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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Tensorflow: Understanding tf.contrib.layers.instance_norm graph

I'm trying to understand tf.contrib.layers.instance_norm graph: according to this graph: x = gamma * (x + x_mean) / x_std - beta but it should be x = gamma * (x - x_mean) / x_std + beta I'm missing ...
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Why tf.contrib.layers.instance_norm layer contain StopGradient operation?

Why tf.contrib.layers.instance_norm layer contain StopGradient operation? i.e. why it's needed? Seems there is StopGradient even in simpler layer tf.nn.moments (that can be building block of tf....
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How to remove mean of a Keras layer, like Batchnormalization, without considering variance?

I want to do what BatchNormalization layer does in Keras, of removing the mean and storing a moving average. Unfortunately, the BatchNormalization layer in Keras always considers the variance too, and ...
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Theory behind state normalization in Reinforcement Learning

I know that normalizing the observation state returns better results in reinforcement learning Stable-baselines documentation. But I could not find any theoretical background to back this theory up. I ...
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Effect of normalization while calculating inference of any neural network

I'm trying to implement LSTM inference in hardware, the model was trained with both layer and weight normalization, does it affect anything while implementing the inference or it's only used in ...
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17 views

How is the batch normalization parameter value used when inference?

I have a question about Batch Normalization. I know that batch normalization is used frequently when training deep learning network. What I'm curious about is how Batch Normalization works in the ...
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68 views

How to implement Batchnorm2d in Pytorch myself?

I'm trying to implement Batchnorm2d() layer with: class BatchNorm2d(nn.Module): def __init__(self, num_features): super(BatchNorm2d, self).__init__() self.num_features = ...
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TF / Keras: Zeroing out input and BatchNormalization: problem?

I have three input featuresets, and want to build a model with each of the three conditionally enabled, so I can compare performance with or without any specific input information. I could achieve ...
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Wanna use tf.nn.batch_normalization instead of keras.layers.batchnormalization, Having problem in the parameters

I have built a CNN model with Tensorflow. I want to build another model similar to the previous but with other functions. I want to obtain the same accuracy. All the functions are ok except this one ...
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17 views

Handling batch normalization layers during fine-tuning (trainable vs training)

I have created a CNN in Keras as shown below. I'm using the CNN for the classification of three classes. The inputs are heat map images of several users showing the browsing distribution on e.g. a ...
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tf.keras.layers.BatchNormalization with trainable=False appears to not update its internal moving mean and variance

I am trying to find out, how exactly does BatchNormalization layer behave in TensorFlow. I came up with the following piece of code which to the best of my knowledge should be a perfectly valid keras ...
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On the use of Batch Normalization

I am trying to make sure that I am incorporating batch normalization layers into a model correctly. The code snippet below illustrates what I am doing. Is this an appropriate use of batch ...
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Why does the specification of the batch_size parameter in a keras input object not replace the ?/None entry?

I I want to compute a value (similarity/distance) between all my encoded vectors during the loss function but this is not possible because I can not access the batch dimension. For this reason, I want ...
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390 views

'BatchNormalization' is not defined

Trying to train a Robust CNN model which is defined as follows: from keras.datasets import cifar10 from keras.utils import np_utils from keras import metrics from keras.models import Sequential from ...
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Questions about Batch Normalization in Pytorch [closed]

Recently when I use the BN in the PyTorch, I have several questions. Based on the BN2d documentation in PyTorch, when inferencing(evaluation), it will automatically use the mean and variance (running ...
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Unable to load Keras model in Keras 2.4.3 (with Tensorflow 2.3.0) that was saved in Keras 2.1.0 (with Tensorflow 1.3.0)

I'm implementing a Keras model with a custom batch-renormalization layer, which has 4 weights (beta, gamma, running_mean, and running_std) and 3 state variables (r_max, d_max, and t): self.gamma = ...
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91 views

Batch Normalization Quantize Tensorflow 1.x does not have MinMax information

A layer (....) which is an input to the Conv operator producing the output array model/re_lu_1/Relu, is lacking min/max data, which is necessary for quantization. If accuracy matters, either target a ...
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Defining model to reduce overfitting effect of batch normalization

I'm trying to train my model using transfer learning from pretrained model with 30 classes and 7200 images(80% train, 10% validation, 10% test). My model is always overfitting despite changing various ...
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40 views

Can we normalize features extracted from pre-trained models

I am working with features extracted from pre-trained VGG16 and VGG19 models. The features have been extracted from second fully connected layer (FC2) of the above networks. The resulting feature ...
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BatchNormaization tensorflow 2.0 : Could not find valid device for node. Node:{{node FusedBatchNormV3}}

I am trying to implement a batch normalization layer after convolutional layer on tensorflow 2.0 but I got the following error: 'Could not find valid device for node. Node:{{node FusedBatchNormV3}} ' ....
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54 views

Pytorch batchnorm1D with a batch size of 1

I am trying out a Binary Network implementation. And am using a simple perceptron with custom Binarized Layer as shown below self.w = torch.nn.Parameter((torch.normal(0, 1, size=(param['input_size'], ...
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Customization of RNN ( implement batch-normalization layer)

I implemented AttentionRNN encoder and decoder. Next, I would like to add a batch normalization layer. But I don't know what function should I insert and where to insert it. I've looked at the docment ...
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66 views

Batch normalisation during testing

I am working on a 2d time series problem with vector size 140*6 for binary classification using CNN. I have not used any scaling and normalising techniques instead directly fed data to CNN with 3 ...
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149 views

PyTorch training with dropout and/or batch-normalization

A model should be set in the evaluation mode for inference by calling model.eval(). Do we need to also do this during training before getting the model outputs? Like within a training epoch if the ...
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why does batch normalization make my batches so abnormal?

I'm playing with pytorch for the first time, and I've noticed that when training my neural net, about one time in four or so the loss takes a left turn towards infinity, then nan shortly after that. I'...
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Initializing moving average/variance in BatchNormalization in tensorflow from array

I would like to initialize the moving average and variance in BatchNormalization layer from a specific pre-defined vector rather than using one of the kernel initializers. Is there a way of doing this ...
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229 views

Why it's necessary to frozen all inner state of a Batch Normalization layer when fine-tuning

The following content comes from Keras tutorial This behavior has been introduced in TensorFlow 2.0, in order to enable layer.trainable = False to produce the most commonly expected behavior in the ...
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BatchNormalization problem in ResNet50 - Transfer Learning approach

I am trying to implement a fine tuning based transfer learning approach using the ResNet50 pre-trained model on an image classification problem having 22400 data points. Please note the procedure ...
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tensorflow batch_norm not working in quadro rtx8000

I am using tensorflow (GPU) 1.14 and running simple code with batch normalization (using batch_norm function in tensorflow.contrib.layers.python.layers). Currently I have 2 gpu cards, which are TITAN ...
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25 views

Perform batch normalization with PyTorch in Java

I am wondering if I could perform batch normalization in Java. I know that PyTorch in Java could do forward if we load a model. I am wondering how could I? Save bn.weights/bn.bias/running_average/...
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85 views

Batch Normalization while Transfer Learning

I am currently transfer learning using the MobilenetV2 architecture. I have added several Dense layers on the top before my classification. Should I add BatchNormalization between these layers? ...
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34 views

Tensorflow batch norm = False gives incorrect results

I am working on a TensorFlow model. I have written a wrapper for official Deeplab v3+ code, and I am facing issues while training the batch norm layers. Whenever I turn on the batch norm training (set ...
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80 views

How implement Batch Norm with SWA in Tensorflow?

I am using Stochastic Weight Averaging (SWA) with Batch Normalization layers in Tensorflow 2.2. For Batch Norm I use tf.keras.layers.BatchNormalization. For SWA I use my own code to average the ...
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124 views

Rewrite tf.contrib.layers.batch_norm in Tensorflow 2.0

Could somebody help me rewrite the following block of code in Tf2.0? I'm aware batch_norm is equivalent to keras.layers.BatchNormalization but the documentation doesn't give clear solution as to what '...
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What's the difference between attrubutes 'trainable' and 'training' in BatchNormalization layer in Keras Tensorfolow?

According to the official documents from tensorflow: About setting layer.trainable = False on a `BatchNormalization layer: The meaning of setting layer.trainable = False is to freeze the layer, i.e. ...
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NaN when I use Group Normalization in Pytorch

i was trying groupnormalization for efficientnet , my model code is : out_dim = 5 enet_type = 'efficientnet-b0' pretrained_model = { 'efficientnet-b0': '../input/efficientnet-pytorch/efficientnet-...
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How to change BN to GN and FRN layer in efficientnet pytorch?

i was trying groupnormalization for efficientnet in pytorch : https://github.com/lukemelas/EfficientNet-PyTorch , my model code is : out_dim = 5 enet_type = 'efficientnet-b0' pretrained_model = { ...
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92 views

Padding after or before batch normalization in convolutional networks?

Is there any research on where to do the 'same' padding in convolutional networks? I typically see people use Pad -> Conv -> BN -> ReLU. In this case, the convolution has to deal with input ...
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In tensorflow 2, does using model.fit automatically set the “training” flag in a BatchNorm layer?

I believe that when using batch normalization layers in tensorflow, it is important to set the training flag when using it, and set it to False on validation data, and True when training. Is this ...
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Why would moving_mean and moving _variance in Tensorflow BN layer become nan when I set is_training=False in training time?

In the training time, I want to keep BN layer unchange, so I pass is_training=False to: tf.contrib.layers.batch_norm(tensor_go_next, decay=0.9, center=True, scale=True, epsilon=1e-9, ...
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loss grows much larger while set is_training=False in BN layer

---------------------------------------updata---------------------------------- I compared the parameters of BN layer before and after decomposition, and located the problem so please go and answer ...
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How to assign parameters to Batch Normalizationi layer in Tensorflow1.X?

I have download the parameters of pretrained ResNet34 in Pytorch Models, and looking forward to assign them to a tensorflow1.X ResNet model. But I don't know how to assign running_var, running_mean, ...
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604 views

Pytorch BatchNorm2d RuntimeError: running_mean should contain 64 elements not 0

I'm using Octave Convolutions and have set up a BatchNorm2d adaptation that for some reasen is giving me RuntimeError: running_mean should contain 64 elements not 0 I've set up some debugging ...
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53 views

Initialization of Gamma and Beta in Batch Normalization in neural networks

I am making a neural network by myself. And I'm now stuck at the Batch Normalization Process. The problem is that I'm not able to find any good values of gamma and beta to initialize within batch ...
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47 views

What is the least total batch size for SyncBatchNorm

For the normal BatchNorm, the least batch size per GPU is 2. I wonder if I use the SyncBatchNorm, can I use batch_size=1 for every GPU with more than a single GPU? I.e, the total_batch_size is more ...
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22 views

How to feed trained Python TensorFlow model with batches?

I have created an own model and I trained it with ImageTrainGenerator- from Keras using flow_from_directory. Like this: how to train model with batches. Everything works fine, I checked the generated ...
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210 views

AttributeError: 'Sequential' object has no attribute 'shape'

I am trying ResNet 50 from scratch in Tensorflow 2.0 on Google Colab. Please refer to the code below. I am getting an error: AttributeError: 'Sequential' object has no attribute 'shape'. I have used ...
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309 views

Batchnorm2d Pytorch - Why pass number of channels to batchnorm?

Why do I need to pass the previous nummber of channels to the batchnorm? The batchnorm should normalize over each datapoint in the batch, why does it need to have the number of channels then ?
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37 views

How does BatchNormalization work on an example?

I am trying to understand batchnorm. My humble example layer1 = tf.keras.layers.BatchNormalization(scale=False, center=False) x = np.array([[3.,4.]]) out = layer1(x) print(out) Prints tf.Tensor([[...
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198 views

Tensorflow tf.math.tanh properly scale network output without requiring large batches

I am trying to implement a network presented in this paper. This excerpt has a describing image and is accompanied by an explanation. The input is a feature of 353 floats and the label is a float (-...

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