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Contour-Based Corner Detection and Classification by Using Mean Projection Transform

机译:基于均值投影变换的基于轮廓的拐角检测与分类

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Image corner detection is a fundamental task in computer vision. Many applications require reliable detectors to accurately detect corner points, commonly achieved by using image contour information. The curvature definition is sensitive to local variation and edge aliasing, and available smoothing methods are not sufficient to address these problems properly. Hence, we propose Mean Projection Transform (MPT) as a corner classifier and parabolic fit approximation to form a robust detector. The first step is to extract corner candidates using MPT based on the integral properties of the local contours in both the horizontal and vertical directions. Then, an approximation of the parabolic fit is calculated to localize the candidate corner points. The proposed method presents fewer false-positive (FP) and false-negative (FN) points compared with recent standard corner detection techniques, especially in comparison with curvature scale space (CSS) methods. Moreover, a new evaluation metric, called accuracy of repeatability (AR), is introduced. AR combines repeatability and the localization error (Le) for finding the probability of correct detection in the target image. The output results exhibit better repeatability, localization, and AR for the detected points compared with the criteria in original and transformed images.
机译:图像角点检测是计算机视觉中的基本任务。许多应用需要可靠的检测器来准确检测拐角点,这通常是通过使用图像轮廓信息来实现的。曲率定义对局部变化和边缘混叠敏感,并且可用的平滑方法不足以正确解决这些问题。因此,我们提出均值投影变换(MPT)作为角点分类器和抛物线拟合近似以形成鲁棒检测器。第一步是基于水平和垂直方向上局部轮廓的积分属性,使用MPT提取角候选。然后,计算抛物线拟合的近似值以定位候选角点。与最近的标准角点检测技术相比,该方法呈现的假阳性(FP)和假阴性(FN)点更少,特别是与曲率标度空间(CSS)方法相比。此外,引入了一种新的评估指标,称为重复精度(AR)。 AR结合了可重复性和定位误差(L e ),以在目标图像中找到正确检测的概率。与原始图像和转换图像中的标准相比,输出结果对于检测到的点表现出更好的可重复性,定位性和AR。

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