Title :
Scale and Rotation Invariant Approach to Tracking Human Body Part Regions in Videos
Author :
Yihang Bo ; Hao Jiang
Abstract :
We propose a novel scale and rotation invariant method to track a human subject´s body part regions in cluttered videos. The proposed method optimizes the assembly of body part region proposals with the spatial and temporal constraints of a human body plan. This approach is invariant to the object scale and rotation changes. To enable scale and rotation invariance, the human body part graph of the proposed method has to be loopy, efficiently optimizing the body part region assembly is a great challenge. We propose a dynamic programming method to solve the problem. We devise a method that finds N-best whole body configurations from loopy structures in each video frame using dynamic programming. The N-best configurations are then used to construct trellises with which we track human body part regions by finding shortest paths on the trellises. Our experiments on a variety of videos show that the proposed method is efficient, accurate and robust against object appearance variations, scale and rotation changes and background clutter.
Keywords :
dynamic programming; graph theory; object tracking; video signal processing; N-best whole body configuration; background clutter; cluttered video; dynamic programming method; human body part graph; human body part region tracking; human body plan; loopy structur; object appearance variation; object rotation change; object scale change; rotation invariant approach; scale invariant approach; trellis construction; trellis shortest path finding; video frame; Clutter; Dynamic programming; Histograms; Proposals; Shape; Torso; Videos; Tracking regions; human pose; scale and rotation invariant;
Conference_Titel :
Computer Vision and Pattern Recognition Workshops (CVPRW), 2013 IEEE Conference on
Conference_Location :
Portland, OR
DOI :
10.1109/CVPRW.2013.151