基于兴趣点区域的图像特征向量构建

Nishat Ahmad, Gwangwon Kang, Hyunsook Chung, Suchoi Ik, Jong-An Park
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引用次数: 0

摘要

提出了一种基于内容的图像检索方法。该算法使用从图像中检测到的角点周围采样的信息。提出了一种基于直线相交的角点检测方法,利用霍夫变换对直线进行检测,然后找到相交、近相交或形状复杂的角点。由于仿射变换保留了直线上点的共线性及其相交特性,因此获得的角点保留了非常理想的可重复性特性,从而确保了各种变换下的相似像素样本,并且对噪声具有鲁棒性。K-means聚类算法对随机选择的训练图像中提取的角区样本均值和方差进行类标记,并用于学习高斯Byes分类器对整个训练图像库进行分类。图像中类成员的直方图被用作特征向量。使用四种不同的相似性度量对算法的检索性能和行为进行了测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Feature Vector Construction Using Interest Point Based Regions
The paper presents a new approach for content based retrieval of images. The algorithm uses information sampled from around detected corner points in the image. A corner detection approach based on line intersections has been employed using Hough transform for line detection and then finding intersecting, near intersecting or complex shaped corners. As the affine transformations preserve the co-linearity of points on a line and their intersection properties, the corner points obtained as such retain the much desired property of repeatability and hence ensure the similar pixel samples under various transformations and are robust to noise. K-means clustering algorithm is used to assign class labels to the extracted sample mean and variance of the corner regions from a random selection of training images and used for learning a Gaussian Byes classifier to classify whole training image database. Histogram of the class members in an image has been used as a feature vector. The retrieval performance and behavior of the algorithm has been tested using four different similarity measures.
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