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引用次数: 8
摘要
本研究开发的人脸识别系统是基于新发明的增量支持向量机进行人脸识别,其中使用DCT(离散余弦变换)来降低人脸空间的维数。低频DCT系数用于生成局部特征。然后将选定的特征向量馈送到ISVM中,对输入数据进行分类。增量支持向量机从先前存储的数据中增量学习数据,避免了人脸识别的大量训练时间和内存消耗。该方法使用ORL (Olivetti Research Laboratory)的[28]人脸数据库进行实验,结果证明,增量支持向量机不仅训练时间短,更新时间也短。利用该技术开发了一个准确的人脸识别系统并进行了测试,结果表明该系统性能良好。使用ISVM的最大优点是不仅减少了训练时间和更新时间,而且将分类准确率提高到100%。
Incremental learning algorithm for face recognition using DCT
Face Recognition System developed in this research work is based on newly invented Incremental Support Vector Machines for face recognition in which DCT (Discrete Cosine Transform) is used for the purpose to reduce the dimensionality of face space. Low frequency DCT coefficients are used to generate local features. Selected feature vectors are then fed into ISVM to classify the input data as a face ID or not. Incremental Support Vector Machine is used to learn data incrementally from previous stored data and also to avoid large training time and memory consumption for face recognition. In this approach ORL (Olivetti Research Laboratory)[28] face database is used for performing experiments and the results has proved that not only the training time but also the updating time taken by Incremental SVM is very less. Using this technique an accurate face recognition system is developed and tested and the performance found is efficient. The biggest advantage of using the ISVM is that it not only decreases the training time and updating time but also improves the classification accuracy rate to 100%.