| import math
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| import torch
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|
|
|
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| def diou_loss(
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| boxes1: torch.Tensor,
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| boxes2: torch.Tensor,
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| reduction: str = "none",
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| eps: float = 1e-7,
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| ) -> torch.Tensor:
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| """
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| Distance Intersection over Union Loss (Zhaohui Zheng et. al)
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| https://arxiv.org/abs/1911.08287
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| Args:
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| boxes1, boxes2 (Tensor): box locations in XYXY format, shape (N, 4) or (4,).
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| reduction: 'none' | 'mean' | 'sum'
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| 'none': No reduction will be applied to the output.
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| 'mean': The output will be averaged.
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| 'sum': The output will be summed.
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| eps (float): small number to prevent division by zero
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| """
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|
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| x1, y1, x2, y2 = boxes1.unbind(dim=-1)
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| x1g, y1g, x2g, y2g = boxes2.unbind(dim=-1)
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|
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|
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| assert (x2 >= x1).all(), "bad box: x1 larger than x2"
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| assert (y2 >= y1).all(), "bad box: y1 larger than y2"
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|
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| xkis1 = torch.max(x1, x1g)
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| ykis1 = torch.max(y1, y1g)
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| xkis2 = torch.min(x2, x2g)
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| ykis2 = torch.min(y2, y2g)
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|
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| intsct = torch.zeros_like(x1)
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| mask = (ykis2 > ykis1) & (xkis2 > xkis1)
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| intsct[mask] = (xkis2[mask] - xkis1[mask]) * (ykis2[mask] - ykis1[mask])
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| union = (x2 - x1) * (y2 - y1) + (x2g - x1g) * (y2g - y1g) - intsct + eps
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| iou = intsct / union
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|
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|
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| xc1 = torch.min(x1, x1g)
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| yc1 = torch.min(y1, y1g)
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| xc2 = torch.max(x2, x2g)
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| yc2 = torch.max(y2, y2g)
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| diag_len = ((xc2 - xc1) ** 2) + ((yc2 - yc1) ** 2) + eps
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|
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| x_p = (x2 + x1) / 2
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| y_p = (y2 + y1) / 2
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| x_g = (x1g + x2g) / 2
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| y_g = (y1g + y2g) / 2
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| distance = ((x_p - x_g) ** 2) + ((y_p - y_g) ** 2)
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|
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| loss = 1 - iou + (distance / diag_len)
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| if reduction == "mean":
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| loss = loss.mean() if loss.numel() > 0 else 0.0 * loss.sum()
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| elif reduction == "sum":
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| loss = loss.sum()
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|
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| return loss
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|
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|
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| def ciou_loss(
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| boxes1: torch.Tensor,
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| boxes2: torch.Tensor,
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| reduction: str = "none",
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| eps: float = 1e-7,
|
| ) -> torch.Tensor:
|
| """
|
| Complete Intersection over Union Loss (Zhaohui Zheng et. al)
|
| https://arxiv.org/abs/1911.08287
|
| Args:
|
| boxes1, boxes2 (Tensor): box locations in XYXY format, shape (N, 4) or (4,).
|
| reduction: 'none' | 'mean' | 'sum'
|
| 'none': No reduction will be applied to the output.
|
| 'mean': The output will be averaged.
|
| 'sum': The output will be summed.
|
| eps (float): small number to prevent division by zero
|
| """
|
|
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| x1, y1, x2, y2 = boxes1.unbind(dim=-1)
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| x1g, y1g, x2g, y2g = boxes2.unbind(dim=-1)
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|
|
|
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| assert (x2 >= x1).all(), "bad box: x1 larger than x2"
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| assert (y2 >= y1).all(), "bad box: y1 larger than y2"
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|
|
|
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| xkis1 = torch.max(x1, x1g)
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| ykis1 = torch.max(y1, y1g)
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| xkis2 = torch.min(x2, x2g)
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| ykis2 = torch.min(y2, y2g)
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|
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| intsct = torch.zeros_like(x1)
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| mask = (ykis2 > ykis1) & (xkis2 > xkis1)
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| intsct[mask] = (xkis2[mask] - xkis1[mask]) * (ykis2[mask] - ykis1[mask])
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| union = (x2 - x1) * (y2 - y1) + (x2g - x1g) * (y2g - y1g) - intsct + eps
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| iou = intsct / union
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|
|
|
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| xc1 = torch.min(x1, x1g)
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| yc1 = torch.min(y1, y1g)
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| xc2 = torch.max(x2, x2g)
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| yc2 = torch.max(y2, y2g)
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| diag_len = ((xc2 - xc1) ** 2) + ((yc2 - yc1) ** 2) + eps
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|
|
|
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| x_p = (x2 + x1) / 2
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| y_p = (y2 + y1) / 2
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| x_g = (x1g + x2g) / 2
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| y_g = (y1g + y2g) / 2
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| distance = ((x_p - x_g) ** 2) + ((y_p - y_g) ** 2)
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|
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|
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| w_pred = x2 - x1
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| h_pred = y2 - y1
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| w_gt = x2g - x1g
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| h_gt = y2g - y1g
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| v = (4 / (math.pi**2)) * torch.pow((torch.atan(w_gt / h_gt) - torch.atan(w_pred / h_pred)), 2)
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| with torch.no_grad():
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| alpha = v / (1 - iou + v + eps)
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|
|
|
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| loss = 1 - iou + (distance / diag_len) + alpha * v
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| if reduction == "mean":
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| loss = loss.mean() if loss.numel() > 0 else 0.0 * loss.sum()
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| elif reduction == "sum":
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| loss = loss.sum()
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|
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| return loss
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|
|