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Feature Points Detection Using Combined Character Along Principal Orientation

机译:结合字符沿主方向的特征点检测

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摘要

Most existing methods for determining localization of the image feature point are still inefficient in terms of the precision. In the paper, we propose a new algorithm for feature point detection based on the combined intensity variation status along the adaptive principal direction of the corner. Firstly, we detect principal orientation of each pixel, instead of calculating the gradients along the horizontal and vertical axes. And then we observe the intensity variations of the pixel along the adaptive principal axes and its tangent one respectively. When the combined variation status is classified into several specific types, it can be used to determine whether a pixel is a corner point or not. In addition to corner detection, it is also possible to use our proposed algorithm to detect the edges, isolated point and plain regions of a natural image. Experi-mental results on synthetic and natural scene images have shown that the proposed algorithm can successfully detect any kind of the feature points with good accuracy of localization.
机译:就精度而言,大多数现有的确定图像特征点定位的方法仍然效率低下。在本文中,我们提出了一种新的特征点检测算法,该算法基于沿拐角的自适应主方向的组合强度变化状态。首先,我们检测每个像素的主要方向,而不是计算沿水平和垂直轴的梯度。然后,我们分别观察了像素沿自适应主轴及其切线的强度变化。当组合的变化状态被分类为几种特定类型时,它可以用于确定像素是否是拐角点。除了角点检测之外,还可以使用我们提出的算法来检测自然图像的边缘,孤立点和平原区域。在合成和自然场景图像上的实验结果表明,该算法可以成功地检测出任何种类的特征点,并且定位精度很高。

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