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| import torch
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| from torch.nn import functional as F
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| from detectron2.structures import Instances, ROIMasks
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| def detector_postprocess(
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| results: Instances, output_height: int, output_width: int, mask_threshold: float = 0.5
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| ):
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| """
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| Resize the output instances.
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| The input images are often resized when entering an object detector.
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| As a result, we often need the outputs of the detector in a different
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| resolution from its inputs.
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| This function will resize the raw outputs of an R-CNN detector
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| to produce outputs according to the desired output resolution.
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| Args:
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| results (Instances): the raw outputs from the detector.
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| `results.image_size` contains the input image resolution the detector sees.
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| This object might be modified in-place.
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| output_height, output_width: the desired output resolution.
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| Returns:
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| Instances: the resized output from the model, based on the output resolution
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| """
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| if isinstance(output_width, torch.Tensor):
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| output_width_tmp = output_width.float()
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| output_height_tmp = output_height.float()
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| new_size = torch.stack([output_height, output_width])
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| else:
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| new_size = (output_height, output_width)
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| output_width_tmp = output_width
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| output_height_tmp = output_height
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| scale_x, scale_y = (
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| output_width_tmp / results.image_size[1],
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| output_height_tmp / results.image_size[0],
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| )
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| results = Instances(new_size, **results.get_fields())
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| if results.has("pred_boxes"):
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| output_boxes = results.pred_boxes
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| elif results.has("proposal_boxes"):
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| output_boxes = results.proposal_boxes
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| else:
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| output_boxes = None
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| assert output_boxes is not None, "Predictions must contain boxes!"
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| output_boxes.scale(scale_x, scale_y)
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| output_boxes.clip(results.image_size)
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| results = results[output_boxes.nonempty()]
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| if results.has("pred_masks"):
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| if isinstance(results.pred_masks, ROIMasks):
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| roi_masks = results.pred_masks
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| else:
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| roi_masks = ROIMasks(results.pred_masks[:, 0, :, :])
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| results.pred_masks = roi_masks.to_bitmasks(
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| results.pred_boxes, output_height, output_width, mask_threshold
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| ).tensor
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| if results.has("pred_keypoints"):
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| results.pred_keypoints[:, :, 0] *= scale_x
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| results.pred_keypoints[:, :, 1] *= scale_y
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| return results
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| def sem_seg_postprocess(result, img_size, output_height, output_width):
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| """
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| Return semantic segmentation predictions in the original resolution.
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| The input images are often resized when entering semantic segmentor. Moreover, in same
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| cases, they also padded inside segmentor to be divisible by maximum network stride.
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| As a result, we often need the predictions of the segmentor in a different
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| resolution from its inputs.
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| Args:
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| result (Tensor): semantic segmentation prediction logits. A tensor of shape (C, H, W),
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| where C is the number of classes, and H, W are the height and width of the prediction.
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| img_size (tuple): image size that segmentor is taking as input.
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| output_height, output_width: the desired output resolution.
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| Returns:
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| semantic segmentation prediction (Tensor): A tensor of the shape
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| (C, output_height, output_width) that contains per-pixel soft predictions.
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| """
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| result = result[:, : img_size[0], : img_size[1]].expand(1, -1, -1, -1)
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| result = F.interpolate(
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| result, size=(output_height, output_width), mode="bilinear", align_corners=False
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| )[0]
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| return result
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