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3D Object Recognition using Multiclass Support Vector Machine-K-Nearest Neighbor Supported by Local and Global Feature

机译:使用局部和全局特征支持的多类支持向量机-K最近邻的3D对象识别

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摘要

Problem statement: In this study, a new method has been proposed tor the recognition of 3D objects based on the various views of the object. The proposed method is evolved from the two promising methods available for object recognition. Approach: The proposed method uses both the local and global features extracted from the images. For feature extraction, Hu's Moment invariant is computed for global feature to represent the image and Hessian-Laplace detector and PCA-SIFT descriptor as local feature for the given image. The multi-classs SVM-KNN classifier is applied to the feature vector to recognize the object. The proposed method uses the COIL-100 and CALTECH image databases for its experimentation. Results and Conclusion: The proposed method is implemented in MATLAB and tested. The results of the proposed method are better when comparing with other methods like KNN, SVM and BPN.
机译:问题陈述:在这项研究中,提出了一种新方法来基于对象的各种视图来识别3D对象。所提出的方法是从可用于对象识别的两种有前途的方法发展而来的。方法:建议的方法使用从图像中提取的局部和全局特征。对于特征提取,针对全局特征计算Hu的矩不变量,以将图像表示,并将Hessian-Laplace检测器和PCA-SIFT描述符作为给定图像的局部特征。将多类SVM-KNN分类器应用于特征向量以识别对象。所提出的方法使用COIL-100和CALTECH图像数据库进行实验。结果与结论:所提出的方法在MATLAB中实现并进行了测试。与KNN,SVM和BPN等其他方法相比,该方法的结果更好。

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