Questions tagged [conv-neural-network]

A convolutional neural network (CNN, or ConvNet) is a class of deep, feed-forward artificial neural networks that has successfully been applied to analyzing visual imagery.[tag:deep-learning]

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Implementing conv layers in lstm network

I am trying to create an English to French translator. I have a basic model which works fairly well: Average step time: 232.3 Final loss: 0.4969 Model: Layer (type) Output Shape ...
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12 views

Input numerical arrays instead of images into Keras/TF CNN

I have been building some variations of CNN's off of Keras/Tensorflow examples that use the MNIST data images (ubyte files) for feature extraction. My eventual goal is to do a similar thing but with a ...
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12 views

Good accuracy but bad predictions

I use ResNet50 which I add a FineTuning step for binary classification. I have a very good train and validation accuracy (near 1) but when i try to predict on the validation set, i have very bad ...
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1answer
11 views

Why is the method of im2col with GEMM is more efficient than the method of direction implementation with SIMD in CNN

The convolutional layers are most computationally intense parts of Convolutional neural networks (CNNs).Currently the common approach to impement convolutional layers is to expand the image into a ...
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Deciding the architecture of a multi class CNN classifier [on hold]

I am extremely new to Deep Learning. I am facing a challenge of image classification. I have 1750 images distributed equally across 5 classes. I need to build a classifier for the data. I have 3 ...
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1answer
40 views

AttributeError when training CNN 1D with Python Keras

I have tried to build a CNN 1D but the interpreter says me: AttributeError: 'ProgbarLogger' object has no attribute 'log_values' Here is the code snippet: model = Sequential() model.add(Conv1D(...
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17 views

adding metadata to tensorflow tflearn CNN

I built a simple CNN network for (medical) image classification successfully, using tflearn. When I tried to add metadata to the CNN, I ran into this problem:ValueError: Cannot feed value of shape (...
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2answers
32 views

Deeplearning4j neural network only predicting 1 class

For the past week or so, I have been trying to get a neural network to function using RGB images, but no matter what I do it seems to only be predicting one class. I have read all the links I could ...
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15 views

CNN training accuracy decreasing

This is my CNN model. I run the program with two labels. The labels are cat and dog. But: Training accuracy is strange. The accuracy of the first label is reduced. and the second label is increased. ...
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29 views

confusion matrix in keras cnn model without xtrain xtest ytrain ytest

I am currently trying to implement a confusion matrix into my cnn model code. All the examples that I've been watching includes using x_train, x_test, y_train, y_test, but I don't know how to do that ...
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1answer
33 views

How to use a different CNN without losing accuracy

I have been given a task to implement a Convolutional neural network that can evaluate hand-written digits found in the MNIST dataset with the architecture of the network looking like this: I have ...
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21 views

ValueError: You are trying to load a weight file containing 5 layers into a model with 0 layers

I have been searching to find an answer to this problem in the past few days, no luck. Just training a simple CNN, an saving the weights and also the model. While loading the model and weights, i ...
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14 views

Validation Accuracy shown during epochs much higher than what I actually get

I am new to Keras and CNN and therefore struggling with the following. When I train using image dataset using the follwing code: train_batches = gen1.flow_from_directory(train_path, target_size=(...
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1answer
19 views

ValueError: Input 0 is incompatible with layer conv2d_1: expected ndim=4, found ndim=3

After inquiring into the questions already asked about this problem, I keep presenting it. Im trying to classify letters from A to D. All input images are 64x64 and graycolor. The first layer of my ...
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1answer
21 views

Gender Classification -VGG model

I am using the below code for classifying human gender(M vs F). However its overfitting and val accuracy is even not going 90% . Need your suggestion in this. img_width, img_height =128,128 ...
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1answer
14 views

Problem with retrain.py. Getting error tensorflow.python.framework.errors_impl.NotFoundError

I'm using retrain.py to retrain an object detector on photos of my hand (to detect how many fingers I'm holding). On the Tensorflow site, I followed the tutorial where I retrained it on their images ...
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20 views

Image Classification Using TensorFlow, Value error

I am new to deep learning and tensorflow and i'm trying to create an image classifier using tensorflow that will classify 5 classes of images. My training dataset is 25000 images and testing dataset ...
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18 views

how to improve accuracy in image classification using CNN in R

I am new to image classification. I am using CNN to classify 3 images of 3 products. Below is my code - model <- keras_model_sequential() model %>% layer_conv_2d(filters = 64, ...
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12 views

What is the best way to isolate a feature of a video? [on hold]

I work with a few people who do videogame streams on Twitch.tv and I need a way of identifying where any given streamer's web cam is in the video and then isolate and crop it so that the output video ...
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22 views

ImageGenerator_flow_from_directory - seed and fitting model

I want to feed CNN with dataset, which I have split into three parts (train,valid,test) while using ImageGenerator from Keras. Size of pictures in dataset is 250x250 rgb. I need to always flow from ...
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12 views

Object Localisation and detection using keras.!

How can we do object localization on a convolution neural network build on keras.Is there any good tutorials on the web..???
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14 views

Training accuracy with keras dropout

I have a convolutional neural network that has a few dropout layers and I'm training it with (keras): model.compile(optimizer=keras.optimizers.SGD(lr=0.001, decay=1e-5, momentum=0, nesterov=False), ...
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1answer
28 views

How to use convolutional neural network on binary image using Keras?

I am trying to train a cnn model for ocr using keras. I preprocessed the images by converting to grayscale, removing noise and then converting it to binary, as binary images work better in ocr. But ...
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14 views

What would happen if I made a CNN, but have the input tensor be 4 channels: 3 for RGB, and 1 that is a mask generated from histogram backprojection? [on hold]

I’m having a hard time training an single shot detector to track this specific object. The object has these bright blue LED lights, so I was thinking of concatenating onto every image tensor a fourth ...
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16 views

How to ignore part of input and output in Keras?

I'm trying to train a model that takes n values as input and output n values. The problem is that n can be from 1 to 700. So I build a network with 700 as input and 700 as output. The extra inputs and ...
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11 views

recognise misaligned pictures of handwritten digits with CNN

Hello I'm trying to make a programm that recognises handwritten digits (from MNIST). I've actually done it and it works quite good. (I made a CNN that reaches 98% of accuracy on the test dataset) Then ...
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24 views

Neural Network in pytorch without nn module [on hold]

I am working ON CNN with pytorch and i am being assigned the task of building a 2 layered CNN without making the use of nn Module or any other Module. The model should only be built with torch api and ...
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31 views

Input shape to Convolutional Neural Network

I'm predicting the preference of a customer from a set of objects using convolutional neural network. The input is of the following format. Customer Objects x1 x2 x3 x4 . .......x15 a1 ...
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1answer
18 views

What means mean and stddev in keras/tensorflow

in below part of code what means mean and stddev ? I know the seed is put to 1 so if you generate random values those are always the same. But don't know about mean and stddev? I know the seed is put ...
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0answers
5 views

loss weights for classifcation and regression heads in CNN

I have a CNN with a classification head with 2 outputs which uses categorical cross entropy and a regression head with 2 outputs which uses mean-squared error for the losses. The loss for the CNN is ...
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0answers
13 views

How do I train a semantic segmentation model in PyTorch with my own dataset?

I'm fairly new to PyTorch, but I've been able to get up and running training and testing pre-trained models and my own datasets of just regular image classifications. However, now, I want to try out ...
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1answer
19 views

Automatically make a composite image for cnn training

i would like to train a CNN for detection and classification of any kind of signs (mainly laboratory and safety markers) using tensorflow. While I can gather enough training data for the ...
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1answer
26 views

Tensorflow - Sparse embedding lookup that remains sparse

I'm implementing a text classifier with a CNN similar to Kim 2014 with Tensorflow. Tensorflow provides tf.nn.embedding_lookup_sparse, which allows you to provide the word IDs as a sparse tensor. This ...
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23 views

Filter shape in fully connected layer and output layer in Convolutional Neural Network

I'm building convolutional neural network for classification of the data into different categories The input data is of shape : 30000, 6, 15, 1 the data has 30000 samples, 15 predictors and 6 possible ...
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26 views

Is it incorrect to get 64% test accuracy and 94% train accuracy on cifar-10 dataset using CNN? [on hold]

I have verified code many times but I have found nothing wrong with it. I want to know if this program is bug-free or not. This is the git hub link of the program https://github.com/TejaSreenivas/CNN-...
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13 views

How to extract FC layer activations of CNN using tensorflow? [on hold]

I know how to extract the weights, but I am interested in the activation values after passing an image.
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18 views

Can we update inputs using trained weights for a model?

My input data is a 1x11 vector which is mapped on the output to a 3 dimensional image and the loss function is the MSE loss. So basically with a 1x11 input it creates a random image and compares with ...
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20 views

Keras CNN-LSTM RuntimeError

I'm trying to use the following model Inceptionv3 base CNN and LSTM layer for a regression problem. My input data is pictures with continuous target values. I'd like to feed the sequence of images to ...
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1answer
25 views

In Keras, CNN layer result is different from the result of model.predict

history = model.fit(x_spectro_train, y_train_onehot, batch_size=batch_size, epochs=training_epochs, validation_data =(x_spectro_test, y_test_onehot), shuffle=True, callbacks=callbacks_list,...
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0answers
36 views

AdamOptimizer returns invalid datatype error

I have been struggling to fix this for the past couple of days, any help would be appreciated. I have a network that outputs numeric locations x,y coordinates in an image, hence the int32 datatype. ...
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1answer
23 views

Is CNN with Avg pooling and ReLU an odd function?

For each input x, we get output h(x,Para) from CNN, where h is the CNN and Para is a concatenation of all CNN parameters. Then I'm curious if h is an odd function or not, i.e. if h(x,Para)=-h(-x,...
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29 views

reduce image size without losing details

I am new to image processing. I have hand scan images and they are huge in size (~14000x12000 pixels). I need to reduce image size without losing much details (like patterns and ridges present on the ...
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0answers
23 views

Difference in test time and train time

When running following session with given input tf.reset_default_graph() with tf.Session() as test: np.random.seed(1) A_prev = tf.placeholder("float", [3, 4, 4, 6]) X = np.random.randn(3,...
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0answers
20 views

CCN LSTM: RuntimeError('You must compile your model before using it.')

Im trying to build a CNN-LSTM for a regression problem. I have to feed the CNN with rgb pictures of size (img_width, img_height). However i get Runtime error to compile the model, although i compile ...
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1answer
43 views

Convolutional Neural Network : Weights and Bias initialization

I'm building convolutional neural network for classification of the data into different categories The input data is of shape : 30000, 6, 15, 1 the data has 30000 samples, 15 predictors and 6 possible ...
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1answer
25 views

How to reduce overfiting while using VGG16 for regression?

i'm using transfer learning from VGG16 for a regression task but i get over-fit very quickly. I want to reduce the number of parameters for the regression (last layer), how can i do it?
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1answer
21 views

How Convolutional Layers connect to Fully Connected Layers in MATLAB?

I have designed a CNN in MATLAB with the next set of layers: So, if I'm correct making my calculations, the output size of the last ReLU layer should be 7x7x32, which seems to be correct because that ...
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1answer
29 views

How to do predictions without charging the model everytime - tensorflow?

Hi I'm making a conv net with tf.estimators , and I want to predict with my trained model but when I upload an image always loads and closes the model, how to make it stay loaded and continue to ...
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41 views

“Same” network on MATLAB and Keras has very different results

I have been trying to replicate the same simple network structure in MATLAB and Keras. The problem is the accuracy I get is very different. MATLAB code gets accuracy near 0.84 and loss near 17 and ...
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2answers
23 views

What should be the 5th dimension for the input to 3D-CNN while working with hyper-spectral images?

I have a hyperspectral image having dimension S * S * L where S*S is the spatial size and L denotes the number of spectral bands. Now the shape of my X (image array) is: (1, 145, 145, 200) where 1 is ...