Abstract

Handwritten signatures widely exist in our daily lives. The main challenge of signal recognition on handwriting is in the development of approaches to obtain information effectively. External mechanical signals can be easily detected by triboelectric nanogenerators which can provide immediate opportunities for building new types of active sensors capable of recording handwritten signals. In this work, we report an intelligent human-machine interaction interface based on a triboelectric nanogenerator. Using the horizontal-vertical symmetrical electrode array, the handwritten triboelectric signal can be recorded without external energy supply. Combined with supervised machine learning methods, it can successfully recognize handwritten English letters, Chinese characters, and Arabic numerals. The principal component analysis algorithm preprocesses the triboelectric signal data to reduce the complexity of the neural network in the machine learning process. Further, it can realize the anticounterfeiting recognition of writing habits by controlling the samples input to the neural network. The results show that the intelligent human-computer interaction interface has broad application prospects in signature security and human-computer interaction.

Highlights

  • The human-machine interface represents an intuitive and effective approach to bridge the communications between human and machine equipment

  • Many research groups have developed a variety of gesture recognition devices, such as smart gloves, some of these technologies have some limitations in practical applications, including the difficulty in identifying and detecting subtle features and the requirement on external energy supply [9–17]

  • Lee et al demonstrated that the combination of active sensors and machine learning can carry out advanced human-machine interaction and realize high-precision augmented reality/virtual reality (AR/VR) applications [44–51]

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Summary

Introduction

The human-machine interface represents an intuitive and effective approach to bridge the communications between human and machine equipment. A research group proposed to combine digital and analog sensing mechanisms to compromise the number of electrodes, effective area, and resolution [42, 43]. Such device configurations allow the human-machine interaction system based on triboelectricity to realize high precision through a small number of electrodes. Lee et al demonstrated that the combination of active sensors and machine learning can carry out advanced human-machine interaction and realize high-precision augmented reality/virtual reality (AR/VR) applications [44–51]. These works inspired us to combine active sensors with machine learning for smart human-machine interaction and handwriting recognition. The results show that the intelligent handwriting recognition system as a human-machine interaction interface has broad application prospects in personal information recognition and anticounterfeiting signatures

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Materials and Methods
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