DocumentCode
239676
Title
Human action recognition using late fusion and dimensionality reduction
Author
Haiyan Xu ; Qian Tian ; Zhen Wang ; Jianhui Wu
Author_Institution
Nat. ASIC Syst. Eng. Res. Center, Southeast Univ., Nanjing, China
fYear
2014
fDate
20-23 Aug. 2014
Firstpage
63
Lastpage
67
Abstract
This paper addresses the problem of action recognition. We introduce local feature representations which are HOG, HOF, MBH, trajectory descriptor based on paper [1]. We extract those features only used one scale while Wang´s paper has eight spatial scales. Our method can save memory and computation cost while guarantee the accuracy. Firstly, we apply a PCA on the HOG, HOF, MBH, trajectory descriptors to reduce the number of features. Secondly, we use Fisher kernel (FK) to aggregate each descriptor into a Fisher vector (FV) or vector of locally aggregated descriptors (VLAD) and then use improved LDA technique for FV or VLAD before being fed into the linear SVM. Thirdly, we apply late fusion for all kinds of descriptors. We evaluate our descriptor on the KTH and Youtube dataset, and as a result, observe improved performance in terms of mean average precise (mAP). Our method not only significantly reduces computational cost but improves accuracy.
Keywords
feature extraction; image fusion; support vector machines; vectors; visual databases; FK; FV; Fisher kernel; Fisher vector; HOF; HOG; KTH; LDA technique; MBH; VLAD; Youtube dataset; accuracy improvement; dimensionality reduction; human action recognition; late fusion; linear SVM; local feature representations; mAP; mean average precise; spatial scales; trajectory descriptor; vector of locally aggregated descriptors; Accuracy; Computer vision; Conferences; Digital signal processing; Trajectory; Vectors; YouTube; action recognition; dimensionality reduction; late fusion;
fLanguage
English
Publisher
ieee
Conference_Titel
Digital Signal Processing (DSP), 2014 19th International Conference on
Conference_Location
Hong Kong
Type
conf
DOI
10.1109/ICDSP.2014.6900787
Filename
6900787
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