| import torch
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| def flow_loss_func(flow_preds, flow_gt, valid,
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| gamma=0.9,
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| max_flow=400,
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| **kwargs,
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| ):
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| n_predictions = len(flow_preds)
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| flow_loss = 0.0
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| mag = torch.sum(flow_gt ** 2, dim=1).sqrt()
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| valid = (valid >= 0.5) & (mag < max_flow)
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|
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| for i in range(n_predictions):
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| i_weight = gamma ** (n_predictions - i - 1)
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|
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| i_loss = (flow_preds[i] - flow_gt).abs()
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|
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| flow_loss += i_weight * (valid[:, None] * i_loss).mean()
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| epe = torch.sum((flow_preds[-1] - flow_gt) ** 2, dim=1).sqrt()
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|
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| if valid.max() < 0.5:
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| pass
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| epe = epe.view(-1)[valid.view(-1)]
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| metrics = {
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| 'epe': epe.mean().item(),
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| '1px': (epe > 1).float().mean().item(),
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| '3px': (epe > 3).float().mean().item(),
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| '5px': (epe > 5).float().mean().item(),
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| }
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| return flow_loss, metrics
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|