基于尺度不变特征变换的轮廓形状识别

Mathara Rojanamontien, U. Watchareeruetai
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引用次数: 4

摘要

本文提出了一种新的形状特征提取器contourt - sift,并提出了一种计算两组描述符之间相似度的匹配方法。它允许基于自动定位轮廓上突出的局部特征来识别形状,这些特征是从不同平滑尺度的一维信号表示中提取的。该算法将每个局部特征描述为曲率直方图的频率列表,曲率直方图是由每个局部位置周围的曲线段创建的。与具有相似形状的模型描述符相比,描述符具有较高的相似性。该算法具有图像缩放不变性、平移不变性和旋转不变性。利用Flavia数据集的200幅图像进行实验验证。将该算法与CSS算法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Shape recognition by using Scale Invariant Feature Transform for contour
This paper proposes a novel shape feature extractor named Contour-SIFT along with a matching method that computes the similarity between two set of proposed descriptors. It allows a shape to be recognized based on automatically located outstanding local features on its contour, which are extracted from 1-D signal representations of different smoothing scales. The algorithm describes each local feature as a list of frequencies from curvature histogram, which is created from curve segment around each local position. The descriptors will give high similarity compared with a model descriptors of a similar shape. The algorithm has properties of image scaling-, translation-, and rotation-invariants. An experiment were conducted with 200 images from Flavia dataset for verification. The result of using the proposed algorithm is compared with the result of using CSS.
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