transformer.py 19 KB

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  1. import math
  2. import copy
  3. import torch
  4. import torch.nn as nn
  5. import torch.nn.functional as F
  6. from torch.nn.init import constant_, xavier_uniform_
  7. try:
  8. from .basic import get_activation
  9. except:
  10. from basic import get_activation
  11. def get_clones(module, N):
  12. if N <= 0:
  13. return None
  14. else:
  15. return nn.ModuleList([copy.deepcopy(module) for _ in range(N)])
  16. def inverse_sigmoid(x, eps=1e-5):
  17. x = x.clamp(min=0., max=1.)
  18. return torch.log(x.clamp(min=eps) / (1 - x).clamp(min=eps))
  19. # ----------------- MLP modules -----------------
  20. class MLP(nn.Module):
  21. def __init__(self, in_dim, hidden_dim, out_dim, num_layers):
  22. super().__init__()
  23. self.num_layers = num_layers
  24. h = [hidden_dim] * (num_layers - 1)
  25. self.layers = nn.ModuleList(nn.Linear(n, k) for n, k in zip([in_dim] + h, h + [out_dim]))
  26. def forward(self, x):
  27. for i, layer in enumerate(self.layers):
  28. x = nn.functional.relu(layer(x)) if i < self.num_layers - 1 else layer(x)
  29. return x
  30. class FFN(nn.Module):
  31. def __init__(self, d_model=256, mlp_ratio=4.0, dropout=0., act_type='relu'):
  32. super().__init__()
  33. self.fpn_dim = round(d_model * mlp_ratio)
  34. self.linear1 = nn.Linear(d_model, self.fpn_dim)
  35. self.activation = get_activation(act_type)
  36. self.dropout2 = nn.Dropout(dropout)
  37. self.linear2 = nn.Linear(self.fpn_dim, d_model)
  38. self.dropout3 = nn.Dropout(dropout)
  39. self.norm = nn.LayerNorm(d_model)
  40. def forward(self, src):
  41. src2 = self.linear2(self.dropout2(self.activation(self.linear1(src))))
  42. src = src + self.dropout3(src2)
  43. src = self.norm(src)
  44. return src
  45. # ----------------- Basic Transformer Ops -----------------
  46. def multi_scale_deformable_attn_pytorch(
  47. value: torch.Tensor,
  48. value_spatial_shapes: torch.Tensor,
  49. sampling_locations: torch.Tensor,
  50. attention_weights: torch.Tensor,
  51. ) -> torch.Tensor:
  52. bs, _, num_heads, embed_dims = value.shape
  53. _, num_queries, num_heads, num_levels, num_points, _ = sampling_locations.shape
  54. value_list = value.split([H_ * W_ for H_, W_ in value_spatial_shapes], dim=1)
  55. sampling_grids = 2 * sampling_locations - 1
  56. sampling_value_list = []
  57. for level, (H_, W_) in enumerate(value_spatial_shapes):
  58. # bs, H_*W_, num_heads, embed_dims ->
  59. # bs, H_*W_, num_heads*embed_dims ->
  60. # bs, num_heads*embed_dims, H_*W_ ->
  61. # bs*num_heads, embed_dims, H_, W_
  62. value_l_ = (
  63. value_list[level].flatten(2).transpose(1, 2).reshape(bs * num_heads, embed_dims, H_, W_)
  64. )
  65. # bs, num_queries, num_heads, num_points, 2 ->
  66. # bs, num_heads, num_queries, num_points, 2 ->
  67. # bs*num_heads, num_queries, num_points, 2
  68. sampling_grid_l_ = sampling_grids[:, :, :, level].transpose(1, 2).flatten(0, 1)
  69. # bs*num_heads, embed_dims, num_queries, num_points
  70. sampling_value_l_ = F.grid_sample(
  71. value_l_, sampling_grid_l_, mode="bilinear", padding_mode="zeros", align_corners=False
  72. )
  73. sampling_value_list.append(sampling_value_l_)
  74. # (bs, num_queries, num_heads, num_levels, num_points) ->
  75. # (bs, num_heads, num_queries, num_levels, num_points) ->
  76. # (bs, num_heads, 1, num_queries, num_levels*num_points)
  77. attention_weights = attention_weights.transpose(1, 2).reshape(
  78. bs * num_heads, 1, num_queries, num_levels * num_points
  79. )
  80. output = (
  81. (torch.stack(sampling_value_list, dim=-2).flatten(-2) * attention_weights)
  82. .sum(-1)
  83. .view(bs, num_heads * embed_dims, num_queries)
  84. )
  85. return output.transpose(1, 2).contiguous()
  86. class MSDeformableAttention(nn.Module):
  87. def __init__(self,
  88. embed_dim=256,
  89. num_heads=8,
  90. num_levels=4,
  91. num_points=4):
  92. """
  93. Multi-Scale Deformable Attention Module
  94. """
  95. super(MSDeformableAttention, self).__init__()
  96. self.embed_dim = embed_dim
  97. self.num_heads = num_heads
  98. self.num_levels = num_levels
  99. self.num_points = num_points
  100. self.total_points = num_heads * num_levels * num_points
  101. self.head_dim = embed_dim // num_heads
  102. assert self.head_dim * num_heads == self.embed_dim, "embed_dim must be divisible by num_heads"
  103. self.sampling_offsets = nn.Linear(embed_dim, self.total_points * 2)
  104. self.attention_weights = nn.Linear(embed_dim, self.total_points)
  105. self.value_proj = nn.Linear(embed_dim, embed_dim)
  106. self.output_proj = nn.Linear(embed_dim, embed_dim)
  107. try:
  108. # use cuda op
  109. from deformable_detr_ops import ms_deformable_attn
  110. self.ms_deformable_attn_core = ms_deformable_attn
  111. except:
  112. # use torch func
  113. self.ms_deformable_attn_core = multi_scale_deformable_attn_pytorch
  114. self._reset_parameters()
  115. def _reset_parameters(self):
  116. """
  117. Default initialization for Parameters of Module.
  118. """
  119. constant_(self.sampling_offsets.weight.data, 0.0)
  120. thetas = torch.arange(self.num_heads, dtype=torch.float32) * (
  121. 2.0 * math.pi / self.num_heads
  122. )
  123. grid_init = torch.stack([thetas.cos(), thetas.sin()], -1)
  124. grid_init = (
  125. (grid_init / grid_init.abs().max(-1, keepdim=True)[0])
  126. .view(self.num_heads, 1, 1, 2)
  127. .repeat(1, self.num_levels, self.num_points, 1)
  128. )
  129. for i in range(self.num_points):
  130. grid_init[:, :, i, :] *= i + 1
  131. with torch.no_grad():
  132. self.sampling_offsets.bias = nn.Parameter(grid_init.view(-1))
  133. constant_(self.attention_weights.weight.data, 0.0)
  134. constant_(self.attention_weights.bias.data, 0.0)
  135. xavier_uniform_(self.value_proj.weight.data)
  136. constant_(self.value_proj.bias.data, 0.0)
  137. xavier_uniform_(self.output_proj.weight.data)
  138. constant_(self.output_proj.bias.data, 0.0)
  139. def forward(self,
  140. query,
  141. reference_points,
  142. value,
  143. value_spatial_shapes,
  144. value_mask=None):
  145. """
  146. Args:
  147. query (Tensor): [bs, query_length, C]
  148. reference_points (Tensor): [bs, query_length, n_levels, 2], range in [0, 1], top-left (0,0),
  149. bottom-right (1, 1), including padding area
  150. value (Tensor): [bs, value_length, C]
  151. value_spatial_shapes (Tensor): [n_levels, 2], [(H_0, W_0), (H_1, W_1), ..., (H_{L-1}, W_{L-1})]
  152. value_mask (Tensor): [bs, value_length], True for non-padding elements, False for padding elements
  153. Returns:
  154. output (Tensor): [bs, Length_{query}, C]
  155. """
  156. bs, num_query = query.shape[:2]
  157. num_value = value.shape[1]
  158. assert sum([s[0] * s[1] for s in value_spatial_shapes]) == num_value
  159. # Value projection
  160. value = self.value_proj(value)
  161. # fill "0" for the padding part
  162. if value_mask is not None:
  163. value_mask = value_mask.astype(value.dtype).unsqueeze(-1)
  164. value *= value_mask
  165. # [bs, all_hw, 256] -> [bs, all_hw, num_head, head_dim]
  166. value = value.reshape([bs, num_value, self.num_heads, -1])
  167. # [bs, all_hw, num_head, nun_level, num_sample_point, num_offset]
  168. sampling_offsets = self.sampling_offsets(query).reshape(
  169. [bs, num_query, self.num_heads, self.num_levels, self.num_points, 2])
  170. # [bs, all_hw, num_head, nun_level*num_sample_point]
  171. attention_weights = self.attention_weights(query).reshape(
  172. [bs, num_query, self.num_heads, self.num_levels * self.num_points])
  173. attention_weights = attention_weights.softmax(-1)
  174. # [bs, all_hw, num_head, nun_level, num_sample_point]
  175. attention_weights = attention_weights.reshape(
  176. [bs, num_query, self.num_heads, self.num_levels, self.num_points])
  177. # [bs, num_query, num_heads, num_levels, num_points, 2]
  178. if reference_points.shape[-1] == 2:
  179. # reference_points [bs, all_hw, num_sample_point, 2] -> [bs, all_hw, 1, num_sample_point, 1, 2]
  180. # sampling_offsets [bs, all_hw, nun_head, num_level, num_sample_point, 2]
  181. # offset_normalizer [4, 2] -> [1, 1, 1, num_sample_point, 1, 2]
  182. # references_points + sampling_offsets
  183. offset_normalizer = value_spatial_shapes.flip([1]).reshape(
  184. [1, 1, 1, self.num_levels, 1, 2])
  185. sampling_locations = (
  186. reference_points[:, :, None, :, None, :]
  187. + sampling_offsets / offset_normalizer[None, None, None, :, None, :]
  188. )
  189. elif reference_points.shape[-1] == 4:
  190. sampling_locations = (
  191. reference_points[:, :, None, :, None, :2]
  192. + sampling_offsets
  193. / self.num_points
  194. * reference_points[:, :, None, :, None, 2:]
  195. * 0.5)
  196. else:
  197. raise ValueError(
  198. "Last dim of reference_points must be 2 or 4, but get {} instead.".
  199. format(reference_points.shape[-1]))
  200. # Multi-scale Deformable attention
  201. output = self.ms_deformable_attn_core(
  202. value, value_spatial_shapes, sampling_locations, attention_weights)
  203. # Output project
  204. output = self.output_proj(output)
  205. return output
  206. # ----------------- Transformer modules -----------------
  207. ## Transformer Encoder layer
  208. class TransformerEncoderLayer(nn.Module):
  209. def __init__(self,
  210. d_model :int = 256,
  211. num_heads :int = 8,
  212. mlp_ratio :float = 4.0,
  213. dropout :float = 0.1,
  214. act_type :str = "relu",
  215. ):
  216. super().__init__()
  217. # ----------- Basic parameters -----------
  218. self.d_model = d_model
  219. self.num_heads = num_heads
  220. self.mlp_ratio = mlp_ratio
  221. self.dropout = dropout
  222. self.act_type = act_type
  223. # ----------- Basic parameters -----------
  224. # Multi-head Self-Attn
  225. self.self_attn = nn.MultiheadAttention(d_model, num_heads, dropout=dropout, batch_first=True)
  226. self.dropout = nn.Dropout(dropout)
  227. self.norm = nn.LayerNorm(d_model)
  228. # Feedforwaed Network
  229. self.ffn = FFN(d_model, mlp_ratio, dropout, act_type)
  230. def with_pos_embed(self, tensor, pos):
  231. return tensor if pos is None else tensor + pos
  232. def forward(self, src, pos_embed):
  233. """
  234. Input:
  235. src: [torch.Tensor] -> [B, N, C]
  236. pos_embed: [torch.Tensor] -> [B, N, C]
  237. Output:
  238. src: [torch.Tensor] -> [B, N, C]
  239. """
  240. q = k = self.with_pos_embed(src, pos_embed)
  241. # -------------- MHSA --------------
  242. src2 = self.self_attn(q, k, value=src)[0]
  243. src = src + self.dropout(src2)
  244. src = self.norm(src)
  245. # -------------- FFN --------------
  246. src = self.ffn(src)
  247. return src
  248. ## Transformer Encoder
  249. class TransformerEncoder(nn.Module):
  250. def __init__(self,
  251. d_model :int = 256,
  252. num_heads :int = 8,
  253. num_layers :int = 1,
  254. mlp_ratio :float = 4.0,
  255. pe_temperature : float = 10000.,
  256. dropout :float = 0.1,
  257. act_type :str = "relu",
  258. ):
  259. super().__init__()
  260. # ----------- Basic parameters -----------
  261. self.d_model = d_model
  262. self.num_heads = num_heads
  263. self.num_layers = num_layers
  264. self.mlp_ratio = mlp_ratio
  265. self.dropout = dropout
  266. self.act_type = act_type
  267. self.pe_temperature = pe_temperature
  268. self.pos_embed = None
  269. # ----------- Basic parameters -----------
  270. self.encoder_layers = get_clones(
  271. TransformerEncoderLayer(d_model, num_heads, mlp_ratio, dropout, act_type), num_layers)
  272. def build_2d_sincos_position_embedding(self, device, w, h, embed_dim=256, temperature=10000.):
  273. assert embed_dim % 4 == 0, \
  274. 'Embed dimension must be divisible by 4 for 2D sin-cos position embedding'
  275. # ----------- Check cahed pos_embed -----------
  276. if self.pos_embed is not None and \
  277. self.pos_embed.shape[2:] == [h, w]:
  278. return self.pos_embed
  279. # ----------- Generate grid coords -----------
  280. grid_w = torch.arange(int(w), dtype=torch.float32)
  281. grid_h = torch.arange(int(h), dtype=torch.float32)
  282. grid_w, grid_h = torch.meshgrid([grid_w, grid_h]) # shape: [H, W]
  283. pos_dim = embed_dim // 4
  284. omega = torch.arange(pos_dim, dtype=torch.float32) / pos_dim
  285. omega = 1. / (temperature**omega)
  286. out_w = grid_w.flatten()[..., None] @ omega[None] # shape: [N, C]
  287. out_h = grid_h.flatten()[..., None] @ omega[None] # shape: [N, C]
  288. # shape: [1, N, C]
  289. pos_embed = torch.cat([torch.sin(out_w), torch.cos(out_w), torch.sin(out_h),torch.cos(out_h)], dim=1)[None, :, :]
  290. pos_embed = pos_embed.to(device)
  291. self.pos_embed = pos_embed
  292. return pos_embed
  293. def forward(self, src):
  294. """
  295. Input:
  296. src: [torch.Tensor] -> [B, C, H, W]
  297. Output:
  298. src: [torch.Tensor] -> [B, C, H, W]
  299. """
  300. # -------- Transformer encoder --------
  301. channels, fmp_h, fmp_w = src.shape[1:]
  302. # [B, C, H, W] -> [B, N, C], N=HxW
  303. src_flatten = src.flatten(2).permute(0, 2, 1)
  304. memory = src_flatten
  305. # PosEmbed: [1, N, C]
  306. pos_embed = self.build_2d_sincos_position_embedding(
  307. src.device, fmp_w, fmp_h, channels, self.pe_temperature)
  308. # Transformer Encoder layer
  309. for encoder in self.encoder_layers:
  310. memory = encoder(memory, pos_embed=pos_embed)
  311. # Output: [B, N, C] -> [B, C, N] -> [B, C, H, W]
  312. src = memory.permute(0, 2, 1).reshape([-1, channels, fmp_h, fmp_w])
  313. return src
  314. ## Transformer Decoder layer
  315. class DeformableTransformerDecoderLayer(nn.Module):
  316. def __init__(self,
  317. d_model :int = 256,
  318. num_heads :int = 8,
  319. num_levels :int = 3,
  320. num_points :int = 4,
  321. mlp_ratio :float = 4.0,
  322. dropout :float = 0.1,
  323. act_type :str = "relu",
  324. ):
  325. super().__init__()
  326. # ----------- Basic parameters -----------
  327. self.d_model = d_model
  328. self.num_heads = num_heads
  329. self.num_levels = num_levels
  330. self.num_points = num_points
  331. self.mlp_ratio = mlp_ratio
  332. self.dropout = dropout
  333. self.act_type = act_type
  334. # ---------------- Network parameters ----------------
  335. ## Multi-head Self-Attn
  336. self.self_attn = nn.MultiheadAttention(d_model, num_heads, dropout=dropout)
  337. self.dropout1 = nn.Dropout(dropout)
  338. self.norm1 = nn.LayerNorm(d_model)
  339. ## CrossAttention
  340. self.cross_attn = MSDeformableAttention(d_model, num_heads, num_levels, num_points)
  341. self.dropout2 = nn.Dropout(dropout)
  342. self.norm2 = nn.LayerNorm(d_model)
  343. ## FFN
  344. self.ffn = FFN(d_model, mlp_ratio, dropout, act_type)
  345. def with_pos_embed(self, tensor, pos):
  346. return tensor if pos is None else tensor + pos
  347. def forward(self,
  348. tgt,
  349. reference_points,
  350. memory,
  351. memory_spatial_shapes,
  352. attn_mask=None,
  353. memory_mask=None,
  354. query_pos_embed=None):
  355. # ---------------- MSHA for Object Query -----------------
  356. q = k = self.with_pos_embed(tgt, query_pos_embed)
  357. if attn_mask is not None:
  358. attn_mask = torch.where(
  359. attn_mask.bool(),
  360. torch.zeros(attn_mask.shape, dtype=tgt.dtype, device=attn_mask.device),
  361. torch.full(attn_mask.shape, float("-inf"), dtype=tgt.dtype, device=attn_mask.device))
  362. tgt2 = self.self_attn(q, k, value=tgt)[0]
  363. tgt = tgt + self.dropout1(tgt2)
  364. tgt = self.norm1(tgt)
  365. # ---------------- CMHA for Object Query and Image-feature -----------------
  366. tgt2 = self.cross_attn(self.with_pos_embed(tgt, query_pos_embed),
  367. reference_points,
  368. memory,
  369. memory_spatial_shapes,
  370. memory_mask)
  371. tgt = tgt + self.dropout2(tgt2)
  372. tgt = self.norm2(tgt)
  373. # ---------------- FeedForward Network -----------------
  374. tgt = self.ffn(tgt)
  375. return tgt
  376. ## Transformer Decoder
  377. class DeformableTransformerDecoder(nn.Module):
  378. def __init__(self,
  379. d_model :int = 256,
  380. num_heads :int = 8,
  381. num_layers :int = 1,
  382. num_levels :int = 3,
  383. num_points :int = 4,
  384. mlp_ratio :float = 4.0,
  385. dropout :float = 0.1,
  386. act_type :str = "relu",
  387. return_intermediate :bool = False,
  388. ):
  389. super().__init__()
  390. # ----------- Basic parameters -----------
  391. self.d_model = d_model
  392. self.num_heads = num_heads
  393. self.num_layers = num_layers
  394. self.mlp_ratio = mlp_ratio
  395. self.dropout = dropout
  396. self.act_type = act_type
  397. self.pos_embed = None
  398. # ----------- Network parameters -----------
  399. self.decoder_layers = get_clones(
  400. DeformableTransformerDecoderLayer(d_model, num_heads, num_levels, num_points, mlp_ratio, dropout, act_type), num_layers)
  401. self.num_layers = num_layers
  402. self.return_intermediate = return_intermediate
  403. def forward(self,
  404. tgt,
  405. ref_points_unact,
  406. memory,
  407. memory_spatial_shapes,
  408. bbox_head,
  409. score_head,
  410. query_pos_head,
  411. attn_mask=None,
  412. memory_mask=None):
  413. output = tgt
  414. dec_out_bboxes = []
  415. dec_out_logits = []
  416. ref_points_detach = F.sigmoid(ref_points_unact)
  417. for i, layer in enumerate(self.decoder_layers):
  418. ref_points_input = ref_points_detach.unsqueeze(2)
  419. query_pos_embed = query_pos_head(ref_points_detach)
  420. output = layer(output, ref_points_input, memory,
  421. memory_spatial_shapes, attn_mask,
  422. memory_mask, query_pos_embed)
  423. inter_ref_bbox = F.sigmoid(bbox_head[i](output) + inverse_sigmoid(
  424. ref_points_detach))
  425. dec_out_logits.append(score_head[i](output))
  426. if i == 0:
  427. dec_out_bboxes.append(inter_ref_bbox)
  428. else:
  429. dec_out_bboxes.append(
  430. F.sigmoid(bbox_head[i](output) + inverse_sigmoid(
  431. ref_points)))
  432. ref_points = inter_ref_bbox
  433. ref_points_detach = inter_ref_bbox.detach()
  434. return torch.stack(dec_out_bboxes), torch.stack(dec_out_logits)