基于contourlet变换和支持向量机的离线手写签名识别与验证

Muhammad Reza Pourshahabi, M. Sigari, H. Pourreza
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引用次数: 80

摘要

提出了一种基于轮廓波变换(contourlet transform, CT)的签名识别与验证方法。该方法采用contourlet系数作为特征提取器,支持向量机(SVM)作为分类器。该方法首先对签名图像的大小进行归一化处理。预处理后,在指定的尺度和方向上计算轮廓波系数。接下来,将所有提取的系数作为特征向量馈送到一层SVM分类器中。SVM分类器的个数等于类的个数。每个SVM分类器判断输入图像是否属于相应的类。该方法的主要特点是独立于签名者的国家。在两个签名集上进行了两个实验。第一个是在波斯签名集和另一个是在Stellenbosch(土耳其)签名集。基于这些实验,我们对波斯语和土耳其语签名集的识别率分别达到100%,识别率超过96.5%,验证错误率为4.5%。
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Offline handwritten signature identification and verification using contourlet transform and Support Vector Machine
In this paper, a new method for signature identification and verification based on contourlet transform (CT) is proposed. This method uses contourlet coefficient as the feature extractor and Support Vector Machine (SVM) as the classifier. In proposed method, first signature image is normalized based on size. After preprocessing, contourlet coefficients are computed on specified scale and direction. Next, all extracted coefficients are fed to a layer of SVM classifiers as feature vector. The number of SVM classifiers is equal to the number of classes. Each SVM classifier determines if the input image belongs to the corresponding class or not. The main characteristic of proposed method is independency to nation of signers. Two experiments on two signature sets are performed. The first is on a Persian signature set and the other is on Stellenbosch (Turkish) signature set. Based on these experiments, we achieve a 100% recognition (identification) rate and more than 96.5% on Persian and Turkish signature sets respectively and 4.5% error in verification.
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