| Literature DB >> 27430036 |
Jin Zheng1, Bo Li1, Peng Tian2, Gang Luo3.
Abstract
Local features are widely used in visual tracking to improve robustness in cases of partial occlusion, deformation and rotation. This paper proposes a local fragment-based object tracking algorithm. Unlike many existing fragment-based algorithms that allocate the weights to each fragment, this method firstly defines discrimination and uniqueness for local fragment, and builds an automatic pre-selection of useful fragments for tracking. Then, a Harris-SIFT filter is used to choose the current valid fragments, excluding occluded or highly deformed fragments. Based on those valid fragments, fragment-based color histogram provides a structured and effective description for the object. Finally, the object is tracked using a valid fragment template combining the displacement constraint and similarity of each valid fragment. The object template is updated by fusing feature similarity and valid fragments, which is scale-adaptive and robust to partial occlusion. The experimental results show that the proposed algorithm is accurate and robust in challenging scenarios.Entities:
Keywords: Fragments-based tracking; Harris-SIFT filter; Structured fragments; Template update; Valid fragment selection
Year: 2016 PMID: 27430036 PMCID: PMC4946651 DOI: 10.1007/978-3-319-27671-7_62
Source DB: PubMed Journal: Multimed Model