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Questions tagged [batch-normalization]

Batch Normalization is a technique to improve learning in neural networks by normalizing the distribution of each input feature in each layer across each minibatch to N(0, 1).

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11 views

BatchNorm layer outputs do not match for Mobilenetv2

I am implementing the function that will perform batch normalization during inference. The reference CNN model is MobilnetV2 used in tf.Keras to supply me with the weights and output features. I use ...
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Pytorch - Batch Normalizaiton simple question

I implemented a model with batch normalization: class FFNet(torch.nn.Module): def __init__(self, D_in, H_1, H_2, D_out): super(FFNet, self).__init__() self.linear1 = torch.nn....
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How do you set the axes parameter in TensorFlow moments for batch normalization?

I am planning on implementing a batch normalization function similar to this blog (or just using tf.nn.batch_normalization) using tf.nn.moments to compute mean and variance, but I wish to do it for ...
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39 views

ValueError: expected ndim=3, found ndim=2 after replacing BatchNormalization

I'm programming in python 3.7.5 using keras and TensorFlow 1.13.1 I want remove batch normalization layer from model coded below: from keras import backend as K from keras.callbacks import * from ...
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Test have poor results when using BatchNorm

I'm researching Resnet with my teacher and we did some change. After modification, the final loss is MSE, Training steps are 10000. I use AdamOptimizer and tf.layers.batch_normalization. Training ...
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TensorFlow Parameter Server and Batch Normalization Issue

I have a worker class that I am using to distribute computations across several GPU's. Each worker computes the gradients of the worker model, and then applies those gradients to a central server ...
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44 views

Keras Batch Normalization “is broken”: model fails to predict. Is it _really_ broken? Is there a fix? Or specific documentation about?

Intro I am making a classifier to recognize presence of defects in pictures, and in the path of improving my models, I tried Batch Normalization, mainly to exploit its ability to fasten convergence. ...
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1answer
128 views

batch normalization, yes or no?

I use Tensorflow 1.14.0 and Keras 2.2.4. The following code implements a simple neural network: import numpy as np np.random.seed(1) import random random.seed(2) import tensorflow as tf tf....
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54 views

MinMax scaler inverse_transform function not working , returns wrong values

I have a two dataframes X and y like below and i applied MinMaxScaler before training the model and after model predictions when i use inverse transform function on predictions output ,it is returning ...
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Best practices for numeric data preprocessing for DNN inputs

I have a bunch of dissimilarly scaled numeric inputs. Some of those inputs are either normal or flat distributed, but a bunch of those inputs have other probability distributions. I want to feed this ...
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How does tensorflow get good results without normalization?

I had a problem of implementing Y = X1+X2+X3 mapping using neural network. So, I had to use a single neuron in layer 1 (Y), 4 neurons in layer 2 (Hidden layer)and 3 neuron in layer 3(X1, X2 and X3). I ...
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Pytorch model.train() and model.eval() behave in a weird way

My model is a CNN based one with multiple BN layers and DO layers. So originally, I accidentally put model.train() outside of the loop just like the following: model.train() for e in range(num_epochs)...
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What is the Const node in batch normalization in tensorflow.layers.batchnormalization

in tensorflow 1.14 if use operation of tensorflow.layers.batch_normalization(fused=True) then generate batch_normalization/Const node, i want to know that what is the const node and what is the role ...
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2answers
46 views

Poor Result with BatchNormalization

I have been trying to implement the DCGan, the face book's paper, and blocked by below two issues almost for 2 weeks. Any suggestions would be appreciated. Thanks. Issue 1: DCGAN paper suggest to ...
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Should not moving_average and moving_variance of BatchNormalization Keras layer be trainable?

In Keras, moving_average and moving_variance are not trainable parameters, but for correct behavior would it not be reasonable that these parameters should be adjusted during training according to the ...
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Tensorflow Batch Normalization is_train variable and implementing

In Tensorflow (not 2.0) i am trying to implement Batch Normalization, which isn't going very well... I am using a DDPG (RL) implementation where i am trying to implement the Batch Normalization layer ...
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1answer
45 views

Dropout & batch normalization - does the ordering of layers matter?

I was building a neural network model and my question is that by any chance the ordering of the dropout and batch normalization layers actually affect the model? Will putting the dropout layer before ...
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Is it relevant to use both feature normalizer_fn and batch normalization?

Is it relevant to use both feature normalizer_fn and batch normalization like following ? feature_columns_complex_standardized = [ tf.feature_column.numeric_column("my_feature", ...
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Is it relevant to use both batch_norm and dropout in estimator?

I read batch normalization and dropout are two different ways to avoid overfitting in neural networks. Is it relevant to use both in the same estimator as following ? ``` model1 = tf.estimator....
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35 views

Tensorflow to CoreML with tf-coreml

I have a multi-input network that uses a tf.bool tf.placeholder to manage how batch normalization is executed in training and validation / testing. I’ve been trying to convert this trained model to ...
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58 views

unsupported operation _FusedBatchNormV3 with tensorRT and jetson tx2

On a Jetson TX2 I am running: Linux4Tegra R32.2.1 UFF Version 0.6.3 TensorRT 5.1.6.1 Cuda 10 Python 3.6.8 I get this error message: [TensorRT] ERROR: UffParser: Validator error: sequential/...
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Deep Learning, Strange batch normalization

The below is my Generator structure. As you see, if I remove the batch normalization, GAN extremely works well. But if I add Batch Normalization at the commented place, it shows only noise. I don't ...
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24 views

BatchNormalization makes poor result

In dcgan with keras, I have source which is working well. But I found that when I add the batch normalization to generator and discriminator, it doesn't work. If I remove them, it works. again. can ...
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1answer
53 views

How to implement Batch Normalization on tensorflow with Keras as a high-level API

BatchNormalization (BN) operates slightly differently when in training and in inference. In training, it uses the average and variance of the current mini-batch to scale its inputs; this means that ...
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Unexpectedly found an instance of type of BatchNormalization. Expected a symbolic tensor instance

I got an error when implementing Residual Network in Keras. Below is the code that gives me error (the error comes from the first line of the final step in the function definition): Load packages: ...
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Keras Batchnormalization and sample weights

I am trying the the training and evaluation example on the tensorflow website. Specifically, this part: import numpy as np import tensorflow as tf from tensorflow import keras from tensorflow.keras ...
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39 views

Why does Chainer Batchnormalization not work well with mnist_nn

Chainer batchnormalization does not work well with my code although batch normalization of tensorflow works. I use the dataset mnist the code below shows. Using chainer(version=6.1.0), without ...
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Batch normalization neural network using ADAM as optimizer

I am trying to create a neural network using batch normalization and Adam as optimizer but during optimization, there is an error that says operand cannot be broadcast together. Can anyone tell me ...
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56 views

pytorch - GroupNorm with momentum

After looking at the documentation of pytorch I couldn't find the module of GroupNorm with momentum, there is only an implementation which doesn't use it (which is useless to me since I would want to ...
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TensorFlow Keras use BatchNormalization moving statistics during training phase?

By default, TensorFlow's Keras' BatchNormalization will train by using the mean and variance of the current batch. At the same time, it will incorporate these values into the moving average statistics....
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How to handle update_ops of batch normalization in Keras functional model API?

I am trying out the functional API for Keras models and trying to set up two dataset streams using the same model and weight sharing, which also consists of batch normalization. When I create the ...
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293 views

Adding batch normalization decreases the performance

I'm using PyTorch to implement a classification network for skeleton-based action recognition. The model consists of three convolutional layers and two fully connected layers. This base model gave me ...
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Implementing batch normalization in tensorflow where the graph is run multiple times before updating batch norm moving averages

I have a feed forward network with batch normalization layers in it. the network has to be run multiple times before one backpropogation can be applied. It is used to compute: a. vanilla logits (vl) ...
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1answer
170 views

pytorch - loss.backward() and optimizer.step() in eval mode with batch norm layers?

I have a ResNet-8 network I am using for a project of Domain Adaptation over images, basically I have trained the network over a dataset and now I want to evaluate it over another dataset simulating a ...
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1answer
37 views

Normalization (Feature scaling) of Point Cloud Dataset

I have point cloud data set where single data is represented by N * 3 where N is number of points. Similarly I have "M" number of points clouds in Dataset. The range of these point clouds varies ...
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43 views

Batch Normalization causes infinitely negative loss

I added a few convolutional layers with batch normalization to an image segmentation model (also containing batch normalization) that I had already trained. When I begin fine-tuning by freezing the ...
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Using BatchNormalization results in error

I have implemented a variational autoencoder in Kreas. The code is shown below. When I run it, I'm getting the following error message: ValueError: An operation has None for gradient. Please make ...
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1answer
47 views

Keras BatchNormalization only works for constant batch dim when axis=0?

The following code shows one way that works and the other that fails. The BatchNorm on axis=0 should not depend on the batchsize or if it does it should be explicitly stated as such in the docs. In [...
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33 views

understanding Batch normalization parameters model output

I am having below model After creating model using keras according to above diagram and i have following model parameters My question is how parameters for batch normalization 1 we got as 784. To ...
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1answer
43 views

the batch normlization layer do not work (tensorflow)

I implement a network using tensorflow, and the loss is not converged. Then, I get some value in the network, and I find that the BN layer do not work. Please look at the following picture: We can ...
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How do I use batch_normalization when training a model with multiple GPU in tensorflow?

I followed the CIFAR10 multi-gpu example, and I'm now trying to get my program to work with batch normalization layers. I've looked into https://github.com/tensorflow/tensorflow/issues/7439 and How ...
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25 views

Discriminator accuracy and generator fool rate both near 1.0 with batch normalization layers

I am building a generative adversarial network in keras/tensorflow to generate images of dogs. The first time I put the network together, everything worked as expected. The generator fool rate and ...
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What actually does maxnorm actually do in keras

I wanted to know that by using maxnorm() can we normalize the input values as well or just the weights of the hidden layers of the neural network
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2answers
56 views

Is it a good model in the making with validation loss remaining lower than train curve, more or less constant gap as both are decreasing?

Adding dropout layers made the val loss remain lower than train loss, is it exceptable to have a constant generalization gap over the period? Here is the architecture: tf.keras.layers.CuDNNLSTM(1024,...
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1answer
46 views

Keras: is it possible to apply normalization of input data via some layers?

I am building a Keras RNN model and preprocess my input to normalize (between 0 and 1). I am wondering if there is a way to achieve the same through some first layer as a part of the model itself? ...
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505 views

How to use Dropout and BatchNormalization in LSTM Networks (Keras)

I am using LSTM Networks for Multivariate Multi-Timestep predictions. So basically seq2seq prediction where a number of n_inputs is fed into the model in order to predict a number of n_outputs of a ...
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23 views

how to calculate trainable parameters in a deep neural network

If N= input features and L= neurons in a DNN layer, how many trainable parameters are in that layer? between increase layer vs correct input features; which method is better decrease training or ...
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1answer
90 views

How to calculate the number of multiplications happening in BatchNormalization layer during test evaluation?

or, why do my CNN's test evaluations take significantly longer with BatchNormalization than without? I need to approximate the theoretical runtime for the evaluation of a trained CNN (using Keras ...
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How do BN layers work in DCGAN while using keras?

I train a DCGAN on CelebA dataset using keras whose version is 2.2.4.I'm confused about the keras functional API implementation like predict about BN layers in the DCGAN architecture. During training,...
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Did Batch-normalization prevents backpropagation? zero gradients when using tensorflow Batch normalization

Gradient vanishes when using batch normalization tf.layers.batch_normalization or tf.keras.layers.BatchNormalization when I print out all the gradient with tensorboard histogram, all the weight and ...