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import random |
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from typing import Tuple |
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import torch |
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from torch import nn |
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from torch.nn import functional as F |
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from detectron2.config import CfgNode |
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from densepose.structures.mesh import create_mesh |
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from .utils import sample_random_indices |
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class ShapeToShapeCycleLoss(nn.Module): |
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""" |
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Cycle Loss for Shapes. |
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Inspired by: |
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"Mapping in a Cycle: Sinkhorn Regularized Unsupervised Learning for Point Cloud Shapes". |
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""" |
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def __init__(self, cfg: CfgNode): |
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super().__init__() |
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self.shape_names = list(cfg.MODEL.ROI_DENSEPOSE_HEAD.CSE.EMBEDDERS.keys()) |
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self.all_shape_pairs = [ |
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(x, y) for i, x in enumerate(self.shape_names) for y in self.shape_names[i + 1 :] |
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] |
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random.shuffle(self.all_shape_pairs) |
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self.cur_pos = 0 |
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self.norm_p = cfg.MODEL.ROI_DENSEPOSE_HEAD.CSE.SHAPE_TO_SHAPE_CYCLE_LOSS.NORM_P |
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self.temperature = cfg.MODEL.ROI_DENSEPOSE_HEAD.CSE.SHAPE_TO_SHAPE_CYCLE_LOSS.TEMPERATURE |
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self.max_num_vertices = ( |
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cfg.MODEL.ROI_DENSEPOSE_HEAD.CSE.SHAPE_TO_SHAPE_CYCLE_LOSS.MAX_NUM_VERTICES |
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) |
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def _sample_random_pair(self) -> Tuple[str, str]: |
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""" |
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Produce a random pair of different mesh names |
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Return: |
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tuple(str, str): a pair of different mesh names |
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""" |
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if self.cur_pos >= len(self.all_shape_pairs): |
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random.shuffle(self.all_shape_pairs) |
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self.cur_pos = 0 |
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shape_pair = self.all_shape_pairs[self.cur_pos] |
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self.cur_pos += 1 |
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return shape_pair |
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def forward(self, embedder: nn.Module): |
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""" |
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Do a forward pass with a random pair (src, dst) pair of shapes |
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Args: |
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embedder (nn.Module): module that computes vertex embeddings for different meshes |
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""" |
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src_mesh_name, dst_mesh_name = self._sample_random_pair() |
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return self._forward_one_pair(embedder, src_mesh_name, dst_mesh_name) |
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def fake_value(self, embedder: nn.Module): |
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losses = [] |
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for mesh_name in embedder.mesh_names: |
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losses.append(embedder(mesh_name).sum() * 0) |
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return torch.mean(torch.stack(losses)) |
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def _get_embeddings_and_geodists_for_mesh( |
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self, embedder: nn.Module, mesh_name: str |
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) -> Tuple[torch.Tensor, torch.Tensor]: |
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""" |
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Produces embeddings and geodesic distance tensors for a given mesh. May subsample |
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the mesh, if it contains too many vertices (controlled by |
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SHAPE_CYCLE_LOSS_MAX_NUM_VERTICES parameter). |
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Args: |
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embedder (nn.Module): module that computes embeddings for mesh vertices |
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mesh_name (str): mesh name |
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Return: |
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embeddings (torch.Tensor of size [N, D]): embeddings for selected mesh |
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vertices (N = number of selected vertices, D = embedding space dim) |
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geodists (torch.Tensor of size [N, N]): geodesic distances for the selected |
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mesh vertices (N = number of selected vertices) |
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""" |
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embeddings = embedder(mesh_name) |
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indices = sample_random_indices( |
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embeddings.shape[0], self.max_num_vertices, embeddings.device |
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) |
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mesh = create_mesh(mesh_name, embeddings.device) |
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geodists = mesh.geodists |
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if indices is not None: |
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embeddings = embeddings[indices] |
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geodists = geodists[torch.meshgrid(indices, indices)] |
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return embeddings, geodists |
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def _forward_one_pair( |
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self, embedder: nn.Module, mesh_name_1: str, mesh_name_2: str |
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) -> torch.Tensor: |
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""" |
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Do a forward pass with a selected pair of meshes |
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Args: |
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embedder (nn.Module): module that computes vertex embeddings for different meshes |
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mesh_name_1 (str): first mesh name |
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mesh_name_2 (str): second mesh name |
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Return: |
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Tensor containing the loss value |
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""" |
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embeddings_1, geodists_1 = self._get_embeddings_and_geodists_for_mesh(embedder, mesh_name_1) |
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embeddings_2, geodists_2 = self._get_embeddings_and_geodists_for_mesh(embedder, mesh_name_2) |
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sim_matrix_12 = embeddings_1.mm(embeddings_2.T) |
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c_12 = F.softmax(sim_matrix_12 / self.temperature, dim=1) |
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c_21 = F.softmax(sim_matrix_12.T / self.temperature, dim=1) |
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c_11 = c_12.mm(c_21) |
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c_22 = c_21.mm(c_12) |
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loss_cycle_11 = torch.norm(geodists_1 * c_11, p=self.norm_p) |
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loss_cycle_22 = torch.norm(geodists_2 * c_22, p=self.norm_p) |
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return loss_cycle_11 + loss_cycle_22 |
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