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SynSig2Vec: Learning Representations from Synthetic Dynamic Signatures for Real-World Verification

Songxuan Lai, Lianwen Jin, Luojun Lin, Yecheng Zhu, Huiyun Mao

2020Proceedings of the AAAI Conference on Artificial Intelligence34 citationsDOIOpen Access PDF

Abstract

An open research problem in automatic signature verification is the skilled forgery attacks. However, the skilled forgeries are very difficult to acquire for representation learning. To tackle this issue, this paper proposes to learn dynamic signature representations through ranking synthesized signatures. First, a neuromotor inspired signature synthesis method is proposed to synthesize signatures with different distortion levels for any template signature. Then, given the templates, we construct a lightweight one-dimensional convolutional network to learn to rank the synthesized samples, and directly optimize the average precision of the ranking to exploit relative and fine-grained signature similarities. Finally, after training, fixed-length representations can be extracted from dynamic signatures of variable lengths for verification. One highlight of our method is that it requires neither skilled nor random forgeries for training, yet it surpasses the state-of-the-art by a large margin on two public benchmarks.

Topics & Concepts

Signature (topology)Computer scienceRanking (information retrieval)Margin (machine learning)Representation (politics)Rank (graph theory)Convolutional neural networkConstruct (python library)Artificial intelligenceExploitPattern recognition (psychology)Distortion (music)Machine learningData miningMathematicsComputer securityLawBandwidth (computing)Political scienceCombinatoricsGeometryComputer networkPoliticsProgramming languageAmplifierHandwritten Text Recognition TechniquesHuman Pose and Action RecognitionImage Processing and 3D Reconstruction