nn_fractional_max_pool2d: Applies a 2D fractional max pooling over an input signal composed of several input planes.
Usage
nn_fractional_max_pool2d(
kernel_size,
output_size = NULL,
output_ratio = NULL,
return_indices = FALSE
)
Arguments
kernel_size
the size of the window to take a max over.
Can be a single number k (for a square kernel of k x k) or a tuple (kh, kw)
output_size
the target output size of the image of the form oH x oW
.
Can be a tuple (oH, oW)
or a single number oH for a square image oH x oH
output_ratio
If one wants to have an output size as a ratio of the input size, this option can be given.
This has to be a number or tuple in the range (0, 1)
return_indices
if TRUE
, will return the indices along with the outputs.
Useful to pass to nn_max_unpool2d()
. Default: FALSE
Details
The max-pooling operation is applied in \(kH \times kW\) regions by a stochastic
step size determined by the target output size.
The number of output features is equal to the number of input planes.
Examples
Run this code# NOT RUN {
if (torch_is_installed()) {
}
# }
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