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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Corner detection based on shearlet transform and multi-directional structure tensor
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Corner detection based on shearlet transform and multi-directional structure tensor

机译:基于Shearlet变换和多向结构张量的角度检测

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摘要

Image corners have been widely used in various computer vision tasks. Current multi-scale analysis based corner detectors do not make full use of the multi-scale and multi-directional structural information. This degrades their detection accuracy and capability of refining corners. In this work, an improved shearlet transform with a flexible number of directions and a reasonable support is proposed to extract accurate multi-scale and multi-directional structural information from images. To make full use of the structural information from the improved shearlets, a novel multi-directional structure tensor is constructed for corner detection, and a multi-scale corner measurement function is proposed to remove false candidate corners. Experimental results demonstrate that the proposed corner detector performs better than existing corner and interest point detectors in terms of detection accuracy, localization accuracy, and robustness to affine transformations, illumination changes, noise, viewpoint changes, etc. It has a great potential for extension as a descriptor and for applications in computer vision tasks. Crown Copyright (C) 2020 Published by Elsevier Ltd. All rights reserved.
机译:图像角已经广泛用于各种计算机视觉任务中。基于多尺度分析的基于角探测器不会充分利用多尺度和多向结构信息。这降低了它们的检测精度和精炼角的能力。在这项工作中,提出了一种具有灵活数量的方向和合理支持的改进的Shearlet变换,以从图像中提取精确的多尺度和多向结构信息。为了充分利用来自改进的沉沉的结构信息,建造了一种新的多向结构张量,用于角落检测,并且提出了多尺度角测量功能以去除假候选角。实验结果表明,在检测精度,定位精度和鲁棒性方面,所提出的角探测器比现有的角和兴趣点探测器更好地进行仿射变换,照明变化,噪声,视点变化等。它具有延伸的巨大潜力描述符和计算机视觉任务中的应用程序。 Crown版权所有(c)2020由elestvier有限公司发布的所有权利保留。

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