Enhancing Signature Verification through Neural Network Ensemble

Kishan Chandravadia, Pritam Prakash, Dr. Priya Swaminarayan
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Abstract

This study presents a signature authentication mechanism to prevent forgery. In the actual world, handling a large collection of data and detecting genuine signatures with reasonable accuracy is often difficult for any verification system. As a result, artificial intelligence techniques are used that can learn from a large data set during the training phase and reply effectively during the application phase without wasting a lot of storage memory space or processing time. It should also be able to refresh its expertise based on real-world encounters on a regular basis. A Multi-Layered Neural Network Model is one such adaptive machine learning technique that is used in this study. Initially, a massive amount of data is gathered by photographing several authentic and fake signatures. The image quality is increased by applying image processing, which is followed by the feature extraction phase, which extracts specific unique standard statistical features.
利用神经网络集成增强签名验证
提出了一种防止伪造的签名认证机制。在现实世界中,对于任何验证系统来说,处理大量数据并以合理的精度检测真实签名通常都是困难的。因此,使用人工智能技术,可以在训练阶段从大数据集学习,并在应用阶段有效地响应,而不会浪费大量的存储内存空间或处理时间。它还应该能够定期根据现实世界的遭遇更新其专业知识。多层神经网络模型是本研究中使用的一种自适应机器学习技术。最初,通过拍摄几个真实和虚假的签名来收集大量数据。通过图像处理提高图像质量,然后是特征提取阶段,提取特定的唯一标准统计特征。
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