Merge pull request #204 from alibaba-damo-academy/dev_wjm
Dev wjm
| New file |
| | |
| | | import math |
| | | import numpy as np |
| | | import torch |
| | | import torch.nn.functional as F |
| | | from torch import nn |
| | | |
| | | |
| | | class MultiHeadSelfAttention(nn.Module): |
| | | def __init__(self, n_units, h=8, dropout_rate=0.1): |
| | | super(MultiHeadSelfAttention, self).__init__() |
| | | self.linearQ = nn.Linear(n_units, n_units) |
| | | self.linearK = nn.Linear(n_units, n_units) |
| | | self.linearV = nn.Linear(n_units, n_units) |
| | | self.linearO = nn.Linear(n_units, n_units) |
| | | self.d_k = n_units // h |
| | | self.h = h |
| | | self.dropout = nn.Dropout(dropout_rate) |
| | | |
| | | def __call__(self, x, batch_size, x_mask): |
| | | q = self.linearQ(x).view(batch_size, -1, self.h, self.d_k) |
| | | k = self.linearK(x).view(batch_size, -1, self.h, self.d_k) |
| | | v = self.linearV(x).view(batch_size, -1, self.h, self.d_k) |
| | | scores = torch.matmul( |
| | | q.permute(0, 2, 1, 3), k.permute(0, 2, 3, 1)) / math.sqrt(self.d_k) |
| | | if x_mask is not None: |
| | | x_mask = x_mask.unsqueeze(1) |
| | | scores = scores.masked_fill(x_mask == 0, -1e9) |
| | | self.att = F.softmax(scores, dim=3) |
| | | p_att = self.dropout(self.att) |
| | | x = torch.matmul(p_att, v.permute(0, 2, 1, 3)) |
| | | x = x.permute(0, 2, 1, 3).contiguous().view(-1, self.h * self.d_k) |
| | | return self.linearO(x) |
| | | |
| | | |
| | | class PositionwiseFeedForward(nn.Module): |
| | | def __init__(self, n_units, d_units, dropout_rate): |
| | | super(PositionwiseFeedForward, self).__init__() |
| | | self.linear1 = nn.Linear(n_units, d_units) |
| | | self.linear2 = nn.Linear(d_units, n_units) |
| | | self.dropout = nn.Dropout(dropout_rate) |
| | | |
| | | def __call__(self, x): |
| | | return self.linear2(self.dropout(F.relu(self.linear1(x)))) |
| | | |
| | | |
| | | class PositionalEncoding(torch.nn.Module): |
| | | def __init__(self, d_model, dropout_rate, max_len=5000, reverse=False): |
| | | super(PositionalEncoding, self).__init__() |
| | | self.d_model = d_model |
| | | self.reverse = reverse |
| | | self.xscale = math.sqrt(self.d_model) |
| | | self.dropout = torch.nn.Dropout(p=dropout_rate) |
| | | self.pe = None |
| | | self.extend_pe(torch.tensor(0.0).expand(1, max_len)) |
| | | |
| | | def extend_pe(self, x): |
| | | if self.pe is not None: |
| | | if self.pe.size(1) >= x.size(1): |
| | | if self.pe.dtype != x.dtype or self.pe.device != x.device: |
| | | self.pe = self.pe.to(dtype=x.dtype, device=x.device) |
| | | return |
| | | pe = torch.zeros(x.size(1), self.d_model) |
| | | if self.reverse: |
| | | position = torch.arange( |
| | | x.size(1) - 1, -1, -1.0, dtype=torch.float32 |
| | | ).unsqueeze(1) |
| | | else: |
| | | position = torch.arange(0, x.size(1), dtype=torch.float32).unsqueeze(1) |
| | | div_term = torch.exp( |
| | | torch.arange(0, self.d_model, 2, dtype=torch.float32) |
| | | * -(math.log(10000.0) / self.d_model) |
| | | ) |
| | | pe[:, 0::2] = torch.sin(position * div_term) |
| | | pe[:, 1::2] = torch.cos(position * div_term) |
| | | pe = pe.unsqueeze(0) |
| | | self.pe = pe.to(device=x.device, dtype=x.dtype) |
| | | |
| | | def forward(self, x: torch.Tensor): |
| | | self.extend_pe(x) |
| | | x = x * self.xscale + self.pe[:, : x.size(1)] |
| | | return self.dropout(x) |
| | | |
| | | |
| | | class TransformerEncoder(nn.Module): |
| | | def __init__(self, idim, n_layers, n_units, |
| | | e_units=2048, h=8, dropout_rate=0.1, use_pos_emb=False): |
| | | super(TransformerEncoder, self).__init__() |
| | | self.lnorm_in = nn.LayerNorm(n_units) |
| | | self.n_layers = n_layers |
| | | self.dropout = nn.Dropout(dropout_rate) |
| | | for i in range(n_layers): |
| | | setattr(self, '{}{:d}'.format("lnorm1_", i), |
| | | nn.LayerNorm(n_units)) |
| | | setattr(self, '{}{:d}'.format("self_att_", i), |
| | | MultiHeadSelfAttention(n_units, h)) |
| | | setattr(self, '{}{:d}'.format("lnorm2_", i), |
| | | nn.LayerNorm(n_units)) |
| | | setattr(self, '{}{:d}'.format("ff_", i), |
| | | PositionwiseFeedForward(n_units, e_units, dropout_rate)) |
| | | self.lnorm_out = nn.LayerNorm(n_units) |
| | | if use_pos_emb: |
| | | self.pos_enc = torch.nn.Sequential( |
| | | torch.nn.Linear(idim, n_units), |
| | | torch.nn.LayerNorm(n_units), |
| | | torch.nn.Dropout(dropout_rate), |
| | | torch.nn.ReLU(), |
| | | PositionalEncoding(n_units, dropout_rate), |
| | | ) |
| | | else: |
| | | self.linear_in = nn.Linear(idim, n_units) |
| | | self.pos_enc = None |
| | | |
| | | def __call__(self, x, x_mask=None): |
| | | BT_size = x.shape[0] * x.shape[1] |
| | | if self.pos_enc is not None: |
| | | e = self.pos_enc(x) |
| | | e = e.view(BT_size, -1) |
| | | else: |
| | | e = self.linear_in(x.reshape(BT_size, -1)) |
| | | for i in range(self.n_layers): |
| | | e = getattr(self, '{}{:d}'.format("lnorm1_", i))(e) |
| | | s = getattr(self, '{}{:d}'.format("self_att_", i))(e, x.shape[0], x_mask) |
| | | e = e + self.dropout(s) |
| | | e = getattr(self, '{}{:d}'.format("lnorm2_", i))(e) |
| | | s = getattr(self, '{}{:d}'.format("ff_", i))(e) |
| | | e = e + self.dropout(s) |
| | | return self.lnorm_out(e) |
| New file |
| | |
| | | import numpy as np |
| | | import torch |
| | | import torch.nn.functional as F |
| | | from torch import nn |
| | | |
| | | |
| | | class EncoderDecoderAttractor(nn.Module): |
| | | |
| | | def __init__(self, n_units, encoder_dropout=0.1, decoder_dropout=0.1): |
| | | super(EncoderDecoderAttractor, self).__init__() |
| | | self.enc0_dropout = nn.Dropout(encoder_dropout) |
| | | self.encoder = nn.LSTM(n_units, n_units, 1, batch_first=True, dropout=encoder_dropout) |
| | | self.dec0_dropout = nn.Dropout(decoder_dropout) |
| | | self.decoder = nn.LSTM(n_units, n_units, 1, batch_first=True, dropout=decoder_dropout) |
| | | self.counter = nn.Linear(n_units, 1) |
| | | self.n_units = n_units |
| | | |
| | | def forward_core(self, xs, zeros): |
| | | ilens = torch.from_numpy(np.array([x.shape[0] for x in xs])).to(torch.float32).to(xs[0].device) |
| | | xs = [self.enc0_dropout(x) for x in xs] |
| | | xs = nn.utils.rnn.pad_sequence(xs, batch_first=True, padding_value=-1) |
| | | xs = nn.utils.rnn.pack_padded_sequence(xs, ilens, batch_first=True, enforce_sorted=False) |
| | | _, (hx, cx) = self.encoder(xs) |
| | | zlens = torch.from_numpy(np.array([z.shape[0] for z in zeros])).to(torch.float32).to(zeros[0].device) |
| | | max_zlen = torch.max(zlens).to(torch.int).item() |
| | | zeros = [self.enc0_dropout(z) for z in zeros] |
| | | zeros = nn.utils.rnn.pad_sequence(zeros, batch_first=True, padding_value=-1) |
| | | zeros = nn.utils.rnn.pack_padded_sequence(zeros, zlens, batch_first=True, enforce_sorted=False) |
| | | attractors, (_, _) = self.decoder(zeros, (hx, cx)) |
| | | attractors = nn.utils.rnn.pad_packed_sequence(attractors, batch_first=True, padding_value=-1, |
| | | total_length=max_zlen)[0] |
| | | attractors = [att[:zlens[i].to(torch.int).item()] for i, att in enumerate(attractors)] |
| | | return attractors |
| | | |
| | | def forward(self, xs, n_speakers): |
| | | zeros = [torch.zeros(n_spk + 1, self.n_units).to(torch.float32).to(xs[0].device) for n_spk in n_speakers] |
| | | attractors = self.forward_core(xs, zeros) |
| | | labels = torch.cat([torch.from_numpy(np.array([[1] * n_spk + [0]], np.float32)) for n_spk in n_speakers], dim=1) |
| | | labels = labels.to(xs[0].device) |
| | | logit = torch.cat([self.counter(att).view(-1, n_spk + 1) for att, n_spk in zip(attractors, n_speakers)], dim=1) |
| | | loss = F.binary_cross_entropy(torch.sigmoid(logit), labels) |
| | | |
| | | attractors = [att[slice(0, att.shape[0] - 1)] for att in attractors] |
| | | return loss, attractors |
| | | |
| | | def estimate(self, xs, max_n_speakers=15): |
| | | zeros = [torch.zeros(max_n_speakers, self.n_units).to(torch.float32).to(xs[0].device) for _ in xs] |
| | | attractors = self.forward_core(xs, zeros) |
| | | probs = [torch.sigmoid(torch.flatten(self.counter(att))) for att in attractors] |
| | | return attractors, probs |
| New file |
| | |
| | | import numpy as np |
| | | import torch |
| | | import torch.nn.functional as F |
| | | from itertools import permutations |
| | | from torch import nn |
| | | |
| | | |
| | | def standard_loss(ys, ts, label_delay=0): |
| | | losses = [F.binary_cross_entropy(torch.sigmoid(y), t) * len(y) for y, t in zip(ys, ts)] |
| | | loss = torch.sum(torch.stack(losses)) |
| | | n_frames = torch.from_numpy(np.array(np.sum([t.shape[0] for t in ts]))).to(torch.float32).to(ys[0].device) |
| | | loss = loss / n_frames |
| | | return loss |
| | | |
| | | |
| | | def batch_pit_n_speaker_loss(ys, ts, n_speakers_list): |
| | | max_n_speakers = ts[0].shape[1] |
| | | olens = [y.shape[0] for y in ys] |
| | | ys = nn.utils.rnn.pad_sequence(ys, batch_first=True, padding_value=-1) |
| | | ys_mask = [torch.ones(olen).to(ys.device) for olen in olens] |
| | | ys_mask = torch.nn.utils.rnn.pad_sequence(ys_mask, batch_first=True, padding_value=0).unsqueeze(-1) |
| | | |
| | | losses = [] |
| | | for shift in range(max_n_speakers): |
| | | ts_roll = [torch.roll(t, -shift, dims=1) for t in ts] |
| | | ts_roll = nn.utils.rnn.pad_sequence(ts_roll, batch_first=True, padding_value=-1) |
| | | loss = F.binary_cross_entropy(torch.sigmoid(ys), ts_roll, reduction='none') |
| | | if ys_mask is not None: |
| | | loss = loss * ys_mask |
| | | loss = torch.sum(loss, dim=1) |
| | | losses.append(loss) |
| | | losses = torch.stack(losses, dim=2) |
| | | |
| | | perms = np.array(list(permutations(range(max_n_speakers)))).astype(np.float32) |
| | | perms = torch.from_numpy(perms).to(losses.device) |
| | | y_ind = torch.arange(max_n_speakers, dtype=torch.float32, device=losses.device) |
| | | t_inds = torch.fmod(perms - y_ind, max_n_speakers).to(torch.long) |
| | | |
| | | losses_perm = [] |
| | | for t_ind in t_inds: |
| | | losses_perm.append( |
| | | torch.mean(losses[:, y_ind.to(torch.long), t_ind], dim=1)) |
| | | losses_perm = torch.stack(losses_perm, dim=1) |
| | | |
| | | def select_perm_indices(num, max_num): |
| | | perms = list(permutations(range(max_num))) |
| | | sub_perms = list(permutations(range(num))) |
| | | return [ |
| | | [x[:num] for x in perms].index(perm) |
| | | for perm in sub_perms] |
| | | |
| | | masks = torch.full_like(losses_perm, device=losses.device, fill_value=float('inf')) |
| | | for i, t in enumerate(ts): |
| | | n_speakers = n_speakers_list[i] |
| | | indices = select_perm_indices(n_speakers, max_n_speakers) |
| | | masks[i, indices] = 0 |
| | | losses_perm += masks |
| | | |
| | | min_loss = torch.sum(torch.min(losses_perm, dim=1)[0]) |
| | | n_frames = torch.from_numpy(np.array(np.sum([t.shape[0] for t in ts]))).to(losses.device) |
| | | min_loss = min_loss / n_frames |
| | | |
| | | min_indices = torch.argmin(losses_perm, dim=1) |
| | | labels_perm = [t[:, perms[idx].to(torch.long)] for t, idx in zip(ts, min_indices)] |
| | | labels_perm = [t[:, :n_speakers] for t, n_speakers in zip(labels_perm, n_speakers_list)] |
| | | |
| | | return min_loss, labels_perm |
| New file |
| | |
| | | import numpy as np |
| | | import torch |
| | | import torch.multiprocessing |
| | | import torch.nn.functional as F |
| | | from itertools import combinations |
| | | from itertools import permutations |
| | | |
| | | |
| | | def generate_mapping_dict(max_speaker_num=6, max_olp_speaker_num=3): |
| | | all_kinds = [] |
| | | all_kinds.append(0) |
| | | for i in range(max_olp_speaker_num): |
| | | selected_num = i + 1 |
| | | coms = np.array(list(combinations(np.arange(max_speaker_num), selected_num))) |
| | | for com in coms: |
| | | tmp = np.zeros(max_speaker_num) |
| | | tmp[com] = 1 |
| | | item = int(raw_dec_trans(tmp.reshape(1, -1), max_speaker_num)[0]) |
| | | all_kinds.append(item) |
| | | all_kinds_order = sorted(all_kinds) |
| | | |
| | | mapping_dict = {} |
| | | mapping_dict['dec2label'] = {} |
| | | mapping_dict['label2dec'] = {} |
| | | for i in range(len(all_kinds_order)): |
| | | dec = all_kinds_order[i] |
| | | mapping_dict['dec2label'][dec] = i |
| | | mapping_dict['label2dec'][i] = dec |
| | | oov_id = len(all_kinds_order) |
| | | mapping_dict['oov'] = oov_id |
| | | return mapping_dict |
| | | |
| | | |
| | | def raw_dec_trans(x, max_speaker_num): |
| | | num_list = [] |
| | | for i in range(max_speaker_num): |
| | | num_list.append(x[:, i]) |
| | | base = 1 |
| | | T = x.shape[0] |
| | | res = np.zeros((T)) |
| | | for num in num_list: |
| | | res += num * base |
| | | base = base * 2 |
| | | return res |
| | | |
| | | |
| | | def mapping_func(num, mapping_dict): |
| | | if num in mapping_dict['dec2label'].keys(): |
| | | label = mapping_dict['dec2label'][num] |
| | | else: |
| | | label = mapping_dict['oov'] |
| | | return label |
| | | |
| | | |
| | | def dec_trans(x, max_speaker_num, mapping_dict): |
| | | num_list = [] |
| | | for i in range(max_speaker_num): |
| | | num_list.append(x[:, i]) |
| | | base = 1 |
| | | T = x.shape[0] |
| | | res = np.zeros((T)) |
| | | for num in num_list: |
| | | res += num * base |
| | | base = base * 2 |
| | | res = np.array([mapping_func(i, mapping_dict) for i in res]) |
| | | return res |
| | | |
| | | |
| | | def create_powerlabel(label, mapping_dict, max_speaker_num=6, max_olp_speaker_num=3): |
| | | T, C = label.shape |
| | | padding_label = np.zeros((T, max_speaker_num)) |
| | | padding_label[:, :C] = label |
| | | out_label = dec_trans(padding_label, max_speaker_num, mapping_dict) |
| | | out_label = torch.from_numpy(out_label) |
| | | return out_label |
| | | |
| | | |
| | | def generate_perm_pse(label, n_speaker, mapping_dict, max_speaker_num, max_olp_speaker_num=3): |
| | | perms = np.array(list(permutations(range(n_speaker)))).astype(np.float32) |
| | | perms = torch.from_numpy(perms).to(label.device).to(torch.int64) |
| | | perm_labels = [label[:, perm] for perm in perms] |
| | | perm_pse_labels = [create_powerlabel(perm_label.cpu().numpy(), mapping_dict, max_speaker_num). |
| | | to(perm_label.device, non_blocking=True) for perm_label in perm_labels] |
| | | return perm_labels, perm_pse_labels |
| | | |
| | | |
| | | def generate_min_pse(label, n_speaker, mapping_dict, max_speaker_num, pse_logit, max_olp_speaker_num=3): |
| | | perm_labels, perm_pse_labels = generate_perm_pse(label, n_speaker, mapping_dict, max_speaker_num, |
| | | max_olp_speaker_num=max_olp_speaker_num) |
| | | losses = [F.cross_entropy(input=pse_logit, target=perm_pse_label.to(torch.long)) * len(pse_logit) |
| | | for perm_pse_label in perm_pse_labels] |
| | | loss = torch.stack(losses) |
| | | min_index = torch.argmin(loss) |
| | | selected_perm_label, selected_pse_label = perm_labels[min_index], perm_pse_labels[min_index] |
| | | return selected_perm_label, selected_pse_label |
| 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 |