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 | 
Performs an N-D pooling operation.
tf.nn.pool(
    input,
    window_shape,
    pooling_type,
    strides=None,
    padding='VALID',
    data_format=None,
    dilations=None,
    name=None
)
In the case that data_format does not start with "NC", computes for
    0 <= b < batch_size,
    0 <= x[i] < output_spatial_shape[i],
    0 <= c < num_channels:
  output[b, x[0], ..., x[N-1], c] =
    REDUCE_{z[0], ..., z[N-1]}
      input[b,
            x[0] * strides[0] - pad_before[0] + dilation_rate[0]*z[0],
            ...
            x[N-1]*strides[N-1] - pad_before[N-1] + dilation_rate[N-1]*z[N-1],
            c],
where the reduction function REDUCE depends on the value of pooling_type,
and pad_before is defined based on the value of padding as described in
the "returns" section of tf.nn.convolution for details.
The reduction never includes out-of-bounds positions.
In the case that data_format starts with "NC", the input and output are
simply transposed as follows:
  pool(input, data_format, **kwargs) =
    tf.transpose(pool(tf.transpose(input, [0] + range(2,N+2) + [1]),
                      **kwargs),
                 [0, N+1] + range(1, N+1))
Args | |
|---|---|
input
 | 
Tensor of rank N+2, of shape [batch_size] + input_spatial_shape +
[num_channels] if data_format does not start with "NC" (default), or
[batch_size, num_channels] + input_spatial_shape if data_format starts
with "NC".  Pooling happens over the spatial dimensions only.
 | 
window_shape
 | 
Sequence of N ints >= 1. | 
pooling_type
 | 
Specifies pooling operation, must be "AVG" or "MAX". | 
strides
 | 
Optional. Sequence of N ints >= 1. Defaults to [1]N. If any value of strides is > 1, then all values of dilation_rate must be 1. | 
padding
 | 
The padding algorithm, must be "SAME" or "VALID". Defaults to "SAME". See here for more information. | 
data_format
 | 
A string or None.  Specifies whether the channel dimension of
the input and output is the last dimension (default, or if data_format
does not start with "NC"), or the second dimension (if data_format
starts with "NC").  For N=1, the valid values are "NWC" (default) and
"NCW".  For N=2, the valid values are "NHWC" (default) and "NCHW". For
N=3, the valid values are "NDHWC" (default) and "NCDHW".
 | 
dilations
 | 
Optional. Dilation rate. List of N ints >= 1. Defaults to [1]N. If any value of dilation_rate is > 1, then all values of strides must be 1. | 
name
 | 
Optional. Name of the op. | 
Returns | |
|---|---|
| 
Tensor of rank N+2, of shape
  [batch_size] + output_spatial_shape + [num_channels]
 if data_format is None or does not start with "NC", or [batch_size, num_channels] + output_spatial_shape if data_format starts with "NC",
where  If padding = "SAME": output_spatial_shape[i] = ceil(input_spatial_shape[i] / strides[i]) If padding = "VALID": output_spatial_shape[i] = ceil((input_spatial_shape[i] - (window_shape[i] - 1) * dilation_rate[i]) / strides[i]).  | 
Raises | |
|---|---|
ValueError
 | 
if arguments are invalid. | 
    View source on GitHub