Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I read a few books and articles about Convolutional neural network, it seems I understand the concept but I don't know how to put it up like in image below: alt text

from 28x28 normalized pixel INPUT we get 4 feature maps of size 24x24. but how to get them ? resizing the INPUT image ? or performing image transformations? but what kind of transformations? or cutting the input image into 4 pieces of size 24x24 by 4 corner? I don't understand the process, to me it seem they cut up or resize the image to smaller images at each step. please help thanks.

share|improve this question
Could you enumerate the books/articles you read for Convolutional neural network? Thanks in advance. –  lmsasu Dec 30 '11 at 13:57
It is from Neural Networks and Learning Machines, Third Edition book –  Nhu Phuong Dec 30 '11 at 15:22
I was confused too, this convolution is actually the very important part (hence the name convolutional NN), but most people seem to focus on explaining how the CNN works, and ignore the "how to get the feature maps" part. I was confused (and angry, too) until I found this website: www1.i2r.a-star.edu.sg/~irkhan/conn2.html It explains everything in plain English. –  Fukuzawa Yukio Apr 20 '13 at 5:08
Sadly www1.i2r.a-star.edu.sg/~irkhan/conn2.html 404s. Anyone have a cached version? –  Nate Murray Nov 4 '14 at 18:14

2 Answers 2

up vote 7 down vote accepted

This is matlab help file for CONV2 function, which use in CNN Matlab (to get convolutional layers). Read it carefully and you will see your answer.

%CONV2 Two dimensional convolution.
%   C = CONV2(A, B) performs the 2-D convolution of matrices A and B.
%   If [ma,na] = size(A), [mb,nb] = size(B), and [mc,nc] = size(C), then
%   mc = max([ma+mb-1,ma,mb]) and nc = max([na+nb-1,na,nb]).
%   C = CONV2(H1, H2, A) convolves A first with the vector H1 along the
%   rows and then with the vector H2 along the columns. If n1 = length(H1)
%   and n2 = length(H2), then mc = max([ma+n1-1,ma,n1]) and 
%   nc = max([na+n2-1,na,n2]).
%   C = CONV2(..., SHAPE) returns a subsection of the 2-D
%   convolution with size specified by SHAPE:
%     'full'  - (default) returns the full 2-D convolution,
%     'same'  - returns the central part of the convolution
%               that is the same size as A.
%     'valid' - returns only those parts of the convolution
%               that are computed without the zero-padded edges.
%               **size(C) = max([ma-max(0,mb-1),na-max(0,nb-1)],0).**
share|improve this answer

sorry for this stupid question, convolution is just a math operation, it was implemented in OpenCV anyway (cvFilter2D) so now time to code and see how result show out.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.