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Multilanguage-handwriting self-powered recognition based on triboelectric nanogenerator enabled machine learningViews [1360] Delivery time :2020-08-03 11:04:53

Multilanguage-handwriting self-powered recognition based on triboelectric nanogenerator enabled machine learning

Nano Energy77(2020)105174 (PDF-File)

Weiqiang Zhang, Linfeng Deng, Lei Yang, Ping YangDongfeng Diao*, Pengfei Wang**, Zhong Lin Wang***

Handwriting signature is widely used and the main challenge for handwriting recognition is how to obtain comprehensive handwriting information. Triboelectric nanogenerator is sensitive to external triggering force and can be used to record personal handwriting signals and associated characteristics. In this work, micro/nano structure textured TENG acting as a smart self-powered handwriting pad is developed and its effectiveness for handwriting recognition is demonstrated. Three individuals’ handwriting signals of English words, Chinese characters and Arabic numerals are acquired by leaf-inspired TENG, and the other three people’s handwriting signals of English sentences and the corresponding Chinese sentences are obtained by cylindrical microstructured PDMS based TENG, and these signals exhibit unique features. Combined with the machine learning method, the people’s handwriting was successfully identified. The classification accuracies of 99.66%, 93.63%, 91.36%, 99.05%, and 97.73% were reached for English words, Arabic numerals, Chinese characters, English sentences, and the corresponding Chinese sentences, respectively. The results strongly suggested that the textured TENG exhibited great potential in personal handwriting signature identification, security defense, and private information protection applications.

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