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| # Copyright (c) 2023, NVIDIA CORPORATION. All rights reserved. | |
| # | |
| # 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 torch | |
| V_NEGATIVE_NUM = -3.4e38 | |
| def viterbi_decoding(log_probs_batch, y_batch, T_batch, U_batch, viterbi_device): | |
| """ | |
| Do Viterbi decoding with an efficient algorithm (the only for-loop in the 'forward pass' is over the time dimension). | |
| Args: | |
| log_probs_batch: tensor of shape (B, T_max, V). The parts of log_probs_batch which are 'padding' are filled | |
| with 'V_NEGATIVE_NUM' - a large negative number which represents a very low probability. | |
| y_batch: tensor of shape (B, U_max) - contains token IDs including blanks in every other position. The parts of | |
| y_batch which are padding are filled with the number 'V'. V = the number of tokens in the vocabulary + 1 for | |
| the blank token. | |
| T_batch: tensor of shape (B, 1) - contains the durations of the log_probs_batch (so we can ignore the | |
| parts of log_probs_batch which are padding) | |
| U_batch: tensor of shape (B, 1) - contains the lengths of y_batch (so we can ignore the parts of y_batch | |
| which are padding). | |
| viterbi_device: the torch device on which Viterbi decoding will be done. | |
| Returns: | |
| alignments_batch: list of lists containing locations for the tokens we align to at each timestep. | |
| Looks like: [[0, 0, 1, 2, 2, 3, 3, ..., ], ..., [0, 1, 2, 2, 2, 3, 4, ....]]. | |
| Each list inside alignments_batch is of length T_batch[location of utt in batch]. | |
| """ | |
| B, T_max, _ = log_probs_batch.shape | |
| U_max = y_batch.shape[1] | |
| # transfer all tensors to viterbi_device | |
| log_probs_batch = log_probs_batch.to(viterbi_device) | |
| y_batch = y_batch.to(viterbi_device) | |
| T_batch = T_batch.to(viterbi_device) | |
| U_batch = U_batch.to(viterbi_device) | |
| # make tensor that we will put at timesteps beyond the duration of the audio | |
| padding_for_log_probs = V_NEGATIVE_NUM * torch.ones((B, T_max, 1), device=viterbi_device) | |
| # make log_probs_padded tensor of shape (B, T_max, V +1 ) where all of | |
| # log_probs_padded[:,:,-1] is the 'V_NEGATIVE_NUM' | |
| log_probs_padded = torch.cat((log_probs_batch, padding_for_log_probs), dim=2) | |
| # initialize v_prev - tensor of previous timestep's viterbi probabilies, of shape (B, U_max) | |
| v_prev = V_NEGATIVE_NUM * torch.ones((B, U_max), device=viterbi_device) | |
| v_prev[:, :2] = torch.gather(input=log_probs_padded[:, 0, :], dim=1, index=y_batch[:, :2]) | |
| # initialize backpointers_rel - which contains values like 0 to indicate the backpointer is to the same u index, | |
| # 1 to indicate the backpointer pointing to the u-1 index and 2 to indicate the backpointer is pointing to the u-2 index | |
| backpointers_rel = -99 * torch.ones((B, T_max, U_max), dtype=torch.int8, device=viterbi_device) | |
| # Make a letter_repetition_mask the same shape as y_batch | |
| # the letter_repetition_mask will have 'True' where the token (including blanks) is the same | |
| # as the token two places before it in the ground truth (and 'False everywhere else). | |
| # We will use letter_repetition_mask to determine whether the Viterbi algorithm needs to look two tokens back or | |
| # three tokens back | |
| y_shifted_left = torch.roll(y_batch, shifts=2, dims=1) | |
| letter_repetition_mask = y_batch - y_shifted_left | |
| letter_repetition_mask[:, :2] = 1 # make sure dont apply mask to first 2 tokens | |
| letter_repetition_mask = letter_repetition_mask == 0 | |
| for t in range(1, T_max): | |
| # e_current is a tensor of shape (B, U_max) of the log probs of every possible token at the current timestep | |
| e_current = torch.gather(input=log_probs_padded[:, t, :], dim=1, index=y_batch) | |
| # apply a mask to e_current to cope with the fact that we do not keep the whole v_matrix and continue | |
| # calculating viterbi probabilities during some 'padding' timesteps | |
| t_exceeded_T_batch = t >= T_batch | |
| U_can_be_final = torch.logical_or( | |
| torch.arange(0, U_max, device=viterbi_device).unsqueeze(0) == (U_batch.unsqueeze(1) - 0), | |
| torch.arange(0, U_max, device=viterbi_device).unsqueeze(0) == (U_batch.unsqueeze(1) - 1), | |
| ) | |
| mask = torch.logical_not(torch.logical_and(t_exceeded_T_batch.unsqueeze(1), U_can_be_final,)).long() | |
| e_current = e_current * mask | |
| # v_prev_shifted is a tensor of shape (B, U_max) of the viterbi probabilities 1 timestep back and 1 token position back | |
| v_prev_shifted = torch.roll(v_prev, shifts=1, dims=1) | |
| # by doing a roll shift of size 1, we have brought the viterbi probability in the final token position to the | |
| # first token position - let's overcome this by 'zeroing out' the probabilities in the firest token position | |
| v_prev_shifted[:, 0] = V_NEGATIVE_NUM | |
| # v_prev_shifted2 is a tensor of shape (B, U_max) of the viterbi probabilities 1 timestep back and 2 token position back | |
| v_prev_shifted2 = torch.roll(v_prev, shifts=2, dims=1) | |
| v_prev_shifted2[:, :2] = V_NEGATIVE_NUM # zero out as we did for v_prev_shifted | |
| # use our letter_repetition_mask to remove the connections between 2 blanks (so we don't skip over a letter) | |
| # and to remove the connections between 2 consective letters (so we don't skip over a blank) | |
| v_prev_shifted2.masked_fill_(letter_repetition_mask, V_NEGATIVE_NUM) | |
| # we need this v_prev_dup tensor so we can calculated the viterbi probability of every possible | |
| # token position simultaneously | |
| v_prev_dup = torch.cat( | |
| (v_prev.unsqueeze(2), v_prev_shifted.unsqueeze(2), v_prev_shifted2.unsqueeze(2),), dim=2, | |
| ) | |
| # candidates_v_current are our candidate viterbi probabilities for every token position, from which | |
| # we will pick the max and record the argmax | |
| candidates_v_current = v_prev_dup + e_current.unsqueeze(2) | |
| # we straight away save results in v_prev instead of v_current, so that the variable v_prev will be ready for the | |
| # next iteration of the for-loop | |
| v_prev, bp_relative = torch.max(candidates_v_current, dim=2) | |
| backpointers_rel[:, t, :] = bp_relative | |
| # trace backpointers | |
| alignments_batch = [] | |
| for b in range(B): | |
| T_b = int(T_batch[b]) | |
| U_b = int(U_batch[b]) | |
| if U_b == 1: # i.e. we put only a blank token in the reference text because the reference text is empty | |
| current_u = 0 # set initial u to 0 and let the rest of the code block run as usual | |
| else: | |
| current_u = int(torch.argmax(v_prev[b, U_b - 2 : U_b])) + U_b - 2 | |
| alignment_b = [current_u] | |
| for t in range(T_max - 1, 0, -1): | |
| current_u = current_u - int(backpointers_rel[b, t, current_u]) | |
| alignment_b.insert(0, current_u) | |
| alignment_b = alignment_b[:T_b] | |
| alignments_batch.append(alignment_b) | |
| return alignments_batch | |