Error forming mini-batch for network input

i want to train a cnn with a folder of images with the size [h w c], the imageInputLayerargument is the same size of the images (h w c), but when training the network matlab says:
Error using trainnet (line 46)
Error forming mini-batch for network input "imageinput". Data interpreted with format "SSCB". To specify a
different format, use the InputDataFormats option.
Caused by:
Dimensions of arrays being concatenated are not consistent.

2 Commenti

Matt J
Matt J il 1 Mar 2026 alle 23:49
Modificato: Matt J il 1 Mar 2026 alle 23:50
We c have no way of knowing what you did. Please attach materials needed to reproduce it.
Thanks for the replay, this is my code for multiclass (3 classes) classification using CNN based on image files stored in three subfolders in the main folder: data.:
clear all; close all; clc
% Define the path to your main data folder
dataFolder = 'C:\data';
% Create an image datastore
imds = imageDatastore(dataFolder, ...
'IncludeSubfolders', true, ...
'LabelSource', 'foldernames');
% View the class names and the number of images per class
%imds=aug_imds;
labelCount = countEachLabel(imds);
disp(labelCount);
% Split the datastore into training and validation sets (e.g., 70% for training, 30% for validation)
[imdsTrain, imdsValidation] = splitEachLabel(imds, 0.7, 'randomized');
inputSize = [570 714 3];
augimdsT = augmentedImageDatastore(inputSize,imdsTrain,'ColorPreprocessing','rgb2gray');
augimdsV = augmentedImageDatastore(inputSize,imdsValidation,'ColorPreprocessing','rgb2gray');
numClasses = 3;
layers = [
imageInputLayer(inputSize)
convolution2dLayer(5,5)
batchNormalizationLayer
reluLayer
fullyConnectedLayer(numClasses)
softmaxLayer];
%
options = trainingOptions("sgdm", ...
MaxEpochs=4, ...
ValidationData=imdsValidation, ...
ValidationFrequency=30, ...
Plots="training-progress", ...
Metrics="accuracy", ...
Verbose=false);
% train
net = trainnet(augimdsT,layers,"crossentropy",options);
%%%%%%%%%%%%%%%%%%%%%%%%%%%%%
I receive the following message:
Error forming validation data mini-batch.
Caused by:
Error forming mini-batch for network input "imageinput". Data interpreted with format "SSCB". To specify
a different format, use the InputDataFormats option.
Dimensions of arrays being concatenated are not consistent.

Accedi per commentare.

Risposte (1)

Matt J
Matt J il 2 Mar 2026 alle 3:23
This is not enough to reproduce the error. You haven't provided input images. My guess, however, is that there are some files in C:\data that are not 570x714x3.

5 Commenti

Walid
Walid il 2 Mar 2026 alle 11:40
there is some image with different size, so i used augmentedImageDatastore function to resize them to a unique size !
Matt J
Matt J il 2 Mar 2026 alle 16:25
Modificato: Matt J il 2 Mar 2026 alle 16:47
You need,
inputSize = [570 714 1];
and
ValidationData=augimdsV,...
Matt J
Matt J il 4 Mar 2026 alle 1:52
Modificato: Matt J il 4 Mar 2026 alle 1:55
your link goes to new code. However, your original code, as presented in your question, should be working now with the changes I propose above. If the code is working for you as well, please Accept-click the answer to indicate that the question is resolved.
As for the new code, it is pretty clear why it doesn't work. You removed the resizing done by the augmentedDatastores so, per our discussion above, it is not going to be possible to concatenate them.
Walid
Walid il 4 Mar 2026 alle 4:48
the original code does'nt work ! the same error !
Matt J
Matt J il 4 Mar 2026 alle 10:46
Modificato: Matt J il 4 Mar 2026 alle 10:46
It works for me. Did you incorporate my fixes?

Accedi per commentare.

Categorie

Prodotti

Release

R2024a

Richiesto:

il 1 Mar 2026 alle 22:56

Modificato:

il 4 Mar 2026 alle 10:46

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by