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- import torch
- from torch.nn import functional as F
- from funasr.models.encoder.abs_encoder import AbsEncoder
- from typing import Tuple, Optional
- from funasr.models.pooling.statistic_pooling import statistic_pooling, windowed_statistic_pooling
- from collections import OrderedDict
- import logging
- import numpy as np
- class BasicLayer(torch.nn.Module):
- def __init__(self, in_filters: int, filters: int, stride: int, bn_momentum: float = 0.5):
- super().__init__()
- self.stride = stride
- self.in_filters = in_filters
- self.filters = filters
- self.bn1 = torch.nn.BatchNorm2d(in_filters, eps=1e-3, momentum=bn_momentum, affine=True)
- self.relu1 = torch.nn.ReLU()
- self.conv1 = torch.nn.Conv2d(in_filters, filters, 3, stride, bias=False)
- self.bn2 = torch.nn.BatchNorm2d(filters, eps=1e-3, momentum=bn_momentum, affine=True)
- self.relu2 = torch.nn.ReLU()
- self.conv2 = torch.nn.Conv2d(filters, filters, 3, 1, bias=False)
- if in_filters != filters or stride > 1:
- self.conv_sc = torch.nn.Conv2d(in_filters, filters, 1, stride, bias=False)
- self.bn_sc = torch.nn.BatchNorm2d(filters, eps=1e-3, momentum=bn_momentum, affine=True)
- def proper_padding(self, x, stride):
- # align padding mode to tf.layers.conv2d with padding_mod="same"
- if stride == 1:
- return F.pad(x, (1, 1, 1, 1), "constant", 0)
- elif stride == 2:
- h, w = x.size(2), x.size(3)
- # (left, right, top, bottom)
- return F.pad(x, (w % 2, 1, h % 2, 1), "constant", 0)
- def forward(self, xs_pad, ilens):
- identity = xs_pad
- if self.in_filters != self.filters or self.stride > 1:
- identity = self.conv_sc(identity)
- identity = self.bn_sc(identity)
- xs_pad = self.relu1(self.bn1(xs_pad))
- xs_pad = self.proper_padding(xs_pad, self.stride)
- xs_pad = self.conv1(xs_pad)
- xs_pad = self.relu2(self.bn2(xs_pad))
- xs_pad = self.proper_padding(xs_pad, 1)
- xs_pad = self.conv2(xs_pad)
- if self.stride == 2:
- ilens = (ilens + 1) // self.stride
- return xs_pad + identity, ilens
- class BasicBlock(torch.nn.Module):
- def __init__(self, in_filters, filters, num_layer, stride, bn_momentum=0.5):
- super().__init__()
- self.num_layer = num_layer
- for i in range(num_layer):
- layer = BasicLayer(in_filters if i == 0 else filters, filters,
- stride if i == 0 else 1, bn_momentum)
- self.add_module("layer_{}".format(i), layer)
- def forward(self, xs_pad, ilens):
- for i in range(self.num_layer):
- xs_pad, ilens = self._modules["layer_{}".format(i)](xs_pad, ilens)
- return xs_pad, ilens
- class ResNet34(AbsEncoder):
- def __init__(
- self,
- input_size,
- use_head_conv=True,
- batchnorm_momentum=0.5,
- use_head_maxpool=False,
- num_nodes_pooling_layer=256,
- layers_in_block=(3, 4, 6, 3),
- filters_in_block=(32, 64, 128, 256),
- ):
- super(ResNet34, self).__init__()
- self.use_head_conv = use_head_conv
- self.use_head_maxpool = use_head_maxpool
- self.num_nodes_pooling_layer = num_nodes_pooling_layer
- self.layers_in_block = layers_in_block
- self.filters_in_block = filters_in_block
- self.input_size = input_size
- pre_filters = filters_in_block[0]
- if use_head_conv:
- self.pre_conv = torch.nn.Conv2d(1, pre_filters, 3, 1, 1, bias=False, padding_mode="zeros")
- self.pre_conv_bn = torch.nn.BatchNorm2d(pre_filters, eps=1e-3, momentum=batchnorm_momentum)
- if use_head_maxpool:
- self.head_maxpool = torch.nn.MaxPool2d(3, 1, padding=1)
- for i in range(len(layers_in_block)):
- if i == 0:
- in_filters = pre_filters if self.use_head_conv else 1
- else:
- in_filters = filters_in_block[i-1]
- block = BasicBlock(in_filters,
- filters=filters_in_block[i],
- num_layer=layers_in_block[i],
- stride=1 if i == 0 else 2,
- bn_momentum=batchnorm_momentum)
- self.add_module("block_{}".format(i), block)
- self.resnet0_dense = torch.nn.Conv2d(filters_in_block[-1], num_nodes_pooling_layer, 1)
- self.resnet0_bn = torch.nn.BatchNorm2d(num_nodes_pooling_layer, eps=1e-3, momentum=batchnorm_momentum)
- self.time_ds_ratio = 8
- def output_size(self) -> int:
- return self.num_nodes_pooling_layer
- def forward(
- self,
- xs_pad: torch.Tensor,
- ilens: torch.Tensor,
- prev_states: torch.Tensor = None
- ) -> Tuple[torch.Tensor, torch.Tensor]:
- features = xs_pad
- assert features.size(-1) == self.input_size, \
- "Dimension of features {} doesn't match the input_size {}.".format(features.size(-1), self.input_size)
- features = torch.unsqueeze(features, dim=1)
- if self.use_head_conv:
- features = self.pre_conv(features)
- features = self.pre_conv_bn(features)
- features = F.relu(features)
- if self.use_head_maxpool:
- features = self.head_maxpool(features)
- resnet_outs, resnet_out_lens = features, ilens
- for i in range(len(self.layers_in_block)):
- block = self._modules["block_{}".format(i)]
- resnet_outs, resnet_out_lens = block(resnet_outs, resnet_out_lens)
- features = self.resnet0_dense(resnet_outs)
- features = F.relu(features)
- features = self.resnet0_bn(features)
- return features, resnet_out_lens
- # Note: For training, this implement is not equivalent to tf because of the kernel_regularizer in tf.layers.
- # TODO: implement kernel_regularizer in torch with munal loss addition or weigth_decay in the optimizer
- class ResNet34_SP_L2Reg(AbsEncoder):
- def __init__(
- self,
- input_size,
- use_head_conv=True,
- batchnorm_momentum=0.5,
- use_head_maxpool=False,
- num_nodes_pooling_layer=256,
- layers_in_block=(3, 4, 6, 3),
- filters_in_block=(32, 64, 128, 256),
- tf2torch_tensor_name_prefix_torch="encoder",
- tf2torch_tensor_name_prefix_tf="EAND/speech_encoder",
- tf_train_steps=720000,
- ):
- super(ResNet34_SP_L2Reg, self).__init__()
- self.use_head_conv = use_head_conv
- self.use_head_maxpool = use_head_maxpool
- self.num_nodes_pooling_layer = num_nodes_pooling_layer
- self.layers_in_block = layers_in_block
- self.filters_in_block = filters_in_block
- self.input_size = input_size
- self.tf2torch_tensor_name_prefix_torch = tf2torch_tensor_name_prefix_torch
- self.tf2torch_tensor_name_prefix_tf = tf2torch_tensor_name_prefix_tf
- self.tf_train_steps = tf_train_steps
- pre_filters = filters_in_block[0]
- if use_head_conv:
- self.pre_conv = torch.nn.Conv2d(1, pre_filters, 3, 1, 1, bias=False, padding_mode="zeros")
- self.pre_conv_bn = torch.nn.BatchNorm2d(pre_filters, eps=1e-3, momentum=batchnorm_momentum)
- if use_head_maxpool:
- self.head_maxpool = torch.nn.MaxPool2d(3, 1, padding=1)
- for i in range(len(layers_in_block)):
- if i == 0:
- in_filters = pre_filters if self.use_head_conv else 1
- else:
- in_filters = filters_in_block[i-1]
- block = BasicBlock(in_filters,
- filters=filters_in_block[i],
- num_layer=layers_in_block[i],
- stride=1 if i == 0 else 2,
- bn_momentum=batchnorm_momentum)
- self.add_module("block_{}".format(i), block)
- self.resnet0_dense = torch.nn.Conv1d(filters_in_block[-1] * input_size // 8, num_nodes_pooling_layer, 1)
- self.resnet0_bn = torch.nn.BatchNorm1d(num_nodes_pooling_layer, eps=1e-3, momentum=batchnorm_momentum)
- self.time_ds_ratio = 8
- def output_size(self) -> int:
- return self.num_nodes_pooling_layer
- def forward(
- self,
- xs_pad: torch.Tensor,
- ilens: torch.Tensor,
- prev_states: torch.Tensor = None
- ) -> Tuple[torch.Tensor, torch.Tensor]:
- features = xs_pad
- assert features.size(-1) == self.input_size, \
- "Dimension of features {} doesn't match the input_size {}.".format(features.size(-1), self.input_size)
- features = torch.unsqueeze(features, dim=1)
- if self.use_head_conv:
- features = self.pre_conv(features)
- features = self.pre_conv_bn(features)
- features = F.relu(features)
- if self.use_head_maxpool:
- features = self.head_maxpool(features)
- resnet_outs, resnet_out_lens = features, ilens
- for i in range(len(self.layers_in_block)):
- block = self._modules["block_{}".format(i)]
- resnet_outs, resnet_out_lens = block(resnet_outs, resnet_out_lens)
- # B, C, T, F
- bb, cc, tt, ff = resnet_outs.shape
- resnet_outs = torch.reshape(resnet_outs.permute(0, 3, 1, 2), [bb, ff*cc, tt])
- features = self.resnet0_dense(resnet_outs)
- features = F.relu(features)
- features = self.resnet0_bn(features)
- return features, resnet_out_lens
- def gen_tf2torch_map_dict(self):
- tensor_name_prefix_torch = self.tf2torch_tensor_name_prefix_torch
- tensor_name_prefix_tf = self.tf2torch_tensor_name_prefix_tf
- train_steps = self.tf_train_steps
- map_dict_local = {
- # torch: conv1d.weight in "out_channel in_channel kernel_size"
- # tf : conv1d.weight in "kernel_size in_channel out_channel"
- # torch: linear.weight in "out_channel in_channel"
- # tf : dense.weight in "in_channel out_channel"
- "{}.pre_conv.weight".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv/kernel".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": (3, 2, 0, 1),
- },
- "{}.pre_conv_bn.bias".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/beta".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.weight".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/gamma".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.running_mean".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/moving_mean".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.running_var".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/moving_variance".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.num_batches_tracked".format(tensor_name_prefix_torch): train_steps
- }
- for layer_idx in range(3):
- map_dict_local.update({
- "{}.resnet{}_dense.weight".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_dense/kernel".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": (2, 1, 0) if layer_idx == 0 else (1, 0),
- },
- "{}.resnet{}_dense.bias".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_dense/bias".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.weight".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/gamma".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.bias".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/beta".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.running_mean".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/moving_mean".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.running_var".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/moving_variance".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.num_batches_tracked".format(tensor_name_prefix_torch, layer_idx): train_steps
- })
- for block_idx in range(len(self.layers_in_block)):
- for layer_idx in range(self.layers_in_block[block_idx]):
- for i in ["1", "2", "_sc"]:
- map_dict_local.update({
- "{}.block_{}.layer_{}.conv{}.weight".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/conv{}/kernel".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": (3, 2, 0, 1),
- },
- "{}.block_{}.layer_{}.bn{}.weight".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/gamma".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.bias".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/beta".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.running_mean".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/moving_mean".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.running_var".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/moving_variance".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.num_batches_tracked".format(tensor_name_prefix_torch, block_idx, layer_idx, i): train_steps,
- })
- return map_dict_local
- def convert_tf2torch(self,
- var_dict_tf,
- var_dict_torch,
- ):
- map_dict = self.gen_tf2torch_map_dict()
- var_dict_torch_update = dict()
- for name in sorted(var_dict_torch.keys(), reverse=False):
- if name.startswith(self.tf2torch_tensor_name_prefix_torch):
- if name in map_dict:
- if "num_batches_tracked" not in name:
- name_tf = map_dict[name]["name"]
- data_tf = var_dict_tf[name_tf]
- if map_dict[name]["squeeze"] is not None:
- data_tf = np.squeeze(data_tf, axis=map_dict[name]["squeeze"])
- if map_dict[name]["transpose"] is not None:
- data_tf = np.transpose(data_tf, map_dict[name]["transpose"])
- data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
- assert var_dict_torch[name].size() == data_tf.size(), \
- "{}, {}, {} != {}".format(name, name_tf,
- var_dict_torch[name].size(), data_tf.size())
- var_dict_torch_update[name] = data_tf
- logging.info("torch tensor: {}, {}, loading from tf tensor: {}, {}".format(
- name, data_tf.size(), name_tf, var_dict_tf[name_tf].shape
- ))
- else:
- var_dict_torch_update[name] = torch.Tensor(map_dict[name]).type(torch.int64).to("cpu")
- logging.info("torch tensor: {}, manually assigning to: {}".format(
- name, map_dict[name]
- ))
- else:
- logging.warning("{} is missed from tf checkpoint".format(name))
- return var_dict_torch_update
- class ResNet34Diar(ResNet34):
- def __init__(
- self,
- input_size,
- embedding_node="resnet1_dense",
- use_head_conv=True,
- batchnorm_momentum=0.5,
- use_head_maxpool=False,
- num_nodes_pooling_layer=256,
- layers_in_block=(3, 4, 6, 3),
- filters_in_block=(32, 64, 128, 256),
- num_nodes_resnet1=256,
- num_nodes_last_layer=256,
- pooling_type="window_shift",
- pool_size=20,
- stride=1,
- tf2torch_tensor_name_prefix_torch="encoder",
- tf2torch_tensor_name_prefix_tf="seq2seq/speech_encoder"
- ):
- """
- Author: Speech Lab, Alibaba Group, China
- SOND: Speaker Overlap-aware Neural Diarization for Multi-party Meeting Analysis
- https://arxiv.org/abs/2211.10243
- """
- super(ResNet34Diar, self).__init__(
- input_size,
- use_head_conv=use_head_conv,
- batchnorm_momentum=batchnorm_momentum,
- use_head_maxpool=use_head_maxpool,
- num_nodes_pooling_layer=num_nodes_pooling_layer,
- layers_in_block=layers_in_block,
- filters_in_block=filters_in_block,
- )
- self.embedding_node = embedding_node
- self.num_nodes_resnet1 = num_nodes_resnet1
- self.num_nodes_last_layer = num_nodes_last_layer
- self.pooling_type = pooling_type
- self.pool_size = pool_size
- self.stride = stride
- self.tf2torch_tensor_name_prefix_torch = tf2torch_tensor_name_prefix_torch
- self.tf2torch_tensor_name_prefix_tf = tf2torch_tensor_name_prefix_tf
- self.resnet1_dense = torch.nn.Linear(num_nodes_pooling_layer * 2, num_nodes_resnet1)
- self.resnet1_bn = torch.nn.BatchNorm1d(num_nodes_resnet1, eps=1e-3, momentum=batchnorm_momentum)
- self.resnet2_dense = torch.nn.Linear(num_nodes_resnet1, num_nodes_last_layer)
- self.resnet2_bn = torch.nn.BatchNorm1d(num_nodes_last_layer, eps=1e-3, momentum=batchnorm_momentum)
- def output_size(self) -> int:
- if self.embedding_node.startswith("resnet1"):
- return self.num_nodes_resnet1
- elif self.embedding_node.startswith("resnet2"):
- return self.num_nodes_last_layer
- return self.num_nodes_pooling_layer
- def forward(
- self,
- xs_pad: torch.Tensor,
- ilens: torch.Tensor,
- prev_states: torch.Tensor = None,
- ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
- endpoints = OrderedDict()
- res_out, ilens = super().forward(xs_pad, ilens)
- endpoints["resnet0_bn"] = res_out
- if self.pooling_type == "frame_gsp":
- features = statistic_pooling(res_out, ilens, (3, ))
- else:
- features, ilens = windowed_statistic_pooling(res_out, ilens, (2, 3), self.pool_size, self.stride)
- features = features.transpose(1, 2)
- endpoints["pooling"] = features
- features = self.resnet1_dense(features)
- endpoints["resnet1_dense"] = features
- features = F.relu(features)
- endpoints["resnet1_relu"] = features
- features = self.resnet1_bn(features.transpose(1, 2)).transpose(1, 2)
- endpoints["resnet1_bn"] = features
- features = self.resnet2_dense(features)
- endpoints["resnet2_dense"] = features
- features = F.relu(features)
- endpoints["resnet2_relu"] = features
- features = self.resnet2_bn(features.transpose(1, 2)).transpose(1, 2)
- endpoints["resnet2_bn"] = features
- return endpoints[self.embedding_node], ilens, None
- def gen_tf2torch_map_dict(self):
- tensor_name_prefix_torch = self.tf2torch_tensor_name_prefix_torch
- tensor_name_prefix_tf = self.tf2torch_tensor_name_prefix_tf
- train_steps = 300000
- map_dict_local = {
- # torch: conv1d.weight in "out_channel in_channel kernel_size"
- # tf : conv1d.weight in "kernel_size in_channel out_channel"
- # torch: linear.weight in "out_channel in_channel"
- # tf : dense.weight in "in_channel out_channel"
- "{}.pre_conv.weight".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv/kernel".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": (3, 2, 0, 1),
- },
- "{}.pre_conv_bn.bias".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/beta".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.weight".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/gamma".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.running_mean".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/moving_mean".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.running_var".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/moving_variance".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.num_batches_tracked".format(tensor_name_prefix_torch): train_steps
- }
- for layer_idx in range(3):
- map_dict_local.update({
- "{}.resnet{}_dense.weight".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_dense/kernel".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": (3, 2, 0, 1) if layer_idx == 0 else (1, 0),
- },
- "{}.resnet{}_dense.bias".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_dense/bias".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.weight".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/gamma".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.bias".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/beta".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.running_mean".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/moving_mean".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.running_var".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/moving_variance".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.num_batches_tracked".format(tensor_name_prefix_torch, layer_idx): train_steps
- })
- for block_idx in range(len(self.layers_in_block)):
- for layer_idx in range(self.layers_in_block[block_idx]):
- for i in ["1", "2", "_sc"]:
- map_dict_local.update({
- "{}.block_{}.layer_{}.conv{}.weight".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/conv{}/kernel".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": (3, 2, 0, 1),
- },
- "{}.block_{}.layer_{}.bn{}.weight".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/gamma".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.bias".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/beta".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.running_mean".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/moving_mean".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.running_var".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/moving_variance".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.num_batches_tracked".format(tensor_name_prefix_torch, block_idx, layer_idx, i): train_steps,
- })
- return map_dict_local
- def convert_tf2torch(self,
- var_dict_tf,
- var_dict_torch,
- ):
- map_dict = self.gen_tf2torch_map_dict()
- var_dict_torch_update = dict()
- for name in sorted(var_dict_torch.keys(), reverse=False):
- if name.startswith(self.tf2torch_tensor_name_prefix_torch):
- if name in map_dict:
- if "num_batches_tracked" not in name:
- name_tf = map_dict[name]["name"]
- data_tf = var_dict_tf[name_tf]
- if map_dict[name]["squeeze"] is not None:
- data_tf = np.squeeze(data_tf, axis=map_dict[name]["squeeze"])
- if map_dict[name]["transpose"] is not None:
- data_tf = np.transpose(data_tf, map_dict[name]["transpose"])
- data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
- assert var_dict_torch[name].size() == data_tf.size(), \
- "{}, {}, {} != {}".format(name, name_tf,
- var_dict_torch[name].size(), data_tf.size())
- var_dict_torch_update[name] = data_tf
- logging.info("torch tensor: {}, {}, loading from tf tensor: {}, {}".format(
- name, data_tf.size(), name_tf, var_dict_tf[name_tf].shape
- ))
- else:
- var_dict_torch_update[name] = torch.Tensor(map_dict[name]).type(torch.int64).to("cpu")
- logging.info("torch tensor: {}, manually assigning to: {}".format(
- name, map_dict[name]
- ))
- else:
- logging.warning("{} is missed from tf checkpoint".format(name))
- return var_dict_torch_update
- class ResNet34SpL2RegDiar(ResNet34_SP_L2Reg):
- def __init__(
- self,
- input_size,
- embedding_node="resnet1_dense",
- use_head_conv=True,
- batchnorm_momentum=0.5,
- use_head_maxpool=False,
- num_nodes_pooling_layer=256,
- layers_in_block=(3, 4, 6, 3),
- filters_in_block=(32, 64, 128, 256),
- num_nodes_resnet1=256,
- num_nodes_last_layer=256,
- pooling_type="window_shift",
- pool_size=20,
- stride=1,
- tf2torch_tensor_name_prefix_torch="encoder",
- tf2torch_tensor_name_prefix_tf="seq2seq/speech_encoder"
- ):
- """
- Author: Speech Lab, Alibaba Group, China
- TOLD: A Novel Two-Stage Overlap-Aware Framework for Speaker Diarization
- https://arxiv.org/abs/2303.05397
- """
- super(ResNet34SpL2RegDiar, self).__init__(
- input_size,
- use_head_conv=use_head_conv,
- batchnorm_momentum=batchnorm_momentum,
- use_head_maxpool=use_head_maxpool,
- num_nodes_pooling_layer=num_nodes_pooling_layer,
- layers_in_block=layers_in_block,
- filters_in_block=filters_in_block,
- )
- self.embedding_node = embedding_node
- self.num_nodes_resnet1 = num_nodes_resnet1
- self.num_nodes_last_layer = num_nodes_last_layer
- self.pooling_type = pooling_type
- self.pool_size = pool_size
- self.stride = stride
- self.tf2torch_tensor_name_prefix_torch = tf2torch_tensor_name_prefix_torch
- self.tf2torch_tensor_name_prefix_tf = tf2torch_tensor_name_prefix_tf
- self.resnet1_dense = torch.nn.Linear(num_nodes_pooling_layer * 2, num_nodes_resnet1)
- self.resnet1_bn = torch.nn.BatchNorm1d(num_nodes_resnet1, eps=1e-3, momentum=batchnorm_momentum)
- self.resnet2_dense = torch.nn.Linear(num_nodes_resnet1, num_nodes_last_layer)
- self.resnet2_bn = torch.nn.BatchNorm1d(num_nodes_last_layer, eps=1e-3, momentum=batchnorm_momentum)
- def output_size(self) -> int:
- if self.embedding_node.startswith("resnet1"):
- return self.num_nodes_resnet1
- elif self.embedding_node.startswith("resnet2"):
- return self.num_nodes_last_layer
- return self.num_nodes_pooling_layer
- def forward(
- self,
- xs_pad: torch.Tensor,
- ilens: torch.Tensor,
- prev_states: torch.Tensor = None,
- ) -> Tuple[torch.Tensor, torch.Tensor, Optional[torch.Tensor]]:
- endpoints = OrderedDict()
- res_out, ilens = super().forward(xs_pad, ilens)
- endpoints["resnet0_bn"] = res_out
- if self.pooling_type == "frame_gsp":
- features = statistic_pooling(res_out, ilens, (2, ))
- else:
- features, ilens = windowed_statistic_pooling(res_out, ilens, (2, ), self.pool_size, self.stride)
- features = features.transpose(1, 2)
- endpoints["pooling"] = features
- features = self.resnet1_dense(features)
- endpoints["resnet1_dense"] = features
- features = F.relu(features)
- endpoints["resnet1_relu"] = features
- features = self.resnet1_bn(features.transpose(1, 2)).transpose(1, 2)
- endpoints["resnet1_bn"] = features
- features = self.resnet2_dense(features)
- endpoints["resnet2_dense"] = features
- features = F.relu(features)
- endpoints["resnet2_relu"] = features
- features = self.resnet2_bn(features.transpose(1, 2)).transpose(1, 2)
- endpoints["resnet2_bn"] = features
- return endpoints[self.embedding_node], ilens, None
- def gen_tf2torch_map_dict(self):
- tensor_name_prefix_torch = self.tf2torch_tensor_name_prefix_torch
- tensor_name_prefix_tf = self.tf2torch_tensor_name_prefix_tf
- train_steps = 720000
- map_dict_local = {
- # torch: conv1d.weight in "out_channel in_channel kernel_size"
- # tf : conv1d.weight in "kernel_size in_channel out_channel"
- # torch: linear.weight in "out_channel in_channel"
- # tf : dense.weight in "in_channel out_channel"
- "{}.pre_conv.weight".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv/kernel".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": (3, 2, 0, 1),
- },
- "{}.pre_conv_bn.bias".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/beta".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.weight".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/gamma".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.running_mean".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/moving_mean".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.running_var".format(tensor_name_prefix_torch):
- {"name": "{}/pre_conv_bn/moving_variance".format(tensor_name_prefix_tf),
- "squeeze": None,
- "transpose": None,
- },
- "{}.pre_conv_bn.num_batches_tracked".format(tensor_name_prefix_torch): train_steps
- }
- for layer_idx in range(3):
- map_dict_local.update({
- "{}.resnet{}_dense.weight".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_dense/kernel".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": (2, 1, 0) if layer_idx == 0 else (1, 0),
- },
- "{}.resnet{}_dense.bias".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_dense/bias".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.weight".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/gamma".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.bias".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/beta".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.running_mean".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/moving_mean".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.running_var".format(tensor_name_prefix_torch, layer_idx):
- {"name": "{}/resnet{}_bn/moving_variance".format(tensor_name_prefix_tf, layer_idx),
- "squeeze": None,
- "transpose": None,
- },
- "{}.resnet{}_bn.num_batches_tracked".format(tensor_name_prefix_torch, layer_idx): train_steps
- })
- for block_idx in range(len(self.layers_in_block)):
- for layer_idx in range(self.layers_in_block[block_idx]):
- for i in ["1", "2", "_sc"]:
- map_dict_local.update({
- "{}.block_{}.layer_{}.conv{}.weight".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/conv{}/kernel".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": (3, 2, 0, 1),
- },
- "{}.block_{}.layer_{}.bn{}.weight".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/gamma".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.bias".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/beta".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.running_mean".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/moving_mean".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.running_var".format(tensor_name_prefix_torch, block_idx, layer_idx, i):
- {"name": "{}/block_{}/layer_{}/bn{}/moving_variance".format(tensor_name_prefix_tf, block_idx, layer_idx, i),
- "squeeze": None,
- "transpose": None,
- },
- "{}.block_{}.layer_{}.bn{}.num_batches_tracked".format(tensor_name_prefix_torch, block_idx, layer_idx, i): train_steps,
- })
- return map_dict_local
- def convert_tf2torch(self,
- var_dict_tf,
- var_dict_torch,
- ):
- map_dict = self.gen_tf2torch_map_dict()
- var_dict_torch_update = dict()
- for name in sorted(var_dict_torch.keys(), reverse=False):
- if name.startswith(self.tf2torch_tensor_name_prefix_torch):
- if name in map_dict:
- if "num_batches_tracked" not in name:
- name_tf = map_dict[name]["name"]
- data_tf = var_dict_tf[name_tf]
- if map_dict[name]["squeeze"] is not None:
- data_tf = np.squeeze(data_tf, axis=map_dict[name]["squeeze"])
- if map_dict[name]["transpose"] is not None:
- data_tf = np.transpose(data_tf, map_dict[name]["transpose"])
- data_tf = torch.from_numpy(data_tf).type(torch.float32).to("cpu")
- assert var_dict_torch[name].size() == data_tf.size(), \
- "{}, {}, {} != {}".format(name, name_tf,
- var_dict_torch[name].size(), data_tf.size())
- var_dict_torch_update[name] = data_tf
- logging.info("torch tensor: {}, {}, loading from tf tensor: {}, {}".format(
- name, data_tf.size(), name_tf, var_dict_tf[name_tf].shape
- ))
- else:
- var_dict_torch_update[name] = torch.from_numpy(np.array(map_dict[name])).type(torch.int64).to("cpu")
- logging.info("torch tensor: {}, manually assigning to: {}".format(
- name, map_dict[name]
- ))
- else:
- logging.warning("{} is missed from tf checkpoint".format(name))
- return var_dict_torch_update
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