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 am new to machine learning. I am familiar with SVM , Neural networks and GA. I'd like to know the best technique to learn for classifying pictures and audio. SVM does a decent job but takes a lot of time. Anyone know a faster and better one? Also I'd like to know the fastest library for SVM.

share|improve this question
One approach for increasing the performance of the SVM is by preprocessing the raw data using k-means (or other clustering method) to reduce the amount of data being handled by the SVM. You can convert the audio to spectral representation then cluster on the 3-space formed by (frequency,level,time) –  Brian Jack Jan 31 '12 at 16:15

5 Answers 5

up vote 4 down vote accepted

Your question is a good one, and has to do with the state of the art of classification algorithms, as you say, the election of the classifier depends on your data, in the case of images, I can tell you that there is one method called Ada-Boost, read this and this to know more about it, in the other hand, you can find lots of people are doing some researh, for example in Gender Classification of Faces Using Adaboost [Rodrigo Verschae,Javier Ruiz-del-Solar and Mauricio Correa] they say:

"Adaboost-mLBP outperforms all other Adaboost-based methods, as well as baseline methods (SVM, PCA and PCA+SVM)" Take a look at it.

share|improve this answer
Thank you for the reply. I'll read it. DO you also happen to know a good libraby for SVM? i know SVMlight and libSVM. SVM light is faster. –  Brahadeesh Mar 26 '11 at 18:29
I have used [weka][1] and it is a good java classiffication tool; see this [example][2] to run svm in weka [2]: stat.nctu.edu.tw/~misg/WekaInC.ppt [1]: cs.waikato.ac.nz/ml/weka –  cMinor Mar 26 '11 at 18:33
Thank you. I'll look through it. I'll wait one more day before accepting. I am waiting for more opinions. Thank you for yours. –  Brahadeesh Mar 26 '11 at 18:35
No problem, hope it helped –  cMinor Mar 26 '11 at 18:37
Would preprocessing help, such as performing K-means clustering on the input, then presenting the clustered result to the SVM? –  Brian Jack Mar 26 '11 at 22:49

If your main concern is speed, you should probably take a look at VW and generally at stochastic gradient descent based algorithms for training SVMs.

share|improve this answer

if the number of features is large in comparison to the number of the trainning examples then you should go for logistic regression or SVM without kernel

if the number of features is small and the number of training examples is intermediate then you should use SVN with gaussian kernel

is the number of features is small and the number of training examples is large use logistic regression or SVM without kernels .

that's according to the stanford ML-class .

share|improve this answer

For such task you may need to extract features first. Only after that classification is feasible.

share|improve this answer
Could you clarify your answer, possibly with some more specific information? –  tJener Apr 4 '11 at 5:06
For example, if you want to do face recognition, you better extract some typical face parts- nose, mouth, etc, after that extract keypoint of them, and then try to apply ML to keypoint –  trebuchet Apr 14 '11 at 7:23

I think feature extraction and selection is important.

For image classification, there are a lot of features such as raw pixels, SIFT feature, color, texture,etc. It would be better choose some suitable for your task.

I'm not familiar with audio classication, but there may be some specturm features, like the fourier transform of the signal, MFCC.

The methods used to classify is also important. Besides the methods in the question, KNN is a reasonable choice, too.

Actually, using what feature and method is closely related to the task.

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.