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http://dx.doi.org/10.5302/J.ICROS.2010.16.11.1044

Performance Improvement for Tracking Small Targets  

Jung, Yun-Sik (Hanyang University)
Kim, Kyung-Su (Agency for Defense Development)
Song, Taek-Lyul (Hanyang University)
Publication Information
Journal of Institute of Control, Robotics and Systems / v.16, no.11, 2010 , pp. 1044-1052 More about this Journal
Abstract
In this paper, a new realtime algorithm called the RTPBTD-HPDAF (Recursive Temporal Profile Base Target Detection with Highest Probability Data Association Filter) is presented for tracking fast moving small targets with IIR (Imaging Infrared) sensor systems. Spatial filter algorithms are mainly used for target in IIR sensor system detection and tracking however they often generate high density clutter due to various shapes of cloud. The TPBTD (Temporal Profile Base Target Detection) algorithm based on the analysis of temporal behavior of individual pixels is known to have good performance for detection and tracking of fast moving target with suppressing clutter. However it is not suitable to detect stationary and abruptly maneuvering targets. Moreover its computational load may not be negligible. The PTPBTD-HPDAF algorithm proposed in this paper for real-time target detection and tracking is shown to be computationally cheap while it has benefit of tracking targets with abrupt maneuvers. The performance of the proposed RTPBTD-HPDAF algorithm is tested and compared with the spatial filter with HPDAF algorithm for run-time and track initiation at real IIR video.
Keywords
target tracking; imaging infrared; temporal profile; temporal filter; HPDAF;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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