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Title:      HUMAN DETECTION BY USING CENTRIST FEATURES FOR THERMAL IMAGES
Author(s):      Irfan Raiz, Jingchun Piao, Hyunchul Shin
ISBN:      978-972-8939-89-2
Editors:      Yingcai Xiao
Year:      2013
Edition:      Single
Keywords:      Human detection, vision, CENTRIST, HOG, thermal image
Type:      Full Paper
First Page:      3
Last Page:      10
Language:      English
Cover:      cover          
Full Contents:      click to dowload Download
Paper Abstract:      In this paper, we present a new human detection scheme for thermal images by using CENsus TRansform hISTogram (CENTRIST) features and Support Vector Machines (SVMs). Human detection in a thermal image is a difficult task due to low image resolution, thermal noising, lack of color, and poor texture information. For thermal images, contour is one of the most useful and discriminative information, so capturing it efficiently is important. Histogram of Oriented Gradient (HOG) is still the most proven way to capture the human contour. CENTRIST is a computationally efficient technique to capture contour cues as compared to HOG, but so far no one has implemented and tested the accuracy of CENTRIST descriptor for infrared thermal images. We developed CENTRIST based human detection system for thermal images. We also made a new dataset of thermal images, since there was no realistic dataset. Experimental results show that CENTRIST carries out almost same detection rate as HOG, while reducing the training and the testing time by almost 91 %.
   

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