Automatic graph extraction from color images

T. Lourens, HIroshi G. Okuno, H. Kitano
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引用次数: 2

Abstract

An approach to symbolic contour extraction is described that consists of three stages: enhancement, detection, and extraction of contours and corners. Contours and corners are enhanced by models of monkey cortical complex and endstopped cells. Detection of corners and local contour maxima is performed by selection of local maxima in both contour and corner enhanced images. These maxima form the anchor points of a greedy contour following algorithm that extracts the contours. This algorithm is based on the idea of spatially linking neurons along a contour that fire in synchrony to indicate an extracted contour. The extracted contours and detected corners represent the symbolic representation of the image. The advantage of the proposed model over other models is that the same low constant thresholds for corner and local contour maxima detection are used for different images. Closed contours are guaranteed by the contour following algorithm to yield a fully symbolic representation which is more suitable for reasoning and recognition. In this respect our methodology is unique, and clearly different from the standard (edge) contour detection methods. The results of the extracted contours (when displayed as being detected) show similar or better results compared to the SUSAN and Canny-CSS detectors.
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从彩色图像中自动提取图形
描述了一种符号轮廓提取方法,该方法包括三个阶段:增强、检测和提取轮廓和角。猴皮质复合体和末端细胞模型增强了轮廓和角。通过选择轮廓增强图像和角增强图像的局部最大值来检测角点和局部轮廓最大值。这些最大值形成贪婪轮廓跟随算法提取轮廓的锚点。该算法基于沿等高线同步发射的神经元在空间上连接的思想,以指示提取的等高线。提取的轮廓和检测到的角代表图像的符号表示。与其他模型相比,该模型的优点是对不同的图像使用相同的低恒定阈值来检测角点和局部轮廓最大值。轮廓跟踪算法在保证闭合轮廓的同时,产生了更适合推理和识别的完全符号化表示。在这方面,我们的方法是独特的,明显不同于标准(边缘)轮廓检测方法。与SUSAN和Canny-CSS检测器相比,提取轮廓的结果(当显示为被检测时)显示出类似或更好的结果。
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