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from einops.einops import rearrange |
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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 romatch.utils.utils import get_gt_warp |
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import wandb |
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import romatch |
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import math |
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class RobustLosses(nn.Module): |
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def __init__( |
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self, |
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robust=False, |
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center_coords=False, |
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scale_normalize=False, |
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ce_weight=0.01, |
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local_loss=True, |
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local_dist=None, |
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smooth_mask = False, |
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depth_interpolation_mode = "bilinear", |
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mask_depth_loss = False, |
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relative_depth_error_threshold = 0.05, |
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alpha = 1., |
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c = 1e-3, |
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epe_mask_prob_th = None, |
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cert_only_on_consistent_depth = False, |
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): |
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super().__init__() |
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if local_dist is None: |
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local_dist = {} |
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self.robust = robust |
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self.center_coords = center_coords |
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self.scale_normalize = scale_normalize |
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self.ce_weight = ce_weight |
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self.local_loss = local_loss |
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self.local_dist = local_dist |
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self.smooth_mask = smooth_mask |
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self.depth_interpolation_mode = depth_interpolation_mode |
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self.mask_depth_loss = mask_depth_loss |
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self.relative_depth_error_threshold = relative_depth_error_threshold |
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self.avg_overlap = dict() |
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self.alpha = alpha |
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self.c = c |
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self.epe_mask_prob_th = epe_mask_prob_th |
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self.cert_only_on_consistent_depth = cert_only_on_consistent_depth |
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def corr_volume_loss(self, mnn:torch.Tensor, corr_volume:torch.Tensor, scale): |
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b, h,w, h,w = corr_volume.shape |
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inv_temp = 10 |
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corr_volume = corr_volume.reshape(-1, h*w, h*w) |
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nll = -(inv_temp*corr_volume).log_softmax(dim = 1) - (inv_temp*corr_volume).log_softmax(dim = 2) |
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corr_volume_loss = nll[mnn[:,0], mnn[:,1], mnn[:,2]].mean() |
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losses = { |
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f"gm_corr_volume_loss_{scale}": corr_volume_loss.mean(), |
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} |
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wandb.log(losses, step = romatch.GLOBAL_STEP) |
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return losses |
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def regression_loss(self, x2, prob, flow, certainty, scale, eps=1e-8, mode = "delta"): |
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epe = (flow.permute(0,2,3,1) - x2).norm(dim=-1) |
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if scale in self.local_dist: |
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prob = prob * (epe < (2 / 512) * (self.local_dist[scale] * scale)).float() |
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if scale == 1: |
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pck_05 = (epe[prob > 0.99] < 0.5 * (2/512)).float().mean() |
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wandb.log({"train_pck_05": pck_05}, step = romatch.GLOBAL_STEP) |
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if self.epe_mask_prob_th is not None: |
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gt_cert = prob * (epe < scale * self.epe_mask_prob_th) |
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else: |
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gt_cert = prob |
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if self.cert_only_on_consistent_depth: |
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ce_loss = F.binary_cross_entropy_with_logits(certainty[:, 0][prob > 0], gt_cert[prob > 0]) |
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else: |
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ce_loss = F.binary_cross_entropy_with_logits(certainty[:, 0], gt_cert) |
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a = self.alpha[scale] if isinstance(self.alpha, dict) else self.alpha |
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cs = self.c * scale |
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x = epe[prob > 0.99] |
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reg_loss = cs**a * ((x/(cs))**2 + 1**2)**(a/2) |
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if not torch.any(reg_loss): |
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reg_loss = (ce_loss * 0.0) |
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losses = { |
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f"{mode}_certainty_loss_{scale}": ce_loss.mean(), |
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f"{mode}_regression_loss_{scale}": reg_loss.mean(), |
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} |
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wandb.log(losses, step = romatch.GLOBAL_STEP) |
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return losses |
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def forward(self, corresps, batch): |
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scales = list(corresps.keys()) |
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tot_loss = 0.0 |
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for scale in scales: |
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scale_corresps = corresps[scale] |
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scale_certainty, flow_pre_delta, delta_cls, offset_scale, scale_gm_corr_volume, scale_gm_certainty, flow, scale_gm_flow = ( |
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scale_corresps["certainty"], |
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scale_corresps.get("flow_pre_delta"), |
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scale_corresps.get("delta_cls"), |
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scale_corresps.get("offset_scale"), |
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scale_corresps.get("corr_volume"), |
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scale_corresps.get("gm_certainty"), |
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scale_corresps["flow"], |
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scale_corresps.get("gm_flow"), |
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) |
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if flow_pre_delta is not None: |
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flow_pre_delta = rearrange(flow_pre_delta, "b d h w -> b h w d") |
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b, h, w, d = flow_pre_delta.shape |
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else: |
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b, _, h, w = scale_certainty.shape |
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gt_warp, gt_prob = get_gt_warp( |
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batch["im_A_depth"], |
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batch["im_B_depth"], |
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batch["T_1to2"], |
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batch["K1"], |
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batch["K2"], |
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H=h, |
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W=w, |
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) |
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x2 = gt_warp.float() |
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prob = gt_prob |
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if scale_gm_corr_volume is not None: |
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gt_warp_back, _ = get_gt_warp( |
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batch["im_B_depth"], |
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batch["im_A_depth"], |
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batch["T_1to2"].inverse(), |
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batch["K2"], |
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batch["K1"], |
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H=h, |
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W=w, |
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) |
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grid = torch.stack(torch.meshgrid(torch.linspace(-1+1/w, 1-1/w, w), torch.linspace(-1+1/h, 1-1/h, h), indexing='xy'), dim =-1).to(gt_warp.device) |
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with torch.no_grad(): |
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D_B = torch.cdist(gt_warp.float().reshape(-1,h*w,2), grid.reshape(-1,h*w,2)) |
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D_A = torch.cdist(grid.reshape(-1,h*w,2), gt_warp_back.float().reshape(-1,h*w,2)) |
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inds = torch.nonzero((D_B == D_B.min(dim=-1, keepdim = True).values) |
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* (D_A == D_A.min(dim=-2, keepdim = True).values) |
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* (D_B < 0.01) |
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* (D_A < 0.01)) |
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gm_cls_losses = self.corr_volume_loss(inds, scale_gm_corr_volume, scale) |
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gm_loss = gm_cls_losses[f"gm_corr_volume_loss_{scale}"] |
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tot_loss = tot_loss + gm_loss |
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elif scale_gm_flow is not None: |
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gm_flow_losses = self.regression_loss(x2, prob, scale_gm_flow, scale_gm_certainty, scale, mode = "gm") |
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gm_loss = self.ce_weight * gm_flow_losses[f"gm_certainty_loss_{scale}"] + gm_flow_losses[f"gm_regression_loss_{scale}"] |
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tot_loss = tot_loss + gm_loss |
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delta_regression_losses = self.regression_loss(x2, prob, flow, scale_certainty, scale) |
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reg_loss = self.ce_weight * delta_regression_losses[f"delta_certainty_loss_{scale}"] + delta_regression_losses[f"delta_regression_loss_{scale}"] |
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tot_loss = tot_loss + reg_loss |
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return tot_loss |
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