Fix fallback nms to output same value as original

main
Uminosachi 2024-08-01 15:29:52 +09:00
parent 1ccb9e462c
commit 3ddf311c64
4 changed files with 60 additions and 40 deletions

View File

@ -3,13 +3,18 @@ from torchvision.ops.boxes import box_iou
def nms(bboxes: torch.Tensor, scores: torch.Tensor, iou_threshold: float) -> torch.Tensor:
order = torch.argsort(-scores).to(bboxes.device)
indices = torch.arange(bboxes.shape[0]).to(bboxes.device)
keep = torch.ones_like(indices, dtype=torch.bool).to(bboxes.device)
for i in indices:
if keep[i]:
bbox = bboxes[order[i]]
iou = box_iou(bbox[None, ...], (bboxes[order[i + 1:]]) * keep[i + 1:][..., None])
overlapped = torch.nonzero(iou > iou_threshold)
keep[overlapped + i + 1] = 0
return order[keep]
order = torch.argsort(-scores)
keep = []
while order.numel() > 0:
i = order[0]
keep.append(i.item())
if order.numel() == 1:
break
ious = box_iou(bboxes[i].unsqueeze(0), bboxes[order[1:]])[0]
mask = ious <= iou_threshold
order = order[1:][mask]
return torch.tensor(keep, device=bboxes.device)

View File

@ -3,13 +3,18 @@ from torchvision.ops.boxes import box_iou
def nms(bboxes: torch.Tensor, scores: torch.Tensor, iou_threshold: float) -> torch.Tensor:
order = torch.argsort(-scores).to(bboxes.device)
indices = torch.arange(bboxes.shape[0]).to(bboxes.device)
keep = torch.ones_like(indices, dtype=torch.bool).to(bboxes.device)
for i in indices:
if keep[i]:
bbox = bboxes[order[i]]
iou = box_iou(bbox[None, ...], (bboxes[order[i + 1:]]) * keep[i + 1:][..., None])
overlapped = torch.nonzero(iou > iou_threshold)
keep[overlapped + i + 1] = 0
return order[keep]
order = torch.argsort(-scores)
keep = []
while order.numel() > 0:
i = order[0]
keep.append(i.item())
if order.numel() == 1:
break
ious = box_iou(bboxes[i].unsqueeze(0), bboxes[order[1:]])[0]
mask = ious <= iou_threshold
order = order[1:][mask]
return torch.tensor(keep, device=bboxes.device)

View File

@ -3,13 +3,18 @@ from torchvision.ops.boxes import box_iou
def nms(bboxes: torch.Tensor, scores: torch.Tensor, iou_threshold: float) -> torch.Tensor:
order = torch.argsort(-scores).to(bboxes.device)
indices = torch.arange(bboxes.shape[0]).to(bboxes.device)
keep = torch.ones_like(indices, dtype=torch.bool).to(bboxes.device)
for i in indices:
if keep[i]:
bbox = bboxes[order[i]]
iou = box_iou(bbox[None, ...], (bboxes[order[i + 1:]]) * keep[i + 1:][..., None])
overlapped = torch.nonzero(iou > iou_threshold)
keep[overlapped + i + 1] = 0
return order[keep]
order = torch.argsort(-scores)
keep = []
while order.numel() > 0:
i = order[0]
keep.append(i.item())
if order.numel() == 1:
break
ious = box_iou(bboxes[i].unsqueeze(0), bboxes[order[1:]])[0]
mask = ious <= iou_threshold
order = order[1:][mask]
return torch.tensor(keep, device=bboxes.device)

View File

@ -3,13 +3,18 @@ from torchvision.ops.boxes import box_iou
def nms(bboxes: torch.Tensor, scores: torch.Tensor, iou_threshold: float) -> torch.Tensor:
order = torch.argsort(-scores).to(bboxes.device)
indices = torch.arange(bboxes.shape[0]).to(bboxes.device)
keep = torch.ones_like(indices, dtype=torch.bool).to(bboxes.device)
for i in indices:
if keep[i]:
bbox = bboxes[order[i]]
iou = box_iou(bbox[None, ...], (bboxes[order[i + 1:]]) * keep[i + 1:][..., None])
overlapped = torch.nonzero(iou > iou_threshold)
keep[overlapped + i + 1] = 0
return order[keep]
order = torch.argsort(-scores)
keep = []
while order.numel() > 0:
i = order[0]
keep.append(i.item())
if order.numel() == 1:
break
ious = box_iou(bboxes[i].unsqueeze(0), bboxes[order[1:]])[0]
mask = ious <= iou_threshold
order = order[1:][mask]
return torch.tensor(keep, device=bboxes.device)