TensorFlow 1 version | View source on GitHub |
Extract patches
from images
.
tf.image.extract_patches(
images, sizes, strides, rates, padding, name=None
)
This op collects patches from the input image, as if applying a convolution. All extracted patches are stacked in the depth (last) dimension of the output.
Specifically, the op extracts patches of shape sizes
which are strides
apart in the input image. The output is subsampled using the rates
argument,
in the same manner as "atrous" or "dilated" convolutions.
The result is a 4D tensor which is indexed by batch, row, and column.
output[i, x, y]
contains a flattened patch of size sizes[1], sizes[2]
which is taken from the input starting at
images[i, x*strides[1], y*strides[2]]
.
Each output patch can be reshaped to sizes[1], sizes[2], depth
, where
depth
is images.shape[3]
.
The output elements are taken from the input at intervals given by the rate
argument, as in dilated convolutions.
The padding
argument has no effect on the size of each patch, it determines
how many patches are extracted. If VALID
, only patches which are fully
contained in the input image are included. If SAME
, all patches whose
starting point is inside the input are included, and areas outside the input
default to zero.
Example:
n = 10
# images is a 1 x 10 x 10 x 1 array that contains the numbers 1 through 100
images = [[[[x * n + y + 1] for y in range(n)] for x in range(n)]]
# We generate two outputs as follows:
# 1. 3x3 patches with stride length 5
# 2. Same as above, but the rate is increased to 2
tf.image.extract_patches(images=images,
sizes=[1, 3, 3, 1],
strides=[1, 5, 5, 1],
rates=[1, 1, 1, 1],
padding='VALID')
# Yields:
[[[[ 1 2 3 11 12 13 21 22 23]
[ 6 7 8 16 17 18 26 27 28]]
[[51 52 53 61 62 63 71 72 73]
[56 57 58 66 67 68 76 77 78]]]]
If we mark the pixels in the input image which are taken for the output with
*
, we see the pattern:
* * * 4 5 * * * 9 10
* * * 14 15 * * * 19 20
* * * 24 25 * * * 29 30
31 32 33 34 35 36 37 38 39 40
41 42 43 44 45 46 47 48 49 50
* * * 54 55 * * * 59 60
* * * 64 65 * * * 69 70
* * * 74 75 * * * 79 80
81 82 83 84 85 86 87 88 89 90
91 92 93 94 95 96 97 98 99 100
tf.image.extract_patches(images=images,
sizes=[1, 3, 3, 1],
strides=[1, 5, 5, 1],
rates=[1, 2, 2, 1],
padding='VALID')
# Yields:
[[[[ 1 3 5 21 23 25 41 43 45]
[ 6 8 10 26 28 30 46 48 50]]
[[ 51 53 55 71 73 75 91 93 95]
[ 56 58 60 76 78 80 96 98 100]]]]
We can again draw the effect, this time using the symbols *
, x
, +
and
o
to distinguish the patches:
* 2 * 4 * x 7 x 9 x
11 12 13 14 15 16 17 18 19 20
* 22 * 24 * x 27 x 29 x
31 32 33 34 35 36 37 38 39 40
* 42 * 44 * x 47 x 49 x
+ 52 + 54 + o 57 o 59 o
61 62 63 64 65 66 67 68 69 70
+ 72 + 74 + o 77 o 79 o
81 82 83 84 85 86 87 88 89 90
+ 92 + 94 + o 97 o 99 o
Args | ||
---|---|---|
images
|
A 4-D Tensor with shape [batch, in_rows, in_cols, depth]
</td>
</tr><tr>
<td> sizes</td>
<td>
The size of the extracted patches. Must be [1, size_rows, size_cols,
1].
</td>
</tr><tr>
<td> strides</td>
<td>
A 1-D Tensor of length 4. How far the centers of two consecutive
patches are in the images. Must be: [1, stride_rows, stride_cols, 1].
</td>
</tr><tr>
<td> rates</td>
<td>
A 1-D Tensor of length 4. Must be: [1, rate_rows, rate_cols, 1].
This is the input stride, specifying how far two consecutive patch samples
are in the input. Equivalent to extracting patches with patch_sizes_eff =
patch_sizes + (patch_sizes - 1) * (rates - 1), followed by subsampling
them spatially by a factor of rates. This is equivalent to ratein
dilated (a.k.a. Atrous) convolutions.
</td>
</tr><tr>
<td> padding</td>
<td>
The type of padding algorithm to use.
</td>
</tr><tr>
<td> name`
|
A name for the operation (optional). |
Returns | |
---|---|
A 4-D Tensor of the same type as the input. |