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Simple Online Multiple Human Tracking based on LK Feature Tracker and Detection for Embedded Surveillance

Authors
Quang Dao VuThanh Binh Nguyen정선태
Issue Date
Jun-2017
Publisher
한국멀티미디어학회
Keywords
Object Tracking; LK Feature Tracker; Deep Learning Object Detection; Occlusion Handling.
Citation
멀티미디어학회논문지, v.20, no.6, pp.893 - 910
Journal Title
멀티미디어학회논문지
Volume
20
Number
6
Start Page
893
End Page
910
URI
http://scholarworks.bwise.kr/ssu/handle/2018.sw.ssu/6839
DOI
10.9717/kmms.2017.20.6.893
ISSN
1229-7771
Abstract
In this paper, we propose a simple online multiple object (human) tracking method, LKDeep (Lucas- Kanade feature and Detection based Simple Online Multiple Object Tracker), which can run in fast online enough on CPU core only with acceptable tracking performance for embedded surveillance purpose. The proposed LKDeep is a pragmatic hybrid approach which tracks multiple objects (humans) mainly based on LK features but is compensated by detection on periodic times or on necessity times. Compared to other state-of-the-art multiple object tracking methods based on ‘Tracking-By-Detection (TBD)’ approach, the proposed LKDeep is faster since it does not have to detect object on every frame and it utilizes simple association rule, but it shows a good object tracking performance. Through experiments in comparison with other multiple object tracking (MOT) methods using the public DPM detector among online state-of-the-art MOT methods reported in MOT challenge [1], it is shown that the proposed simple online MOT method, LKDeep runs faster but with good tracking performance for surveillance purpose. It is further observed through single object tracking (SOT) visual tracker benchmark experiment [2] that LKDeep with an optimized deep learning detector can run in online fast with comparable tracking performance to other state-of-the-art SOT methods.
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