DocumentCode
37497
Title
Vehicle representation and classification of surveillance video based on sparse learning
Author
Chen Xiangjun ; Ruan Yaduan ; Zhang Peng ; Chen Qimei ; Zhang Xinggan
Author_Institution
Sch. of Electron. Sci. & Eng., Nanjing Univ., Nanjing, China
Volume
11
Issue
13
fYear
2014
fDate
Supplement 2014
Firstpage
135
Lastpage
141
Abstract
We cast vehicle recognition as problem of feature representation and classification, and introduce a sparse learning based framework for vehicle recognition and classification in this paper. After objects captured with a GMM background subtraction program, images are labeled with vehicle type for dictionary learning and decompose the images with sparse coding (SC), a linear SVM trained with the SC feature for vehicle classification. A simple but efficient active learning strategy is adopted by adding the false positive samples into previous training set for dictionary and SVM model retraining. Compared with traditional feature representation and classification realized with SVM, SC method achieves dramatically improvement on classification accuracy and exhibits strong robustness. The work is also validated on real-world surveillance video.
Keywords
Gaussian processes; image classification; image coding; image representation; intelligent transportation systems; learning (artificial intelligence); mixture models; support vector machines; traffic engineering computing; video surveillance; GMM background subtraction program; Gaussian mixture model; SC method; SVM model retraining; active learning strategy; dictionary learning; false positive samples; linear SVM; sparse coding; sparse learning based framework; vehicle classification; vehicle recognition; vehicle representation; video surveillance; Accuracy; Classification algorithms; Dictionaries; Support vector machines; Surveillance; Training; Vehicles; feature representation; robustness and generalization; sparse learning; vehicle classification;
fLanguage
English
Journal_Title
Communications, China
Publisher
ieee
ISSN
1673-5447
Type
jour
DOI
10.1109/CC.2014.7022537
Filename
7022537
Link To Document