in pred] |
| | | decisions = [bin(num)[2:].zfill(self.max_n_speaker)[::-1] for num in pred] |
| | | decisions = torch.from_numpy( |
| | | np.stack([np.array([int(i) for i in dec]) for dec in decisions], axis=0)).to(att.device).to( |
| | | torch.float32) |
| | | decisions = decisions[:, :att.shape[0]] |
| | | |
| | | stats = self.calc_diarization_error(decisions, t) |
| | | res['speaker_scored'] += stats['speaker_scored'] |
| | | res['speech_scored'] += stats['speech_scored'] |
| | | res['frames'] += stats['frames'] |
| | | for item in metrics: |
| | | res[item[0]] += stats[item[0]] |
| | | loss_s /= uidx |
| | | vad_acc = 0 |
| | | |
| | | return res, loss_s, stats.keys(), vad_acc |
| | | |
| | | def calc_diarization_error(self, decisions, label, label_delay=0): |
| | | label = label[:len(label) - label_delay, ...] |
| | | n_ref = torch.sum(label, dim=-1) |
| | | n_sys = torch.sum(decisions, dim=-1) |
| | | res = {} |
| | | res['speech_scored'] = torch.sum(n_ref > 0) |
| | | res['speech_miss'] = torch.sum((n_ref > 0) & (n_sys == 0)) |
| | | res['speech_falarm'] = torch.sum((n_ref == 0) & (n_sys > 0)) |
| | | res['speaker_scored'] = torch.sum(n_ref) |
| | | res['speaker_miss'] = torch.sum(torch.max(n_ref - n_sys, torch.zeros_like(n_ref))) |
| | | res['speaker_falarm'] = torch.sum(torch.max(n_sys - n_ref, torch.zeros_like(n_ref))) |
| | | n_map = torch.sum(((label == 1) & (decisions == 1)), dim=-1).to(torch.float32) |
| | | res['speaker_error'] = torch.sum(torch.min(n_ref, n_sys) - n_map) |
| | | res['correct'] = torch.sum(label == decisions) / label.shape[1] |
| | | res['diarization_error'] = ( |
| | | res['speaker_miss'] + res['speaker_falarm'] + res['speaker_error']) |
| | | res['frames'] = len(label) |
| | | return res |