Title :
Comparative study for feature detectors in human activity recognition
Author :
Bebars, Amira Ali ; Hemayed, Elsayed E.
Author_Institution :
Comput. Eng. Dept., Cairo Univ., Cairo, Egypt
Abstract :
This paper quantifies existing techniques for feature detection in human action recognition. Four different feature detection approaches are investigated using Motion SIFT descriptor, a standard bag-of-features SVM classifier with x2 kernel. Specifically we used two popular feature detectors; Motion SIFT (MOSIFT) and Motion FAST (MOFAST) with and without Statis interest points. The system was tested on commonly used datasets; KTH and Weizmann. Based on several experiments we conclude that using MOSIFT detector with Statis interest point results in the best classification accuracy on Weizmann dataset but MOFAST without Statis points achieve the best classification accuracy on KTH dataset.
Keywords :
feature extraction; image classification; image motion analysis; support vector machines; transforms; KTH dataset; MOFAST; MOSIFT detector; Statis interest points; Weizmann dataset; bag-of-features SVM classifier; classification accuracy; feature detection; feature detectors; human action recognition; human activity recognition; motion FAST; motion SIFT descriptor; x2 kernel; Abstracts; Accuracy; Computers; Histograms; Image recognition; Visualization; Vocabulary; Bag of words; Human activity recognition; MOFAST detector; MOSIFT descriptor; MOSIFT detector;
Conference_Titel :
Computer Engineering Conference (ICENCO), 2013 9th International
Conference_Location :
Giza
Print_ISBN :
978-1-4799-3369-3
DOI :
10.1109/ICENCO.2013.6736470