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A New Distance Measure Based on Generalized Image Normalized Cross-Correlation for Robust Video Tracking and Image Recognition

机译:基于广义图像归一化跨相关的新距离测量用于鲁棒视频跟踪和图像识别

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摘要

We propose two novel distance measures, normalized between 0 and 1, and based on normalized cross-correlation for image matching. These distance measures explicitly utilize the fact that for natural images there is a high correlation between spatially close pixels. Image matching is used in various computer vision tasks, and the requirements to the distance measure are application dependent. Image recognition applications require more shift and rotation robust measures. In contrast, registration and tracking applications require better localization and noise tolerance. In this paper, we explore different advantages of our distance measures, and compare them to other popular measures, including Normalized Cross-Correlation (NCC) and Image Euclidean Distance (IMED). We show which of the proposed measures is more appropriate for tracking, and which is appropriate for image recognition tasks.
机译:我们提出了两种新颖的距离度量,归一化为0到1,并基于归一化互相关进行图像匹配。这些距离度量明确利用了以下事实:对于自然图像,在空间上接近的像素之间存在很高的相关性。图像匹配用于各种计算机视觉任务中,并且距离测量的要求取决于应用程序。图像识别应用需要更多的移位和旋转鲁棒性措施。相反,配准和跟踪应用要求更好的定位和噪声容限。在本文中,我们探索了距离度量的不同优势,并将它们与其他流行的度量进行比较,包括归一化互相关(NCC)和图像欧几里得距离(IMED)。我们展示了哪些建议的措施更适合跟踪,哪些适合图像识别任务。

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