BLAID: Boundaries from Locally Adaptive Isotropic Detection

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摘要

Detection of corners is an important task in computer vision to capture discontinuous boundaries of objects of interest. Present operators designed to detect boundaries having sharp corners often produce unsatisfactory results because the points detected could also be an isolated point, ending of a thin line or a maximum curvature region of a planar curve. A novel corner detection operator, capable of detecting corner points that exist only on the boundary of an object, is presented in this paper. Initially, candidate corner points are detected by exploiting intensity information of the local neighborhood and associated connectivity patterns around the center point within a local window. Further verification is done to confirm whether the detected corner point is on the boundary of the targeted object. As the proposed operator is isotropic, it covers all the orientations and corner angles by performing a single computation step within the local window. The performance of the operator is tested with both synthetic and real images and the results are compared with other major corner detectors.

论文关键词:Corner detection,Object boundaries,Corner points

论文评审过程:Received 15 July 2014, Accepted 21 April 2016, Available online 27 April 2016, Version of Record 10 May 2016.

论文官网地址:https://doi.org/10.1016/j.imavis.2016.04.006