How Can I combine HOG descriptors as input and CNN for Classification as output

20 views (last 30 days)
Hi all professionals and good day,
in reference to my question, is it possible?
I have no code just yet! my process at the moment is to understand if this can be done and what are the procedures involved so that I can follow such step by step. I tried googling but I am sure that I have the wrong terminology and idea of the procedure!
I am trying to extract HOG descriptor features from video sequences and feed such into rcnn for classification as the output!
  1. is that possible?
  2. if yes, can you point me in the right direction, please? (links , example of processes etc)
I would like to learn this on my own so that i can get the gist of the procedures involved!
what I don't know is the procedure to start the code generation process!
Please assist!
thank you in advance for your assistance and for responding to my absurd questions!

Answers (1)

Mahesh Taparia
Mahesh Taparia on 17 Jul 2020
It seems you want to classify the image based on HOG features. You can do by storing the features in an array and pass it to a CNN. You can refer to this documentation which explain the classification of image using CNN. Moreover, you can refer to this documentation for other approach which is taking HOG features and classify the images using SVM. Hope it will helps!

Sign in to comment.

Community Treasure Hunt

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

Start Hunting!