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摘要: 提出了一种基于Gabor小波和支持向量机的物体识别通用框架. 在该框架中, 特征抽取采用选取的Gabor小波在物体的最佳位置卷积实现, 而分类则通过支持向量机实现. 相比传统的基于Gabor特征的识别系统, 该方法能够同时达到准确而快速的分类目的. 本论文成功地将该框架应用于两个实际的物体识别例子: 物体/非物体分类和人脸识别. 实验结果证明了所提出的方法相对于其它方法的优越性.Abstract: This paper proposes a Gabor wavelets and support vector machine (SVM)-based framework for object recognition. When discriminative features are extracted at optimized locations using selected Gabor wavelets, classifications are done via SVM. Compared to conventional Gabor feature based object recognition system, the system developed in this paper is both robust and efficient. The proposed framework has been successfully applied to two object recognition applications, i.e., object/non-object classification and face recognition. Experimental results clearly show advantages of the proposed method over other approaches.
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Key words:
- Gabor feature /
- support vector machine (SVM) /
- object recognition
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