I am trying to implement the works described in "Evaluation of local spatio-temporal features for action recognition" (http://www.di.ens.fr/willow/pdfscurrent/2009_bmvc_wang.pdf). However, my results are dramatically lower than their reported results.
I am just wondering, if any of you have a similar experiment in implementing a human action recognition algorithm and can give me some tips.
Thanks for your tips.
Here is my steps:
1- I used STIP-2.0 to extract features
2- Use kmeans++ to learn the visual words.
3- Replace each feature vector with the index of the closest class center (from step 2)
4- Create bag-of-words feature for each action period in the video.
5- Use a chi-squared and a insertion kernel SVM to learn the classifier. I did a parameter search on a with range of the SVM parameter (C).