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from typing import List |
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import torch |
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import torch.nn as nn |
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import torch.nn.functional as F |
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from transformers import PreTrainedModel, AutoConfig, AutoModelForCausalLM |
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from .segment_anything import build_sam_vit_h |
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from .unilm.beit3.modeling_utils import BEiT3Wrapper, _get_base_config, _get_large_config |
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from .configuration_evf import EvfConfig |
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def dice_loss( |
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inputs: torch.Tensor, |
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targets: torch.Tensor, |
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num_masks: float, |
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scale=1000, |
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eps=1e-6, |
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): |
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""" |
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Compute the DICE loss, similar to generalized IOU for masks |
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Args: |
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inputs: A float tensor of arbitrary shape. |
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The predictions for each example. |
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targets: A float tensor with the same shape as inputs. Stores the binary |
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classification label for each element in inputs |
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(0 for the negative class and 1 for the positive class). |
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""" |
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inputs = inputs.sigmoid() |
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inputs = inputs.flatten(1, 2) |
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targets = targets.flatten(1, 2) |
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numerator = 2 * (inputs / scale * targets).sum(-1) |
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denominator = (inputs / scale).sum(-1) + (targets / scale).sum(-1) |
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loss = 1 - (numerator + eps) / (denominator + eps) |
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loss = loss.sum() / (num_masks + 1e-8) |
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return loss |
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def sigmoid_ce_loss( |
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inputs: torch.Tensor, |
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targets: torch.Tensor, |
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num_masks: float, |
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): |
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""" |
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Args: |
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inputs: A float tensor of arbitrary shape. |
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The predictions for each example. |
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targets: A float tensor with the same shape as inputs. Stores the binary |
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classification label for each element in inputs |
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(0 for the negative class and 1 for the positive class). |
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Returns: |
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Loss tensor |
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""" |
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loss = F.binary_cross_entropy_with_logits(inputs, targets, reduction="none") |
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loss = loss.flatten(1, 2).mean(1).sum() / (num_masks + 1e-8) |
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return loss |
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class EvfSamModel(PreTrainedModel): |
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config_class = EvfConfig |
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def __init__( |
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self, |
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config, |
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**kwargs |
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): |
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super(EvfSamModel, self).__init__(config) |
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self.config = config |
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self.vision_pretrained = kwargs.get("vision_pretrained", None) |
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self.encoder_pretrained = kwargs.get("encoder_pretrained", None) |
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self.dice_loss_weight = kwargs.get("dice_loss_weight", None) |
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self.bce_loss_weight = kwargs.get("bce_loss_weight", None) |
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self.train_mask_decoder = kwargs.get("train_mask_decoder", False) |
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self.train_prompt_encoder = kwargs.get("train_prompt_encoder", False) |
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self.initialize_evf_modules(config) |
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def initialize_evf_modules(self, config): |
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if config.sam_scale=="huge": |
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self.visual_model = build_sam_vit_h(self.vision_pretrained) |
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else: |
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raise NotImplementedError |
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for param in self.visual_model.parameters(): |
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param.requires_grad = False |
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if self.train_mask_decoder: |
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self.visual_model.mask_decoder.train() |
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for param in self.visual_model.mask_decoder.parameters(): |
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param.requires_grad = True |
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if self.train_prompt_encoder: |
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self.visual_model.prompt_encoder.no_mask_embed.requires_grad_(True) |
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if self.config.mm_extractor_scale == "base": |
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beit_config = _get_base_config() |
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elif self.config.mm_extractor_scale == "large": |
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beit_config = _get_large_config() |
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else: |
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raise AttributeError(f"model config should contain key 'mm_extractor_scale', with value 'base' or 'large'.") |
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self.mm_extractor = BEiT3Wrapper(beit_config) |
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if self.encoder_pretrained is not None: |
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beit_state_dict = torch.load(self.encoder_pretrained)["model"] |
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self.mm_extractor.load_state_dict( |
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beit_state_dict, |
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strict=False |
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) |
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for param in self.mm_extractor.parameters(): |
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param.requires_grad = True |
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in_dim = config.hidden_size |
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assert in_dim==beit_config.encoder_embed_dim, \ |
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f"projection layer dim {in_dim} mismatch with mm_extractor dim {beit_config.encoder_embed_dim}" |
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out_dim = config.out_dim |
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text_fc = [ |
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nn.Linear(in_dim, in_dim), |
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nn.ReLU(), |
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nn.Linear(in_dim, out_dim) |
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] |
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self.text_hidden_fcs = nn.ModuleList([nn.Sequential(*text_fc)]) |
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self.text_hidden_fcs.train() |
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for param in self.text_hidden_fcs.parameters(): |
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param.requires_grad = True |
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def get_visual_embs(self, pixel_values: torch.FloatTensor): |
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with torch.no_grad(): |
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image_embeddings_list = [] |
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for i in range(pixel_values.shape[0]): |
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torch.cuda.empty_cache() |
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image_embeddings = self.visual_model.image_encoder( |
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pixel_values[i].unsqueeze(0) |
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) |
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image_embeddings_list.append(image_embeddings) |
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torch.cuda.empty_cache() |
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image_embeddings = torch.cat(image_embeddings_list, 0) |
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return image_embeddings |
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def forward( |
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self, |
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images: torch.FloatTensor, |
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images_evf: torch.FloatTensor, |
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input_ids: torch.LongTensor, |
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attention_masks: torch.LongTensor, |
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offset: torch.LongTensor, |
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masks_list: List[torch.FloatTensor], |
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label_list: List[torch.Tensor], |
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resize_list: List[tuple], |
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inference: bool = False, |
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**kwargs, |
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): |
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image_embeddings = self.get_visual_embs(images) |
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batch_size = image_embeddings.shape[0] |
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assert batch_size == len(offset) - 1 |
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images_evf_list = [] |
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for i in range(len(offset) - 1): |
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start_i, end_i = offset[i], offset[i + 1] |
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images_evf_i = ( |
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images_evf[i] |
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.unsqueeze(0) |
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.expand(end_i - start_i, -1, -1, -1) |
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.contiguous() |
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) |
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images_evf_list.append(images_evf_i) |
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images_evf = torch.cat(images_evf_list, dim=0) |
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multimask_output = False |
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output = self.mm_extractor.beit3( |
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visual_tokens=images_evf, |
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textual_tokens=input_ids, |
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text_padding_position=~attention_masks |
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) |
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feat = output["encoder_out"][:, :1, ...] |
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feat = self.text_hidden_fcs[0](feat) |
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feat = torch.split(feat, [offset[i+1] - offset[i] for i in range(len(offset)-1)]) |
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pred_masks = [] |
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for i in range(len(feat)): |
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( |
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sparse_embeddings, |
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dense_embeddings, |
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) = self.visual_model.prompt_encoder( |
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points=None, |
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boxes=None, |
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masks=None, |
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text_embeds=feat[i], |
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) |
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sparse_embeddings = sparse_embeddings.to(feat[i].dtype) |
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low_res_masks, iou_predictions = self.visual_model.mask_decoder( |
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image_embeddings=image_embeddings[i].unsqueeze(0), |
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image_pe=self.visual_model.prompt_encoder.get_dense_pe(), |
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sparse_prompt_embeddings=sparse_embeddings, |
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dense_prompt_embeddings=dense_embeddings, |
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multimask_output=multimask_output, |
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) |
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if multimask_output: |
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sorted_ids = torch.argsort(iou_predictions, dim=-1, descending=True) |
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low_res_masks = torch.take_along_dim(low_res_masks, sorted_ids[..., None, None], dim=1)[:, :1] |
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pred_mask = self.visual_model.postprocess_masks( |
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low_res_masks, |
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input_size=resize_list[i], |
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original_size=label_list[i].shape, |
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) |
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pred_masks.append(pred_mask[:, 0]) |
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gt_masks = masks_list |
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if inference: |
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return { |
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"pred_masks": pred_masks, |
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"gt_masks": gt_masks, |
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} |
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mask_bce_loss = 0 |
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mask_dice_loss = 0 |
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num_masks = 0 |
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for batch_idx in range(len(pred_masks)): |
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gt_mask = gt_masks[batch_idx] |
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pred_mask = pred_masks[batch_idx] |
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assert ( |
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gt_mask.shape[0] == pred_mask.shape[0] |
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), "gt_mask.shape: {}, pred_mask.shape: {}".format( |
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gt_mask.shape, pred_mask.shape |
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) |
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mask_bce_loss += ( |
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sigmoid_ce_loss(pred_mask, gt_mask, num_masks=gt_mask.shape[0]) |
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* gt_mask.shape[0] |
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) |
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mask_dice_loss += ( |
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dice_loss(pred_mask, gt_mask, num_masks=gt_mask.shape[0]) |
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* gt_mask.shape[0] |
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) |
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num_masks += gt_mask.shape[0] |
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mask_bce_loss = self.bce_loss_weight * mask_bce_loss / (num_masks + 1e-8) |
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mask_dice_loss = self.dice_loss_weight * mask_dice_loss / (num_masks + 1e-8) |
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mask_loss = mask_bce_loss + mask_dice_loss |
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loss = mask_loss |
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return { |
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"loss": loss, |
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"mask_bce_loss": mask_bce_loss, |
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"mask_dice_loss": mask_dice_loss, |
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"mask_loss": mask_loss, |
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} |
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def inference( |
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self, |
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images, |
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images_evf, |
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input_ids, |
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resize_list, |
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original_size_list, |
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multimask_output=False, |
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): |
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with torch.no_grad(): |
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image_embeddings = self.visual_model.image_encoder(images) |
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multimask_output = multimask_output |
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output = self.mm_extractor.beit3(visual_tokens=images_evf, textual_tokens=input_ids, text_padding_position=torch.zeros_like(input_ids)) |
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feat = output["encoder_out"][:, :1, ...] |
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feat = self.text_hidden_fcs[0](feat) |
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( |
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sparse_embeddings, |
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dense_embeddings, |
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) = self.visual_model.prompt_encoder( |
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points=None, |
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boxes=None, |
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masks=None, |
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text_embeds=feat, |
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) |
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sparse_embeddings = sparse_embeddings.to(feat.dtype) |
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low_res_masks, iou_predictions = self.visual_model.mask_decoder( |
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image_embeddings=image_embeddings, |
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image_pe=self.visual_model.prompt_encoder.get_dense_pe(), |
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sparse_prompt_embeddings=sparse_embeddings, |
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dense_prompt_embeddings=dense_embeddings, |
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multimask_output=multimask_output, |
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) |
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if multimask_output: |
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sorted_ids = torch.argsort(iou_predictions, dim=-1, descending=True) |
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low_res_masks = torch.take_along_dim(low_res_masks, sorted_ids[..., None, None], dim=1)[:, :1] |
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pred_mask = self.visual_model.postprocess_masks( |
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low_res_masks, |
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input_size=resize_list[0], |
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original_size=original_size_list[0], |
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) |
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return pred_mask[:, 0] |
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AutoConfig.register("evf", EvfConfig) |
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AutoModelForCausalLM.register(EvfConfig, EvfSamModel) |