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Discrete Curvature Representations for Noise Robust Image Corner Detection

机译:离散曲率表示用于噪声鲁棒图像角检测

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摘要

Image corner detection is very important in the fields of image analysis and computer vision. Curvature calculation techniques are used in many contour-based corner detectors. We identify that existing calculation of curvature is sensitive to local variation and noise in the discrete domain and does not perform well when corners are closely located. In this paper, discrete curvature representations of single and double corner models are investigated and obtained. A number of model properties have been discovered, which help us detect corners on contours. It is shown that the proposed method has a high corner resolution (the ability to accurately detect neighboring corners), and a corresponding corner resolution constant is also derived. Meanwhile, this method is less sensitive to any local variations and noise on the contour; and false corner detection is less likely to occur. The proposed detector is compared with seven state-of-the-art detectors. Three test images with ground truths are used to assess the detection capability and localization accuracy of these methods in cases with noise-free and different noise levels; 24 images with various scenes without ground truths are used to evaluate their repeatability under affine transformation, JPEG compression, and noise degradations. The experimental results show that our proposed detector attains a better overall performance.
机译:图像角点检测在图像分析和计算机视觉领域非常重要。在许多基于轮廓的拐角检测器中使用了曲率计算技术。我们发现,现有的曲率计算对离散域中的局部变化和噪声很敏感,并且当拐角位置很近时效果不佳。本文研究并获得了单角和双角模型的离散曲率表示。已发现许多模型属性,可帮助我们检测轮廓上的角。结果表明,所提出的方法具有较高的角分辨率(能够准确检测到相邻的角),并且还可以推导相应的角分辨率常数。同时,该方法对轮廓上的任何局部变化和噪声不太敏感。并且不太可能发生错误的拐角检测。拟议的探测器与七个最新探测器进行了比较。在无噪声和不同噪声水平的情况下,使用三个具有地面真实性的测试图像来评估这些方法的检测能力和定位精度;在仿射变换,JPEG压缩和噪声降级的情况下,使用24个具有各种场景且没有地面真实性的图像来评估其可重复性。实验结果表明,我们提出的探测器获得了更好的整体性能。

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