From single- to multi-channel systems: Advancing handwriting forgery detection with triboelectric nanogenerator arrays

IF 16.8 1区 材料科学 Q1 CHEMISTRY, PHYSICAL
Sicheng Chen , Yuanbin Tang , Mingxin Liu , Linfeng Deng , Lei Yang , Weiqiang Zhang
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引用次数: 0

Abstract

Handwriting recognition is a critical tool in identity verification and document authentication, yet existing technologies face limitations such as susceptibility to forgery and dependency on professional expertise. In this study, we propose a multi-channel handwriting recognition system (MCHRS) based on triboelectric nanogenerators (TENG-Sensors) to address these challenges. The system integrates a TENG-based handwriting tablet (TENG-HT) with deep learning and an OC-SVM classifier for accurate and efficient handwriting recognition. The TENG-Sensors generate distinct voltage signals during handwriting, capturing dynamic pressure information unique to each character. We systematically evaluated the detection accuracy of TENG-HTs with 1, 2, and 4 channels, demonstrating that the 4-channel configuration achieved the highest recognition accuracy. Using the MobileNet V2 model for feature extraction, the system accurately distinguished between handwriting by genuine writers and forgers. Additionally, the MCHRS was enhanced with wireless data transmission capabilities through integration with ADC, MCU, and WiFi modules, enabling real-time processing without external power supply. The results highlight the superior performance of the 4-channel MCHRS, achieving over 99 % recognition accuracy in distinguishing handwritten Chinese and numeric characters. This self-powered, wireless system demonstrates significant potential for practical applications in handwriting recognition, offering a robust, cost-effective, and forgery-resistant solution.

Abstract Image

从单通道系统到多通道系统:利用三电纳米发生器阵列推进手写伪造检测
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来源期刊
Nano Energy
Nano Energy CHEMISTRY, PHYSICAL-NANOSCIENCE & NANOTECHNOLOGY
CiteScore
30.30
自引率
7.40%
发文量
1207
审稿时长
23 days
期刊介绍: Nano Energy is a multidisciplinary, rapid-publication forum of original peer-reviewed contributions on the science and engineering of nanomaterials and nanodevices used in all forms of energy harvesting, conversion, storage, utilization and policy. Through its mixture of articles, reviews, communications, research news, and information on key developments, Nano Energy provides a comprehensive coverage of this exciting and dynamic field which joins nanoscience and nanotechnology with energy science. The journal is relevant to all those who are interested in nanomaterials solutions to the energy problem. Nano Energy publishes original experimental and theoretical research on all aspects of energy-related research which utilizes nanomaterials and nanotechnology. Manuscripts of four types are considered: review articles which inform readers of the latest research and advances in energy science; rapid communications which feature exciting research breakthroughs in the field; full-length articles which report comprehensive research developments; and news and opinions which comment on topical issues or express views on the developments in related fields.
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