Combining local and global feature for object recognition using SVM-KNN

R. Muralidharan, C. Chandrasekar
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引用次数: 17

Abstract

In this paper, a framework for recognizing an object from the given image based on the local and global feature is discussed. The proposed method is based on the combination of the two methods in the literature, K-Nearest Neighbor (KNN) and Support Vector Machine (SVM). For feature vector formation, Hu's Moment Invariant is computed to represent the image, which is invariant to translation, rotation and scaling as a global feature and Hessian-Laplace detector and PCA-SIFT descriptor as local feature. In this framework, first the KNN is applied to find the closest neighbors to a query image and then the local SVM is applied to find the object that belongs to the object set. The proposed method is implemented as two stage process. In the first stage, KNN is utilized to compute distances of the query to all training and pick the nearest K neighbors. During the second stage SVM is applied to recognize the object. The proposed method is experimented in MATLAB and tested with the COIL-100 database and the results are shown. To prove the efficiency of the proposed method, Neural Network model (BPN) is performed and the comparative results are given.
结合局部和全局特征的SVM-KNN目标识别
本文讨论了一种基于局部和全局特征的图像目标识别框架。本文提出的方法是基于文献中k -最近邻(KNN)和支持向量机(SVM)两种方法的结合。对于特征向量的形成,计算Hu’s矩不变性来表示图像,该图像对平移、旋转和缩放不变性作为全局特征,而Hessian-Laplace检测器和PCA-SIFT描述子作为局部特征。在该框架中,首先使用KNN来查找查询图像的最近邻居,然后使用局部支持向量机来查找属于对象集的对象。该方法分为两阶段实现。在第一阶段,利用KNN计算查询到所有训练的距离,并选择最近的K个邻居。第二阶段采用支持向量机对目标进行识别。该方法在MATLAB中进行了实验,并在COIL-100数据库中进行了测试,并给出了测试结果。为了证明该方法的有效性,进行了神经网络模型(BPN)的仿真,并给出了对比结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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