I am trying to call tf.image.random_crop(image, size=INPUT_SHAPE) and I get this error:
ValueError: Dimensions must be equal, but are 4 and 3 for '{{node random_crop/GreaterEqual}} = GreaterEqual[T=DT_INT32](random_crop/Shape, random_crop/size)' with input shapes: [4], [3].
So while I was trying to understand what was going on, I tried printing the shape of my dataset with
print(len(train_dataset), train_dataset)
and I got this:
23 <BatchDataset element_spec=(TensorSpec(shape=(None, 160, 160, 1), dtype=tf.float32, name=None), TensorSpec(shape=(None,), dtype=tf.int32, name=None))>
First, I don't understand the number 23 and more concerning is the TensorSpec(shape=(None, 160, 160, 1). My INPUT_SHAPE is (160, 160, 1) so I am wondering if that's what's causing the problem.
I saw a thread that said I should change the batch size to 1 but that didn't work out for me. Right now, I have no batch size for the dataset at all
Looks like you are applying random_crop after batch. For the above to work you need to set INPUT_SHAPE = (batch_size, 120, 120,3) or you can batch after applying random_crop.
Related
I have the original data with shape (1599, 1782), plus other features and together make the data with shape (1599, 1782, 10). 1599 is the date, and each day there are 1782 independent categories, and each category has 10 features. I choose the window size for 16 days for both train and valid data, thus:
X_train.shape (1568, 16, 1782, 10)
y_train.shape (1568, 16, 1782)
I do not know how to put the data into the LSTM model. I want the input shape (?, 16, 1782, 10) and output shape (?, 16, 1782). however, my current model is not working:
model.add(LSTM(units=50, return_sequences=True,input_shape=[16, 1782, 10]))
model.add(Dropout(0.2))
model.add(LSTM(units=50, return_sequences=True))
model.add(Dropout(0.2))
model.add(TimeDistributed(Dense(1782)))
The error shows:
ValueError: Input 0 of layer "lstm" is incompatible with the layer: expected ndim=3, found ndim=4. Full shape received: (None, 16, 1782, 10)
I have two tensors with different shapes, in one it is shape=(None, 20, 32) and in another, it is shape=(None, 5, 32). Let say the first is the embedding of 20 words and the second is the embeddings of 5 words. Now I would like to contact them and have a tensor with the shape of (None, 25, 32). When I try tf.concat([t1,t2], 0) I get the following exception: Dimension 0 in both shapes must be equal, but are 20 and 5
Assuming that None will represent the same number of samples, you just need to specify that concatenation axis to be 1.
import tensorflow as tf
a = tf.random.uniform((4, 5, 32))
b = tf.random.uniform((4, 20, 32))
tf.concat([a, b], axis=1).shape
TensorShape([4, 25, 32])
I'm interested in using the Networkx Python package to perform network analysis on convolutional neural networks. To achieve this I want to extract the edge and weight information from Keras model objects and put them into a Networkx Digraph object where it can be (1) written to a graphml file and (2) be subject to the graph analysis tools available in Networkx.
Before jumping in further, let me clarify and how to consider pooling. Pooling (examples: max, or average) means that the entries within a convolution window will be aggregated, creating an ambiguity on 'which' entry would be used in the graph I want to create. To resolve this, I would like every possible choice included in the graph as I can account for this later as needed.
For the sake of example, let's consider doing this with VGG16. Keras makes it pretty easy to access the weights while looping over the layers.
from keras.applications.vgg16 import VGG16
model = VGG16()
for layer_index, layer in enumerate(model.layers):
GW = layer.get_weights()
if layer_index == 0:
print(layer_index, layer.get_config()['name'], layer.get_config()['batch_input_shape'])
elif GW:
W, B = GW
print(layer_index, layer.get_config()['name'], W.shape, B.shape)
else:
print(layer_index, layer.get_config()['name'])
Which will print the following:
0 input_1 (None, 224, 224, 3)
1 block1_conv1 (3, 3, 3, 64) (64,)
2 block1_conv2 (3, 3, 64, 64) (64,)
3 block1_pool
4 block2_conv1 (3, 3, 64, 128) (128,)
5 block2_conv2 (3, 3, 128, 128) (128,)
6 block2_pool
7 block3_conv1 (3, 3, 128, 256) (256,)
8 block3_conv2 (3, 3, 256, 256) (256,)
9 block3_conv3 (3, 3, 256, 256) (256,)
10 block3_pool
11 block4_conv1 (3, 3, 256, 512) (512,)
12 block4_conv2 (3, 3, 512, 512) (512,)
13 block4_conv3 (3, 3, 512, 512) (512,)
14 block4_pool
15 block5_conv1 (3, 3, 512, 512) (512,)
16 block5_conv2 (3, 3, 512, 512) (512,)
17 block5_conv3 (3, 3, 512, 512) (512,)
18 block5_pool
19 flatten
20 fc1 (25088, 4096) (4096,)
21 fc2 (4096, 4096) (4096,)
22 predictions (4096, 1000) (1000,)
For the convolutional layers, I've read that the tuples will represent (filter_x, filter_y, filter_z, num_filters) where filter_x, filter_y, filter_z give the shape of the filter and num_filters is the number of filters. There's one bias term for each filter, so the last tuple in these rows will also equal the number of filters.
While I've read explanations of how the convolutions within a convolutional neural network behave conceptually, I seem to be having a mental block when I get to handling the shapes of the layers in the model object.
Once I know how to loop over the edges of the Keras model, with Networkx I should be able to easily code the construction of the Networkx object. The code for this might loosely resemble something like this, where keras_edges is an iterable that contains tuples formatted as (in_node, out_node, edge_weight).
import networkx as nx
g = nx.DiGraph()
g.add_weighted_edges_from(keras_edges)
nx.write_graphml(g, 'vgg16.graphml')
So to be specific, how do I loop over all the edges in a way that accounts for the shape of the layers and the pooling in the way I described above?
Since Keras doesn't have an edge element, and a Keras node seems to be something totally different (a Keras node is an entire layer when it's used, it's the layer as presented in the graph of the model)
So, assuming you are using the smallest image possible (which is equal to the kernel size), and that you're creating nodes manually (sorry, I don't know how it works in networkx):
For a convolution that:
Has i input channels (channels in the image that comes in)
Has o output channels (the selected number of filters in keras)
Has kernel_size = (x, y)
You already know the weights, which are shaped (x, y, i, o).
You would have something like:
#assuming a node here is one pixel from one channel only:
#kernel sizes x and y
kSizeX = weights.shape[0]
kSizeY = weights.shape[1]
#in and out channels
inChannels = weights.shape[2]
outChannels = weights.shape[3]
#slide steps x
stepsX = image.shape[0] - kSizeX + 1
stepsY = image.shape[1] - kSizeY + 1
#stores the final results
all_filter_results = []
for ko in range(outChannels): #for each output filter
one_image_results = np.zeros((stepsX, stepsY))
#for each position of the sliding window
#if you used the smallest size image, start here
for pos_x in range(stepsX):
for pos_y in range(stepsY):
#storing the results of a single step of a filter here:
one_slide_nodes = []
#for each weight in the filter
for kx in range(kSizeX):
for ky in range(kSizeY):
for ki in range(inChannels):
#the input node is a pixel in a single channel
in_node = image[pos_x + kx, pos_y + ky, ki]
#one multiplication, single weight x single pixel
one_slide_nodes.append(weights[kx, ky, ki, ko] * in_node)
#so, here, you have in_node and weights
#the results of each step in the slide is the sum of one_slide_nodes:
slide_result = sum(one_slide_nodes)
one_image_results[pos_x, pos_y] = slide_result
all_filter_results.append(one_image_results)
When taking the one dimensional convolution of a one dimensional array, I receive an error which suggests my second dimension is not big enough.
Here is the overview of the relevant code:
inputs_ = tf.placeholder(tf.float32 ,(None, 45), name='inputs')
x1 = tf.expand_dims(inputs_, axis=1)
x1 = tf.layers.conv1d(x1, filters=64, kernel_size=1, strides=1, padding='valid')
I am hoping to increase the kernel size to 3 such that neighbouring points also influence the output of each input node, however I get the following error:
ValueError: Negative dimension size caused by subtracting 3 from 1 for
'conv1d_4/convolution/Conv2D' (op: 'Conv2D') with input shapes:
[?,1,1,45], [1,3,45,64].
My guess is that tensorflow is expecting me to reshape my input into two dimensions so that some depth can be used to do the kernel multiplication. Question is why is this the case and what to expect for the layer behaviour based on the input dimensions
You need to add a Channel dimension as last dimension even if you only have one channel.
So this code works:
inputs_ = tf.placeholder(tf.float32 ,(None, 45), name='inputs')
x1 = tf.expand_dims(inputs_, axis=-1)
x1 = tf.layers.conv1d(x1, filters=64, kernel_size=3, strides=1, padding='valid')
So basically the error was caused because your tensor looked like having a width of 1, with 45 channels. TensorFlow was trying to convolve with a kernel size 3 along a size 1 dimension.
I'd like to concatenate two tensors of shape=(None, 16) in alternate fashion (so the result tensor has to be shape=(None, 32) where the first array of the first tensor is mixed in alternate fashion with the first one of the second tensor and so on.
How can I do it?
I can't loop on tensors because of unknown shape[0], zip function isn't supported for tensors (tensor object is not iterable).
I'm using Tensorflow with Python3.
Assuming the two tensors have the same shape in the outer (None) dimension and you want to alternate between rows of the two tensors, you can do this by adding a dimension with tf.expand_dims(), concatenating with tf.concat(), then reshaping with tf.reshape():
# Use these tensors as example inputs, but the shape need not be statically known.
x = tf.ones([37, 16])
y = tf.zeros([37, 16])
x_expanded = tf.expand_dims(x, 2) # shape: (37, 16, 1)
y_expanded = tf.expand_dims(y, 2) # shape: (37, 16, 1)
concatted = tf.concat([x_expanded, y_expanded], 2) # shape: (37, 16, 2)
result = tf.reshape(concatted, [-1, 32]) # shape: (37, 32)