基于张量流的CNN人体签名验证系统

A. G, A. K, D. P, Abimanyu R, V. V
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引用次数: 0

摘要

最流行的验证生物识别技术之一是签名。在支票、表格、信件、申请、会议记录和其他文件上,都需要手写签名。一个人的手写签名必须被单独识别,因为每个人的签名本质上是唯一的。签名验证是一种流行的技术,用于在某人不在场时确认其身份。人工验证可能不准确,有时也不确定。使用卷积神经网络(CNN)的作者依赖模型在签名验证中进行了研究。为了创建伪造签名,使用自动编码器在真实照片中创建随机扭曲,然后在训练期间将其输入分类器。除了展示不同图像训练集数量的各种测试结果外,该研究还描述了应用于图像的所有图像预处理程序。在波斯语数据集中,在使用22张真实照片进行训练后,该系统的平均测试准确率为83%。当模型在9张真实照片上进行训练时,准确率下降了9.4%。关键词:离线签名验证,WD (Writer Dependent), CNN (Convolutional Neural Network), FAR (False Acceptance Ratio), FRR (False Rejection Ratio),自动编码器
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human Signature Verification System Using CNN with Tensor flow
One of the most popular verification biometrics is the signature. On checks, forms, letters, applications, minutes, and other documents, handwritten signatures are required. A person's handwritten signature must be individually identified because each individual's signature is unique by nature. Signature verification is a popular technique for confirming anyone's identity while they are not present. Human verification can be inaccurate and occasionally unsure. The use of Convolutional Neural Networks (CNN) for Writer-Dependent models in signature verification is examined in this research. In order to create forged signatures, random distortions were created in real photos using an auto encoder and then fed to the classifier during training. In addition to demonstrating various test outcomes for varying the number of training sets of images, the study describes all image pre-processing procedures that were applied to the image. In the Persian dataset, the system's average test accuracy is 83% after 22 real photos were used to train it. When the model was trained on nine real photos, accuracy dropped by 9.4%. Key Word: Offline Signature Verification, WD (Writer Dependent), CNN (Convolutional Neural Network), FAR (False Acceptance Ratio), FRR (False Rejection Ratio), Auto encoder
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