Affiliation:
1. Shanghai Jiao Tong University, Shanghai, China
Abstract
As one kind of biological characteristics of people, handwritten signature has been widely used in the banking industry, government and education. Verifying handwritten signatures manually causes too much human cost, and its high probability of errors can threaten the property safety and even society stability. Therefore, the need for an automatic verification system is emphasized. This paper proposes a device-free on-line handwritten signature verification system ASSV, providing paper-based handwritten signature verification service. As far as we know, ASSV is the first system which uses the changes of acoustic signals to realize signature verification. ASSV differs from previous on-line signature verification work in two aspects: 1. It requires neither a special sensor-instrumented pen nor a tablet; 2. People do not need to wear a device such as a smartwatch on the dominant hand for hand tracking. Differing from previous acoustic-based sensing systems, ASSV uses a novel chord-based method to estimate phase-related changes caused by tiny actions. Then based on the estimation, frequency-domain features are extracted by a discrete cosine transform (DCT). Moreover, a deep convolutional neural network (CNN) model fed with distance matrices is designed to verify signatures. Extensive experiments show that ASSV is a robust, efficient and secure system achieving an AUC of 98.7% and an EER of 5.5% with a low latency.
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction
Reference46 articles.
1. 2013. 2013 ABA Deposit Account Fraud Survey. Retrieved Jan. 4 2019 from https://www.aba.com/Products/Surveys/Pages/2013DepositAccount.aspx 2013. 2013 ABA Deposit Account Fraud Survey. Retrieved Jan. 4 2019 from https://www.aba.com/Products/Surveys/Pages/2013DepositAccount.aspx
2. 2015. 2015 AFP Payments Fraud and Control Survey. Retrieved Jan. 4 2019 from http://wwtug.org/instmem.html 2015. 2015 AFP Payments Fraud and Control Survey. Retrieved Jan. 4 2019 from http://wwtug.org/instmem.html
3. DopLink
4. Offline Signature Verification Using Pixel Matching Technique
5. Horst Bunke Markus Roth and Ernst Günter Schukat-Talamazzini. 1995. Off-line cursive handwriting recognition using hidden Markov models. Pattern recognition 28 9 (1995) 1399--1413. Horst Bunke Markus Roth and Ernst Günter Schukat-Talamazzini. 1995. Off-line cursive handwriting recognition using hidden Markov models. Pattern recognition 28 9 (1995) 1399--1413.
Cited by
15 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献