수중로봇을 위한 형태를 기반으로 하는 인공표식의 인식 및 추종 알고리즘Shape Based Framework for Recognition and Tracking of Texture-free Objects for Submerged Robots in Structured Underwater Environment
- Other Titles
- Shape Based Framework for Recognition and Tracking of Texture-free Objects for Submerged Robots in Structured Underwater Environment
- Authors
- 한경민; 최현택
- Issue Date
- 1-12월-2011
- Publisher
- 대한전자공학회
- Keywords
- 수중로봇; 물체인식
- Citation
- 대한전자공학회지, v.48, no.6, pp 91 - 98
- Pages
- 8
- Journal Title
- 대한전자공학회지
- Volume
- 48
- Number
- 6
- Start Page
- 91
- End Page
- 98
- URI
- https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/1077
- Abstract
- This paper proposes an efficient and accurate vision based recognition and tracking
framework for texture free objects. We approached this problem with a two phased
algorithm: detection phase and tracking phase. In the detection phase, the algorithm
extracts shape context descriptors that used for classifying objects into predetermined
interesting targets. Later on, the matching result is further refined by a minimization
technique. In the tracking phase, we resorted to meanshift tracking algorithm based on
Bhattacharyya coefficient measurement. In summary, the contributions of our methods for
the underwater robot vision are four folds: 1) Our method can deal with camera motion
and scale changes of objects in underwater environment; 2) It is inexpensive vision
based recognition algorithm; 3) The advantage of shape based method compared to a
distinct feature point based method (SIFT) in the underwater environment with possible
turbidity variation; 4) We made a quantitative comparison of our method with a few other
well-known methods. The result is quite promising for the map based underwater SLAM task
which is the goal of our research.the algorithm
extracts shape context descriptors that used for classifying objects into predetermined
interesting targets. Later on, the matching result is further refined by a minimization
technique. In the tracking phase, we resorted to meanshift tracking algorithm based on
Bhattacharyya coefficient measurement. In summary, the contributions of our methods for
the underwater robot vision are four folds: 1) Our method can deal with camera motion
and scale changes of objects in underwater environment; 2) It is inexpensive vision
based recognition algorithm; 3) The advantage of shape based method compared to a
distinct feature point based method (SIFT) in the underwater environment with possible
turbidity variation; 4) We made a quantitative comparison of our method with a few other
well-know
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