Keras custom loss function with multiple output model - tensorflow

In a segmentation task I wanted to have my model to have two outputs because I implemented weight maps as suggested in the original U-net paper https://arxiv.org/pdf/1505.04597.pdf.
As per the suggestion I created weightmaps concentrating some of the ground truth mask to have higher weights. Now I have a model with.
weightmap=layers.Lambda(lambda x:x)(weight_map) # A non trainable layer to output this as tensor for loss function
Model=model(inputs=[input,weight_map], outputs=[output,weightmap]
Now I need to compute binary cross entropy loss for the following model
def custom_loss(target,outputs):
loss=K.binary_crossentropy(target,outputs[0]) #ouputs[0] should be the model output
loss=loss*outputs[1] #outputs[1] should be weightmaps
return loss
This output[0] and output[1] slicing of output tensor from model doesnt work.
Is there anything I can do to implement the following with both outputs of model in a single loss function?

Related

How to extract the loss function of a trained model?

Lets say that I have a model trained with TF2 (e.g., a model from TF model zoo). How can I get the loss function of this model?
Note that I do not want the value of the loss for a given input (that can be obtained via model.evaluate method), but I want the loss function itself such that:
I can take its gradient with respect to input or any desired parameter
I can pass the labels and logits and it provide me the loss value
Note that I am using an already trained model (inheriting tf.keras.Model).

How to build a Neural Network in Keras using a custom loss function with datapoint-specific weight?

I want to train a Neural Network for a classification task in Keras using a TensorFlow backend with a custom loss function. In my loss, I want to give different weights to different training examples. I have some datapoints I consider important and some I do not consider as important. I want my loss function to take this into account and punish errors in important examples more than in less important ones.
I have already built my model:
input = tf.keras.Input(shape=(16,))
hidden_layer_1 = tf.keras.layers.Dense(5, kernel_initializer='glorot_uniform', activation='relu')(input)
output = tf.keras.layers.Dense(1, kernel_initializer='normal', activation='softmax')(hidden_layer_1)
model = tf.keras.Model(input, output)
model.compile(loss=custom_loss(input), optimizer='adam', run_eagerly=True, metrics = [tf.keras.metrics.Accuracy(), 'acc'])
and the currrent state of my loss function is:
def custom_loss(input):
def loss(y_true, y_pred):
return ...
return loss
I'm struggling with implementing the loss function in the way I explained above, mainly because I don't exactly know what input, y_pred and y_true are (KerasTensors, I know - but what is the content? And is it for one training example only or for the whole batch?). I'd appreciate help with
printing out the values of input, y_true and y_pred
converting the input value to a numpy ndarray ([1,3,7] for example) so I can use the array to look up my weight for this specific training data point
once I have my weigth as a number (0.5 for example), how do I implement the computation of the loss function in Keras? My loss for one training exaple should be 0 if the classification was correct and weight if it was incorrect.

Keras: Custom loss function with training data not directly related to model

I am trying to convert my CNN written with tensorflow layers to use the keras api in tensorflow (I am using the keras api provided by TF 1.x), and am having issue writing a custom loss function, to train the model.
According to this guide, when defining a loss function it expects the arguments (y_true, y_pred)
https://www.tensorflow.org/guide/keras/train_and_evaluate#custom_losses
def basic_loss_function(y_true, y_pred):
return ...
However, in every example I have seen, y_true is somehow directly related to the model (in the simple case it is the output of the network). In my problem, this is not the case. How do implement this if my loss function depends on some training data that is unrelated to the tensors of the model?
To be concrete, here is my problem:
I am trying to learn an image embedding trained on pairs of images. My training data includes image pairs and annotations of matching points between the image pairs (image coordinates). The input feature is only the image pairs, and the network is trained in a siamese configuration.
I am able to implement this successfully with tensorflow layers and train it sucesfully with tensorflow estimators.
My current implementations builds a tf Dataset from a large database of tf Records, where the features is a dictionary containing the images and arrays of matching points. Before I could easily feed these arrays of image coordinates to the loss function, but here it is unclear how to do so.
There is a hack I often use that is to calculate the loss within the model, by means of Lambda layers. (When the loss is independent from the true data, for instance, and the model doesn't really have an output to be compared)
In a functional API model:
def loss_calc(x):
loss_input_1, loss_input_2 = x #arbirtray inputs, you choose
#according to what you gave to the Lambda layer
#here you use some external data that doesn't relate to the samples
externalData = K.constant(external_numpy_data)
#calculate the loss
return the loss
Using the outputs of the model itself (the tensor(s) that are used in your loss)
loss = Lambda(loss_calc)([model_output_1, model_output_2])
Create the model outputting the loss instead of the outputs:
model = Model(inputs, loss)
Create a dummy keras loss function for compilation:
def dummy_loss(y_true, y_pred):
return y_pred #where y_pred is the loss itself, the output of the model above
model.compile(loss = dummy_loss, ....)
Use any dummy array correctly sized regarding number of samples for training, it will be ignored:
model.fit(your_inputs, np.zeros((number_of_samples,)), ...)
Another way of doing it, is using a custom training loop.
This is much more work, though.
Although you're using TF1, you can still turn eager execution on at the very beginning of your code and do stuff like it's done in TF2. (tf.enable_eager_execution())
Follow the tutorial for custom training loops: https://www.tensorflow.org/tutorials/customization/custom_training_walkthrough
Here, you calculate the gradients yourself, of any result regarding whatever you want. This means you don't need to follow Keras standards of training.
Finally, you can use the approach you suggested of model.add_loss.
In this case, you calculate the loss exaclty the same way I did in the first answer. And pass this loss tensor to add_loss.
You can probably compile a model with loss=None then (not sure), because you're going to use other losses, not the standard one.
In this case, your model's output will probably be None too, and you should fit with y=None.

Implementing stochastic forward passes in part of a neural network in Keras?

my problem is the following:
I am working on an object detection problem and would like to use dropout during test time to obtain a distribution of outputs. The object detection network consists of a training model and a prediction model, which wraps around the training model. I would like to perform several stochastic forward passes using the training model and combine these e.g. by averaging the predictions in the prediction wrapper. Is there a way of doing this in a keras model instead of requiring an intermediate processing step using numpy?
Note that this question is not about how to enable dropout during test time
def prediction_wrapper(model):
# Example code.
# Arguments
# model: the training model
regression = model.outputs[0]
classification = model.outputs[1]
predictions = # TODO: perform several stochastic forward passes (dropout during train and test time) here
avg_predictions = # TODO: combine predictions here, e.g. by computing the mean
outputs = # TODO: do some processing on avg_predictions
return keras.models.Model(inputs=model.inputs, outputs=outputs, name=name)
I use keras with a tensorflow backend.
I appreciate any help!
The way I understand, you're trying to average the weight updates for a single sample while Dropout is enabled. Since dropout is random, you would get different weight updates for the same sample.
If this understanding is correct, then you could create a batch by duplicating the same sample. Here I am assuming that the Dropout is different for each sample in a batch. Since, backpropagation averages the weight updates anyway, you would get your desired behavior.
If that does not work, then you could write a custom loss function and train with a batch-size of one. You could update a global counter inside your custom loss function and return non-zero loss only when you've averaged them the way you want it. I don't know if this would work, it's just an idea.

Custom training loop / loss function in tensorflow

I'm trying to define a multi-layer perceptron where the loss function is the L2 distance between the input of the network and a transformation of the output of the network (some black-box function that roughly transforms the output of the network back into the input space so it can be compared), i.e. loss = tf.reduce_sum(tf.square(input - transform(output)), 1).
The problem is that I need the output to be evaluated in order to transform it, but at the time of model definition, output is just a Tensor.
Is it possible to do this kind of custom training loop in TensorFlow?