资源论文Understanding Image Structure via Hierarchical Shape Parsing

Understanding Image Structure via Hierarchical Shape Parsing

2019-12-19 | |  53 |   49 |   0

Abstract

Exploring image structure is a long-standing yet important research subject in the computer vision community. In this paper, we focus on understanding image structure inspired by the simple-to-complexbiological evidence. A hierarchical shape parsing strategy is proposed to partition and organize image components into a hierarchical structure in the scale space. To improve the robustness and flflexibility of image representation, we further bundle the image appearances into hierarchical parsing trees. Image descriptions are subsequently constructed by performing a structural pooling, facilitating effificient matching between the parsing trees. We leverage the proposed hierarchical shape parsing to study two exemplar applications including edge scale refifinement and unsupervised objectnessdetection. We show competitive parsing performance comparing to the state-of-the-arts in above scenarios with far less proposals, which thus demonstrates the advantage of the proposed parsing scheme

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