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. It falls under the [deep-learning] tag.

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Handwritten digit recognition model doesn't work

Please I have a problem with the model of handwritten recognition , It doesn't work. the code source is here ! https://data-flair.training/blogs/python-deep-learning-project-handwritten-digit-...
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Training loss started extremely lower than validation loss. What is happening?

My training loss started very low at 0.0181 whereas validation loss started at 2.4625, which is over 150 fold difference. Validation loss did improve as the model tries to learn and memorize ...
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unable to import tensorflow.. importError: cannot import name 'LayerNormalization' from 'tensorflow.python.keras.layers.normalization' [closed]

i wanted to run tensorflow on GPU so followed steps mentioned in following link: https://towardsdatascience.com/installing-tensorflow-gpu-in-ubuntu-20-04-4ee3ca4cb75d but due to some mistake that i ...
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CNN for 3D image segmentation with different size

I am working on 3D image segmentation task, but the length of z-axis is different in every image. For the convolution neural networks, I think the length should be same in all images. How can I handle ...
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Add bias output in Keras

I'm solving a multi-class image classification problem. Training a CNN directly did not give good results for the task, so I'm now attempting a workaround. The idea is to train multiple binary ...
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CNN classification giving wrong predictions [closed]

I have been trying to classify between forge and genuine signature but my cnn model is biased towards genuine signature. for most of the input images its showing genuine. can anybody tell me how ...
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Invalid training data. X and Y must have the same number of observations

I have long ECG signals segmented into 300 points segments/heartbeats. I want to use CNN for feature extraction with a bidirectional LSTM layer for classification. I have the following network: ...
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Is it possible to mask a single cell using the Keras Masking Layer?

I have time-series data and want to build a 1D CNN / LSTM and want to use a Keras Masking Layer to 'ignore' missing values. My data is structured as follows: I have 1000 patients, for which 3 ...
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Keras validation loss not decreasing, something is wrong with input

I am trying to combine CNN + facial landmarks for a classification task - The image names are in a text file like - Process flow is like - Used pandas to read file names Substracted 1 from labels, ...
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how to interpret cnn results

I'm new in deep learning and neural networks, so now after finishing a tutorial in youtube I tried to run a code of a liveness face detection (training), here it's the code: from livenessnet import ...
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how to pick the right distribution of the prior of the latent variables in VAE?

I'd like to ask about deciding the right prior of the latent variables in VAE. Most importantly, I am curious about the key points to be considered while picking the right distribution (could be the ...
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How do you prepare a dataset with sub-attributes for Neural Network? and order of attributes and predictions matters [closed]

I have a data set of 360 attributes (x values) and 360 y values (what I'm trying to predict for future instances). Each x attribute has a space type like this " Grass, tree, building, soil", ...
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25 views

How to use DICOM dataset for CNN? [closed]

I am given a DICOM dataset which is going to be used in 2d CNN. How can extract the CT images from DICOM and use them as if standard images?
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Empty parameters list for model

I am trying to implement an autoencoder neural network based on convolutional layers and max pooling & unpooling to encode and decode images on greyscale (MNIST images). I have defined its class ...
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CNN based copy move forgery localisation

i am trying to make a forgery detection model using deep learning that basically detects a type of forgery called copy move forgery and so far I've build a (binary)CNN model that detects wether an ...
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Recommended model for CNN visualization [closed]

So I am currently building an interactive web tool to help people learn about convolutional neural networks. To do this, I need a model that has the following criteria: it has around 5 conv layers ...
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Tensorflow/Keras : Starting pixel of a 2D convolution layer

I implement in C a toolbox to infer CNN. To do this I train CNNs with Tensorflow and then I carry the weights to get them back in C and execute the calculations. During the convolution calculations I ...
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how to fix this temporary failure in name resolution while loading mnist dataset in kaggel?

devs could you help me out to fix this error of Temporary failure in name resolution while loading minst dataset using keras in kaggle? when i used minst load_data (X_train, y_train), (X_test, y_test) ...
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Fix ValueError and Warning on Tensorflow Conv-Neural-Network

I am creating a CNN model using Tensorflow that classifies an image with dimensions 124,129 into 8 categories. I need help in understanding why I am getting the error : ValueError: 'images' must have ...
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How to visualize CNN architecture?

I'm trying to view CNN, but unfortunately I couldn't find the right tutorial. I want a compressed view of my model (like the photo above) because its architecture is very complex. Compressed view of ...
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Train a neural network on total number of corners of shapes but find the corners' positions [closed]

I am trying to train a network to determine the positions of corners of any given shape. The challenge is that in the very large training set, the inputs are images containing different shapes but the ...
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21 views

CNN for pendrive insertion activity recognition gives low accuracy [closed]

I am working on a security monitoring project. I seed to classify an activity as a legal or illegal activity. Activities like stealing hard disks,inserting pendrive into computers are illegal ones. I ...
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A Problem aboud using multi-gpu with a two-stage CNN model

I design a CNN model that have two stage. First stage is generating proposal like RPN in Faster RCNN and then feed them into the second stage, but it causes error in the second step. Accroding the ...
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1answer
45 views

how to interpret training results

I'm new in deep learning, so I'm trying to learn more and more about everything, so I tried to execute a code from github about liveness face detection,so when I did train that model with mobilenet I ...
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15 views

InvalidArgumentError: required broadcastable shapes at loc(unknown)

Background I am totally new to Python and to machine learning. I just tried to set up a UNet from code I found on the internet and wanted to adapt it to the case I'm working on bit for bit. When ...
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24 views

How targets should look like for UNet

I have implemented UNet from scratch for medical image segmentation. Everything was working fine for testing data, where targets for 6 classes where saved on 6 channels, so mask shape was (H,W,6) and ...
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Train a neural network on total corners of shapes but find the corners' positions [closed]

I am trying to train a network to determine the positions of corners of any given shape. The challenge is that in the very large training set, the inputs are images but the only targets are numbers ...
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CNN module in python gives error size mismatch, m1: [12288 x 26], m2: [12288 x 26]

I'm having some issues with my CNN model and I don't understand what I'm doing wrong. I've tried to change my model multiple times to look like m1: 12288 x 26 and 26 x 12288, but I'm not quite sure ...
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Still can't produce higher results with CNN predictions [closed]

So previously, I asked a question: CNN keras hand written recognition has high accuracy but poor predictions I have fixed and revamped some of the codings. I have actually a CNN layer into the coding ...
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How to solve input/output shape error Conv1D (Temporal CNN)

I am running a Conv1D model in Keras. I get an error saying: "Input 0 of layer conv1d is incompatible with the layer: : expected min_ndim=3, found ndim=2. Full shape received: (None, 4097)" ...
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Which toy example can I make to illustrate that CNN are better than MLP?

I'm trying to make a control example to illustrate that convolutional networks are better than fully connected ones in the field of images. I want to test some properties like traslation invariance or ...
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Which availabe model takes X_train and y_train input as Nd array (in short both are Images)? [closed]

I want to produce a regression or prediction model which can predict an Image from a test image. But the main problem is we generally feed y_train with labels or some 2d array, but here I want to put ...
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2D placement of features (list of sensors) based on correlation matrix for 2D CNN [closed]

I have a K-dimensional dataset that consists of K sensor data stream. The K features are somehow correlated with each other. I want to find the optimal placement of the features into a M x N grid (K = ...
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Problem in training my MNIST model in Keras

I have prepared a sequential model using Tensorflow for recognizing digits. But after compiling the model whenever I try to train my model, it shows only 1875 training sample; though when I print its ...
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17 views

CNN Backpropagation training issues

I am trying to write the code for training using CNN from scratch using numpy and for some reason that I cannot yet understand, it fails to learn anything. The Architecture of the CNN is: [7x7 Image ...
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1answer
24 views

Predict new samples with PyTorch model

I am newbee in neural networks, i have teached my model and now i want to test it. I have wrote a code with google help, but it do not work. The problem is that i do not understand from where i am ...
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ValueError: y and y_pred must have same shape of (batch_size, num_categories, …) and num_categories > 1

This is my code and I use pytorch-ignite. The shape of sample's labels are (batch_size,) and the outputs of my netwroy as y_pred is (batch_size,10) and 10 is the number of my class. I use criterion = ...
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Mac equivalent win32gui? [closed]

I run this code on my mac .. but i get error : from tkinter import * import tkinter as tk import win32gui from PIL import ImageGrab, Image import numpy as np There is no module called win32gui please ...
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CNN backprop to update filters

I need help in determining how to apply the formula dL/dW=dL/dO*X, where dL/dW is the gradient of the loss wrt the weights in the filters, dL/dO is the gradient of the loss wrt to the output of the ...
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1answer
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Where do paramaters go after getting passed to a flatten layer in tensorflow/keras

I'm new to tensor flow. Just wondering why a shape of (7, 7, 64) with parameters of 51264 lose all its parameter when it gets past to a flatten layer. I assume that that's what flatten layers do, but ...
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1answer
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CNN keras hand written recognition has high accuracy but poor predictions

I am basically doing this for a school project and followed some guides to make a neuron network using CNN. Libraries I am using are cv2, NumPy, TensorFlow, and matplotlib. The problem currently I am ...
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Python's Keras: claiming shape mismatch despite my checks showing otherwise

When I check my code line by line, I am showing that my shapes match just fine as desired: num_samples=100; input_shape = (num_samples,26,76,1); x = tf.random.normal(input_shape); y=[]; for i in range(...
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prediction on validation dataset is much worse than validation accuracy while training

I found some similar questions but no answer for this: I have trained a CNN with very high train and validation accuracy (both ~99%). The prediction accuracy on my test data is around 70% (is my model ...
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1answer
17 views

How to implement Conv3D on sequence of images?

I am supposed to implement Conv3D on sequence of images. There are 72 images in the file and size of each image is (16,16,3) where 3 is the channel. Following is my code: from tensorflow.keras.models ...
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26 views

Changing a TF Dataset from classified to numeric/regression data

This is my first attempt at branching out from ready-made datasets and models to something pieced together on my own. Using tensorflow, I'm trying to load a dataset of images where each image is ...
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1answer
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RuntimeError: CUDA out of memory with pre-trained model

I am using a pre-trained model for image improvement. [https://github.com/swz30/MIRNet.][1] I created a demo.py (code below) file in order to test my set of images for the pre-trained template ...
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1answer
92 views

Accuracy and loss do not improve CNN model

I am working on diabetic retinopathy , it's my first project machine learning deep learning . I am using this dataset: https://www.kaggle.com/sovitrath/diabetic-retinopathy-2015-data-colored-resized. ...
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1answer
15 views

Number of Dense layers, number of neurons. How to decide? [closed]

I work on a project and i was asked to build a cnn with the following architecture: Conv1D(8,10,activation='relu',input_shape=(18286,1))) MaxPooling1D((3))) Conv1D(16,10,activation='relu')) ...
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tf.GradientTape() can not help me train a CNN well. It is confused. Can someone help me?

for i in range(epoch): for j in range(iteration): with tf.GradientTape() as tape: start = j * batch_size end = start + batch_size img_x = train_x[start:...
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1answer
20 views

Validation accuracy always constant after 2 epochs

I have a multiclass problem (n=3) and my validation accuracy always gets stuck. It might be because I have not enough samples (Only 32 per class). The images contain 3 different objects I need to ...

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