Efficient Human Body Tracking by Quick Shift Belief Propagation
スポンサーリンク
概要
- 論文の詳細を見る
We propose a novel and efficient approach for tracking 2D articulated human body parts. In our approach, the human body is modeled by a graphical model where each part is represented by a node and the relationship between a pair of adjacent parts is indicated by an edge in the graph. Various approaches have been proposed to solve such problems, but efficiency is still a vital problem. We present a new Quick Shift Belief Propagation (QSBP) based approach which benefits from Quick Shift, a simple and efficient mode seeking method, in a part based belief propagation model. The unique aspect of this model is its ability to efficiently discover modes of the underlying marginal probability distribution while preserving the accuracy. This gives QSBP a significant advantage over approaches like Belief Propagation (BP) and Mean Shift Belief Propagation (MSBP). Moreover, we demonstrate the use of QSBP with an action based model; this provides additional advantages of handling self-occlusion and further reducing the search space. We present qualitative and quantitative analysis of the proposed approach with encouraging results.
論文 | ランダム
- エイコサノイドによるPPARの活性化
- 最大努力スプリントクロールの全身泳, 上半身泳, 下半身泳における動的抵抗およびパワー出力
- 手, 足の面積が泳速, ストローク頻度, ストローク長に及ぼす影響
- 会長就任のご挨拶
- 医薬品の探索・開発における薬物トランスポーター研究の重要性