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An iris recognition method based on multi-orientation features and Non-symmetrical SVM

机译:一种基于多向特征和非对称SVM的虹膜识别方法

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A new iris feature extraction approach using both spatial and frequency domain is presented. steerable pyramid is adopted to get the orientation information on iris images. The feature sequence is extracted on each sub-image and used to train Support Vector Machine (SVM) as iris classifiers. SVM has drawn great interest recently as one of the best classifiers in machine learning, although there is a problem in the use of traditional SVM for iris recognition. It cannot treat False Accept and False Reject differently with different security requirements. Therefore, a new kind of SVM called Non-symmetrical SVM is presented to classify the iris features. Experimental data shows that Non-symmetrical SVM can satisfy various security requirements in iris recognition applications. Feature sequence combined with spatial and frequency domain represents the variation details of the iris patterns properly. The results in this study demonstrate the potential of our new approach, and show that it performs more satisfactorily when compared to former algorithms.
机译:提出了一种新的虹膜功能提取方法,使用空间和频域。采用可操纵的金字塔来获取有关虹膜图像的方向信息。在每个子图像上提取特征序列,并用于培训支持向量机(SVM)作为虹膜分类器。最近,SVM吸引了极大的利益作为机器学习中最好的分类器之一,尽管在使用传统SVM进行虹膜识别时存在问题。它不能以不同的安全要求对待错误的接受和假拒绝。因此,提出了一种名为非对称SVM的新种类的SVM以对虹膜功能进行分类。实验数据表明,非对称的SVM可以满足虹膜识别应用中的各种安全要求。与空间和频域组合的特征序列代表了正确的光圈模式的变化细节。这项研究的结果表明了我们新方法的潜力,并表明与前算法相比,它更令人满意地表现得更令人满意。

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