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A preprocessing layer which randomly crops images during training.
tf.keras.layers.RandomCrop(
height, width, seed=None, **kwargs
)
During training, this layer will randomly choose a location to crop images down to a target size. The layer will crop all the images in the same batch to the same cropping location.
At inference time, and during training if an input image is smaller than the
target size, the input will be resized and cropped so as to return the largest
possible window in the image that matches the target aspect ratio. If you need
to apply random cropping at inference time, set training
to True when
calling the layer.
Input pixel values can be of any range (e.g. [0., 1.)
or [0, 255]
) and
of interger or floating point dtype. By default, the layer will output floats.
For an overview and full list of preprocessing layers, see the preprocessing guide.
Input shape | |
---|---|
3D (unbatched) or 4D (batched) tensor with shape:
(..., height, width, channels) , in "channels_last" format.
|
Output shape | |
---|---|
3D (unbatched) or 4D (batched) tensor with shape:
(..., target_height, target_width, channels) .
|
Args | |
---|---|
height
|
Integer, the height of the output shape. |
width
|
Integer, the width of the output shape. |
seed
|
Integer. Used to create a random seed. |