Integrating a statistical background-foreground extraction algorithm and SVM classifier for pedestrian detection and tracking

2013 ◽  
Vol 20 (3) ◽  
pp. 201-216 ◽  
Author(s):  
Dawei Li ◽  
Lihong Xu ◽  
Erik D. Goodman ◽  
Yuan Xu ◽  
Yang Wu
Author(s):  
Chia-Jung Pai ◽  
Hsiao-Rong Tyan ◽  
Yu-Ming Liang ◽  
Hong-Yuan Mark Liao ◽  
Sei-Wang Chen

Author(s):  
Qian Liu ◽  
Feng Yang ◽  
XiaoFen Tang

In view of the issue of the mechanism for enhancing the neighbourhood relationship of blocks of HOG, this paper proposes neighborhood descriptor of oriented gradients (NDOG), an improved feature descriptor based on HOG, for pedestrian detection. To obtain the NDOG feature vector, the algorithm calculates the local weight vector of the HOG feature descriptor, while integrating spatial correlation among blocks, concatenates this weight vector to the tail of the HOG feature descriptor, and uses the gradient norm to normalize this new feature vector. With the proposed NDOG feature vector along with a linear SVM classifier, this paper develops a complete pedestrian detection approach. Experimental results for the INRIA, Caltech-USA, and ETH pedestrian datasets show that the approach achieves a lower miss rate and a higher average precision compared with HOG and other advanced methods for pedestrian detection especially in the case of insufficient training samples.


Author(s):  
Naveenkumar M ◽  
Sriharsha K. V. ◽  
Vadivel A

This chapter presents a novel approach for moving object detection and tracking based on contour extraction and centroid representation (CECR). Firstly, two consecutive frames are read from the video, and they are converted into grayscale. Next, the absolute difference is calculated between them and the result frame is converted into binary by applying gray threshold technique. The binary frame is segmented using contour extraction algorithm. The centroid representation is used for motion tracking. In the second stage of experiment, initially object is detected by using CECR and motion of each track is estimated by Kalman filter. Experimental results show that the proposed method can robustly detect and track the moving object.


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