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Profound impact of artificial neural networks and Gaussian SVM kernel on distinctive feature set for offline signature verification

机译:人工神经网络和高斯SVM内核对用于脱机签名验证的独特功能集的深刻影响

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Signature (Latin - signare) is a handwritten stylized form of identification of its owner. Often handwritten signatures are generally used in secured identity preservation. An ideal signature recognition system handles image noise as well as that of learning unique patterns in an individual's signature. This paper analyzes the performance of artificial neural network (ANN) architectures and Gaussian support vector machine (SVM) kernel for offline signature recognition scheme that is trained on a distinct feature set extracted from signature images. We investigated the impact of using ANN and SVM on specialized feature set and present comparative analysis of the two. Three distinct features - gradient histogram, dot density and slices were used - yielding testing accuracies of 93.1%, 98% and 85.1% respectively. Using ANN and SVM on this set, a maximum accuracy of 96.57% was achieved over a group of 30 individuals, covering an entire data set of 3000 signatures.
机译:签名(拉丁语-signare)是其所有者身份的手写风格化形式。通常在安全的身份保存中通常使用手写签名。理想的签名识别系统可以处理图像噪声以及学习个人签名中的独特图案的噪声。本文分析了用于脱机签名识别方案的人工神经网络(ANN)架构和高斯支持向量机(SVM)内核的性能,该方案在从签名图像中提取的独特特征集上进行训练。我们调查了使用ANN和SVM对专用功能集的影响,并给出了两者的比较分析。使用了三个不同的特征-梯度直方图,点密度和切片-产生的测试精度分别为93.1%,98%和85.1%。在该集合上使用ANN和SVM,在30个个体的组中实现了96.57%的最大准确性,覆盖了3000个签名的整个数据集。

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