mindspore.dataset.vision.RandomResizedCrop

class mindspore.dataset.vision.RandomResizedCrop(size, scale=(0.08, 1.0), ratio=(3.0 / 4.0, 4.0 / 3.0), interpolation=Inter.BILINEAR, max_attempts=10)[source]

This operation will crop the input image randomly, and resize the cropped image using a selected interpolation mode mindspore.dataset.vision.Inter .

Note

If the input image is more than one, then make sure that the image size is the same.

Parameters
  • size (Union[int, Sequence[int]]) – The output size of the resized image. The size value(s) must be positive. If size is an integer, a square of size (size, size) will be cropped with this value. If size is a sequence of length 2, an image of size (height, width) will be cropped.

  • scale (Union[list, tuple], optional) – Range [min, max) of respective size of the original size to be cropped, which must be non-negative. Default: (0.08, 1.0).

  • ratio (Union[list, tuple], optional) – Range [min, max) of aspect ratio to be cropped, which must be non-negative. Default: (3. / 4., 4. / 3.).

  • interpolation (Inter, optional) –

    Method of interpolation. Default: Inter.BILINEAR. It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC, Inter.AREA, Inter.PILCUBIC].

    • Inter.BILINEAR, means interpolation method is bilinear interpolation.

    • Inter.NEAREST, means interpolation method is nearest-neighbor interpolation.

    • Inter.BICUBIC, means interpolation method is bicubic interpolation.

    • Inter.AREA, means interpolation method is pixel area interpolation.

    • Inter.PILCUBIC, means interpolation method is bicubic interpolation like implemented in pillow, input should be in 3 channels format.

    • Inter.ANTIALIAS, means the interpolation method is antialias interpolation.

  • max_attempts (int, optional) – The maximum number of attempts to propose a valid crop_area. Default: 10. If exceeded, fall back to use center_crop instead.

Raises
Supported Platforms:

CPU

Examples

>>> from mindspore.dataset.vision import Inter
>>> decode_op = vision.Decode()
>>> resize_crop_op = vision.RandomResizedCrop(size=(50, 75), scale=(0.25, 0.5),
...                                           interpolation=Inter.BILINEAR)
>>> transforms_list = [decode_op, resize_crop_op]
>>> image_folder_dataset = image_folder_dataset.map(operations=transforms_list,
...                                                 input_columns=["image"])