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RandomAdjustSharpness

class torchvision.transforms.RandomAdjustSharpness(sharpness_factor, p=0.5)[source]

Adjust the sharpness of the image randomly with a given probability. If the image is torch Tensor, it is expected to have […, 1 or 3, H, W] shape, where … means an arbitrary number of leading dimensions.

Parameters:
  • sharpness_factor (float) – How much to adjust the sharpness. Can be any non-negative number. 0 gives a blurred image, 1 gives the original image while 2 increases the sharpness by a factor of 2.

  • p (float) – probability of the image being sharpened. Default value is 0.5

Examples using RandomAdjustSharpness:

Illustration of transforms

Illustration of transforms
forward(img)[source]
Parameters:

img (PIL Image or Tensor) – Image to be sharpened.

Returns:

Randomly sharpened image.

Return type:

PIL Image or Tensor

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