2020
DOI: 10.1049/iet-ipr.2018.5961
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Approach to model human appearance based on sparse representation for human tracking in surveillance

Abstract: In human tracking, sparse representation successfully localises the human in a video with minimal reconstruction error using target templates. However, the state‐of‐the‐art approaches use colour and local appearance of a human to discriminate the human from the background regions, and hence fail when the human is occluded and appears in the varying illumination environment. In this study, a robust tracking algorithm is proposed that utilises gradient orientation and fine and coarse sparse representation of the… Show more

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Cited by 10 publications
(15 citation statements)
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References 66 publications
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“…The most significant task assigned in the domain of computer vision is the human tracking, which aim to recognize the location of the human at any edge of the world (Damotharasamy, 2020). Home land security (Chowdhry, et al, 2015) , gait characterization (Ran, et al, 2010), gender classification (Chen & Hsieh, 2012) , crowd flow analysis (Eshel & Moses, 2008),accident prediction, crime prevention, close-packed crowd (Lai, et al, 2013), fall detection of elderly (Thome, et al, 2008),driver assistance (Akhlaq, et al, 2012), smart video surveillance, monitoring the children at home (Liu, et al, 2017), monitoring the patients and to monitor the human activities (Reddy & Shah, 2013) are some of the application of the human tracking (Damotharasamy, 2020) .Yet detecting the presence of humans in the surveillance video is the hectic challenge in computer vision due to the various constraints, such as the variation in the human poses,the view point of the camera, illumination and occlusion.…”
Section: Introductionmentioning
confidence: 99%
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“…The most significant task assigned in the domain of computer vision is the human tracking, which aim to recognize the location of the human at any edge of the world (Damotharasamy, 2020). Home land security (Chowdhry, et al, 2015) , gait characterization (Ran, et al, 2010), gender classification (Chen & Hsieh, 2012) , crowd flow analysis (Eshel & Moses, 2008),accident prediction, crime prevention, close-packed crowd (Lai, et al, 2013), fall detection of elderly (Thome, et al, 2008),driver assistance (Akhlaq, et al, 2012), smart video surveillance, monitoring the children at home (Liu, et al, 2017), monitoring the patients and to monitor the human activities (Reddy & Shah, 2013) are some of the application of the human tracking (Damotharasamy, 2020) .Yet detecting the presence of humans in the surveillance video is the hectic challenge in computer vision due to the various constraints, such as the variation in the human poses,the view point of the camera, illumination and occlusion.…”
Section: Introductionmentioning
confidence: 99%
“…The most significant task assigned in the domain of computer vision is the human tracking, which aim to recognize the location of the human at any edge of the world (Damotharasamy, 2020). Home land security (Chowdhry, et al, 2015) , gait characterization (Ran, et al, 2010), gender classification (Chen & Hsieh, 2012) , crowd flow analysis (Eshel & Moses, 2008),accident prediction, crime prevention, close-packed crowd (Lai, et al, 2013), fall detection of elderly (Thome, et al, 2008),driver assistance (Akhlaq, et al, 2012), smart video surveillance, monitoring the children at home (Liu, et al, 2017), monitoring the patients and to monitor the human activities (Reddy & Shah, 2013) are some of the application of the human tracking (Damotharasamy, 2020) .Yet detecting the presence of humans in the surveillance video is the hectic challenge in computer vision due to the various constraints, such as the variation in the human poses,the view point of the camera, illumination and occlusion. The deviation in exterior appearance of human is experienced with respect to their poses along with the variation in stand point as the human anatomy is comprised of various joints (Dilawari, et al, 2020).The camera should be fixed such that the view point not exceeds the angle of 45• to find out the human beings at any orientation yet it can recognize the human in a moderately upstanding posture.Furthermore, the human shape evaluation demands sufficient resolution and the width of the human image areneeded to be more than 24px.…”
Section: Introductionmentioning
confidence: 99%
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