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Handwritten Signature Verification via Deep Sparse Coding Architecture

机译:通过深度稀疏编码架构进行手写签名验证

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The use of a person's signature is considered as one of the most commonly used biometric methods for recognition, either as a standalone feature or as part of multimodal systems. Based on the inter-writer variability, handwritten signatures have been accepted as a personal trait in many transactions to verify the consent or the author's presence. The main challenges for handwritten signature verification are the limited amount of available data for each writer and the intra-writer variability. Sparse Representation (i.e. dictionary learning and sparse coding) achieved state of the art results at handwritten signature verification, using only a small set of genuine reference samples of the writer. The extension of Sparse Representation to an efficient multi-layer architecture is Deep Sparse Coding. Deep Sparse Coding architecture connects multiple layers of Sparse Representation with a sparse-to-dense module in order to enable Sparse Coding on deeper layers. Learning sparse representations at different levels of abstraction leads to building feature hierarchies. The sparse-to-dense module involves a Dimensionality Reduction process, which was implemented with simple and fast methods, such as Random Orthogonal projection or PCA; instead of the computational expensive DrLIM. The performance of the proposed Deep Sparse Coding architecture to the challenging problem of offline signature verification is demonstrated in the popular CEDAR signature dataset, delivering improved state of the art results.
机译:使用个人签名被认为是最常用的生物识别方法之一,既可以作为独立功能,也可以作为多模式系统的一部分。基于作者之间的差异性,手写签名已在许多交易中被接受为个人特征,以验证同意或提交人的在场。手写签名验证的主要挑战是每个写入者的可用数据量有限以及写入者内部的可变性。稀疏表示法(即字典学习和稀疏编码)仅使用作家的一小部分真实参考样本,即可在手写签名验证时达到最新的结果。将稀疏表示扩展为有效的多层体系结构是深度稀疏编码。深度稀疏编码架构将稀疏表示的多层稀疏表示模块连接在一起,以便在较深的层上启用稀疏编码。在不同的抽象级别上学习稀疏表示将导致构建要素层次结构。稀疏到密集模块涉及降维过程,该过程是通过简单而快速的方法(例如随机正交投影或PCA)实现的;而不是计算量大的DrLIM。流行的CEDAR签名数据集中展示了所提出的Deep Sparse Coding体系结构对脱机签名验证这一具有挑战性的问题的性能,从而提供了改进的最新结果。

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