Extraction of unique pixels based on co-occurrence probability for high-speed template matching

M. Hashimoto, T. Fujiwara, H. Koshimizu, H. Okuda, K. Sumi
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引用次数: 9

Abstract

We propose a high-speed template matching method using small number of pixels that represent statistical subset of an original template image. Generally, to reduce the number of template pixels means low computational cost of matching. However, high-speed and high-reliability often have trade-off relation in actual situations. In order to realize reliable matching, it is important to extract few pixels that have unique characteristics about their location and intensity. For this purpose, analysis of co-occurrence histogram for local combination of multiple pixels is useful, because it provides beneficial information about simultaneous occurrence probability. In the proposed method, pixels with low co-occurrence probability are preferentially extracted as significant template pixels used for matching process. Also we propose a method to approximate n-pixels co-occurrence probability using some two-dimensional co-occurrence histograms to save memory space. Through some experiments using more than 480 test images, it has been proved that approximately 0.2 to 1% of template pixels extracted by proposed method can achieve practical performance. The recognition success rate is 96.6%, and the processing time is 15msec (by Core 2 Duo 3.16GHz).
高速模板匹配中基于共现概率的唯一像素提取
我们提出了一种高速模板匹配方法,使用代表原始模板图像的统计子集的少量像素。通常,减少模板像素的数量意味着降低匹配的计算成本。然而,在实际应用中,高速与高可靠性往往存在权衡关系。为了实现可靠的匹配,重要的是提取少量具有独特的位置和强度特征的像素。为此,分析多像素局部组合的共现直方图是有用的,因为它提供了有关同时发生概率的有益信息。在该方法中,优先提取共现概率较低的像素作为重要模板像素用于匹配处理。为了节省内存空间,我们还提出了一种利用二维共现直方图近似n像素共现概率的方法。通过对480多张测试图像的实验证明,该方法提取的模板像素约为0.2 ~ 1%,可以达到实际性能。识别成功率为96.6%,处理时间为15msec (Core 2 Duo 3.16GHz)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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