外部图像的轮廓分析

R. Uskenbayeva, S. Mukhanov
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引用次数: 2

摘要

图像识别在计算机视觉科学中占有特殊的地位。轮廓分析在模式识别中尤为重要。在本文中,我们考虑了外部图像的结构轮廓分析。活动轮廓线法显示了使用最小能量曲线的可能性。定义边界而不首先隔离图像对象边界的能量函数。因此,Canny边界检测器算法用于检测图像中物体的轮廓。该算法消除了图像的模糊和噪声,消除了图像中的误差或干扰。路径跟踪方法跨越了主体和背景之间的界限。为了反映其性能和识别需求,需要机器学习等算法。聚类被用作一种机器学习方法来寻找最近邻标准。聚类的数学模型在识别图像中的边界或轮廓方面有其独特的应用。轮廓检测和连接方法使用图分析,在存在噪声的情况下有效且不损失效率。凸性缺陷轮廓分析算法能够确定边界的大小,并在计算目标参数时采用搜索轮廓凹陷和引入关键特征的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contour analysis of external images
Image recognition occupies a special place in the science of computer vision. Contour analysis particular important in pattern recognition. In this paper, we consider the structure of the contour analysis of external images. Active contour method shows the possibilities of using the minimum energy curve. The energy function that defines boundaries without first isolating the boundaries of an image object. Therefore, the Canny Boundary Detector algorithm is used to detect the contours of an object in an image. This algorithm smooths out image blur and eliminates noise, eliminates errors or interference in the picture. The path tracking method crosses out the boundaries between the subject and the background. Algorithms such as machine learning are needed in order to reflect its performance and the need for recognition. Clustering is used as a machine learning method to find the nearest neighbor criteria. The mathematical model of clustering has its own uniqueness and application for identifying borders or contours in the image. The contour detection and linking approach uses graph analysis, which works and does not lose efficiency in the presence of noise. The convexity defects contour analysis algorithm is able to determine the size of borders, and also uses the search for contour recesses and the introduction of key features when calculating object parameters.
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