How to do training in matlab using SVM?
3 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
I have to detect humans from an image for that I should first train the system using SVM.How to do training in matlab using SVM?What is the code for the same?
0 comentarios
Respuestas (2)
Dima Lisin
el 13 de Mzo. de 2015
Hi Anushka,
First of all, you can use the vision.PeopleDetector object in the Computer Vision System Toolbox to detect humans. The object includes a pre-trained HOG-SVM classifier.
If you have to train your ow, then here's an example of how to train an SVM classifier for hand-written digits using HOG features.
Alternatively, you can use the trainCascadeObjectDetector. This function will train a boosted cascade classifier, rather than an SVM.
0 comentarios
Nikolay S.
el 17 de Mzo. de 2015
Editada: Nikolay S.
el 17 de Mzo. de 2015
Good evening Anna.
Allow me to add my humble opinion.
To train and SVM , you need a series of positive and negative examples- usually you need hundreds/thousands of each, with negatives being much more (~x10, ~x20...) then positives. In case of images this will mean you need to have multiple examples of human figures photos as positives, and relevant images without such figures as negatives (we usually used all image regions without humans as negatives). This usually implies having sufficient database with ground truth markings/ annotations. Building this on your own is lots of work, but luckily for many problems under serious research you have available set of examples. Now, you convert each image (negative and positive) into a feature vector- resulting in a huge group of vectors- each with a priory know label- "positive" or "negative". You provide this to SVMtrain function (depending on the toolbox you're using), specifying SVN parameters- linear, RBF, etc, and voila, you got a trained SVN. Now, with SVNclassify- using the trained classifier and given a feature vector you will know whether is is considered positive and negative. You got Yourself a detector ! Good luck!
0 comentarios
Ver también
Categorías
Más información sobre Get Started with Statistics and Machine Learning Toolbox en Help Center y File Exchange.
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!