How can I add a resizing layer to
model = Sequential()
using
model.add(...)
To resize an image from shape (160, 320, 3) to (224,224,3) ?
I think you should consider using tensorflow's resize_images layer.
https://www.tensorflow.org/api_docs/python/tf/image/resize_images
It appears keras does not include this, and perhaps because the feature does not exist in theano. I have written a custom keras layer that does the same. It's a quick hack, so it might not work well in your case.
import keras
import keras.backend as K
from keras.utils import conv_utils
from keras.engine import InputSpec
from keras.engine import Layer
from tensorflow import image as tfi
class ResizeImages(Layer):
"""Resize Images to a specified size
# Arguments
output_size: Size of output layer width and height
data_format: A string,
one of `channels_last` (default) or `channels_first`.
The ordering of the dimensions in the inputs.
`channels_last` corresponds to inputs with shape
`(batch, height, width, channels)` while `channels_first`
corresponds to inputs with shape
`(batch, channels, height, width)`.
It defaults to the `image_data_format` value found in your
Keras config file at `~/.keras/keras.json`.
If you never set it, then it will be "channels_last".
# Input shape
- If `data_format='channels_last'`:
4D tensor with shape:
`(batch_size, rows, cols, channels)`
- If `data_format='channels_first'`:
4D tensor with shape:
`(batch_size, channels, rows, cols)`
# Output shape
- If `data_format='channels_last'`:
4D tensor with shape:
`(batch_size, pooled_rows, pooled_cols, channels)`
- If `data_format='channels_first'`:
4D tensor with shape:
`(batch_size, channels, pooled_rows, pooled_cols)`
"""
def __init__(self, output_dim=(1, 1), data_format=None, **kwargs):
super(ResizeImages, self).__init__(**kwargs)
data_format = conv_utils.normalize_data_format(data_format)
self.output_dim = conv_utils.normalize_tuple(output_dim, 2, 'output_dim')
self.data_format = conv_utils.normalize_data_format(data_format)
self.input_spec = InputSpec(ndim=4)
def build(self, input_shape):
self.input_spec = [InputSpec(shape=input_shape)]
def compute_output_shape(self, input_shape):
if self.data_format == 'channels_first':
return (input_shape[0], input_shape[1], self.output_dim[0], self.output_dim[1])
elif self.data_format == 'channels_last':
return (input_shape[0], self.output_dim[0], self.output_dim[1], input_shape[3])
def _resize_fun(self, inputs, data_format):
try:
assert keras.backend.backend() == 'tensorflow'
assert self.data_format == 'channels_last'
except AssertionError:
print "Only tensorflow backend is supported for the resize layer and accordingly 'channels_last' ordering"
output = tfi.resize_images(inputs, self.output_dim)
return output
def call(self, inputs):
output = self._resize_fun(inputs=inputs, data_format=self.data_format)
return output
def get_config(self):
config = {'output_dim': self.output_dim,
'padding': self.padding,
'data_format': self.data_format}
base_config = super(ResizeImages, self).get_config()
return dict(list(base_config.items()) + list(config.items()))
TypeError: Output tensors to a Model must be Keras tensors. Found: Tensor("ResizeBilinear_1:0", shape=(?, 224, 224, 3), dtype=float32)
tf.image.resize_images
and I had to put it into keras.layers.Lambda
.
tf.depth_to_space
, while still using Lambda layer. Here is pseudocode: ``` def custom_fun(input, k=2, **kwargs): import tensorflow as tf return tf.depth_to_space(input, block_size=k) input = Input(...) ... out = Lambda(custom_fun)(input) ```
The accepted answer uses the Reshape layer, which works like NumPy's reshape, which can be used to reshape a 4x4 matrix into a 2x8 matrix, but that will result in the image loosing locality information:
0 0 0 0
1 1 1 1 -> 0 0 0 0 1 1 1 1
2 2 2 2 2 2 2 2 3 3 3 3
3 3 3 3
Instead, image data should be rescaled / "resized" using, e.g., Tensorflows image_resize
.
But beware about the correct usage and the bugs!
As shown in the related question, this can be used with a lambda layer:
model.add( keras.layers.Lambda(
lambda image: tf.image.resize_images(
image,
(224, 224),
method = tf.image.ResizeMethod.BICUBIC,
align_corners = True, # possibly important
preserve_aspect_ratio = True
)
))
In your case, as you have a 160x320 image, you also have to decide whether to keep the aspect ratio, or not. If you want to use a pre-trained network, then you should use the same kind of resizing that the network was trained for.
I thought I should post an updated answer, since the accepted answer is wrong and there are some major updates in the recent Keras release.
To add a resizing layer, according to documentation:
tf.keras.layers.experimental.preprocessing.Resizing(height, width, interpolation="bilinear", crop_to_aspect_ratio=False, **kwargs)
For you, it should be:
from tensorflow.keras.layers.experimental.preprocessing import Resizing
model = Sequential()
model.add(Resizing(224,224))
A modification of @KeithWM 's answer, adding output_scale, e.g. output_scale=2 means the output is 2 times the input shape :)
class ResizeImages(Layer):
"""Resize Images to a specified size
https://stackoverflow.com/questions/41903928/add-a-resizing-layer-to-a-keras-sequential-model
# Arguments
output_dim: Size of output layer width and height
output_scale: scale compared with input
data_format: A string,
one of `channels_last` (default) or `channels_first`.
The ordering of the dimensions in the inputs.
`channels_last` corresponds to inputs with shape
`(batch, height, width, channels)` while `channels_first`
corresponds to inputs with shape
`(batch, channels, height, width)`.
It defaults to the `image_data_format` value found in your
Keras config file at `~/.keras/keras.json`.
If you never set it, then it will be "channels_last".
# Input shape
- If `data_format='channels_last'`:
4D tensor with shape:
`(batch_size, rows, cols, channels)`
- If `data_format='channels_first'`:
4D tensor with shape:
`(batch_size, channels, rows, cols)`
# Output shape
- If `data_format='channels_last'`:
4D tensor with shape:
`(batch_size, pooled_rows, pooled_cols, channels)`
- If `data_format='channels_first'`:
4D tensor with shape:
`(batch_size, channels, pooled_rows, pooled_cols)`
"""
def __init__(self, output_dim=(1, 1), output_scale=None, data_format=None, **kwargs):
super(ResizeImages, self).__init__(**kwargs)
data_format = normalize_data_format(data_format) # does not have
self.naive_output_dim = conv_utils.normalize_tuple(output_dim,
2, 'output_dim')
self.naive_output_scale = output_scale
self.data_format = normalize_data_format(data_format)
self.input_spec = InputSpec(ndim=4)
def build(self, input_shape):
self.input_spec = [InputSpec(shape=input_shape)]
if self.naive_output_scale is not None:
if self.data_format == 'channels_first':
self.output_dim = (self.naive_output_scale * input_shape[2],
self.naive_output_scale * input_shape[3])
elif self.data_format == 'channels_last':
self.output_dim = (self.naive_output_scale * input_shape[1],
self.naive_output_scale * input_shape[2])
else:
self.output_dim = self.naive_output_dim
def compute_output_shape(self, input_shape):
if self.data_format == 'channels_first':
return (input_shape[0], input_shape[1], self.output_dim[0], self.output_dim[1])
elif self.data_format == 'channels_last':
return (input_shape[0], self.output_dim[0], self.output_dim[1], input_shape[3])
def _resize_fun(self, inputs, data_format):
try:
assert keras.backend.backend() == 'tensorflow'
assert self.data_format == 'channels_last'
except AssertionError:
print("Only tensorflow backend is supported for the resize layer and accordingly 'channels_last' ordering")
output = tf.image.resize_images(inputs, self.output_dim)
return output
def call(self, inputs):
output = self._resize_fun(inputs=inputs, data_format=self.data_format)
return output
def get_config(self):
config = {'output_dim': self.output_dim,
'padding': self.padding,
'data_format': self.data_format}
base_config = super(ResizeImages, self).get_config()
return dict(list(base_config.items()) + list(config.items()))
To resize the given input image to a target size(in this case 224x224x3):
Use Lambda layer in conventional Keras:
from keras.backend import tf as ktf
inp = Input(shape=(None, None, 3))
[Ref: https://www.tensorflow.org/api_docs/python/tf/keras/backend/resize_images] :
Normally you would use the Reshape
layer for this:
model.add(Reshape((224,224,3), input_shape=(160,320,3))
but since your target dimensions don't allow to hold all the data from the input dimensions (224*224 != 160*320
), this won't work. You can only use Reshape
if the number of elements does not change.
If you are fine with losing some data in your image, you can specify your own lossy reshape:
model.add(Reshape(-1,3), input_shape=(160,320,3))
model.add(Lambda(lambda x: x[:50176])) # throw away some, so that #data = 224^2
model.add(Reshape(224,224,3))
That said, often these transforms are done before applying the data to the model because this is essentially wasted computation time if done in every training step.