基于麦克风和IMU的在线手写识别

Guozheng He, Zhouyi Wu, Yuting Wu, Peiying Lin, J. Huangfu
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引用次数: 1

摘要

提出了一种基于惯性测量单元(IMU)和笔上麦克风的手写字符识别方法。该算法通过集成手写动作的加速度数据和音频数据,实现了在线手写识别。该方法首先对写入过程中的音频进行识别和定位,然后根据音频定位结果对写入过程中的有效加速度传感数据进行滤波。利用过滤后的笔画和汉字数据集,用神经网络学习方法训练手写识别模型。本工作通过对15种字符的1500组(2 * 15 * 50 = 1500)进行训练和测试,实现了与原模型相比,整体识别准确率提高8%,对几个典型字符的识别准确率提高18%的结果,表明该算法有效提高了部分典型字符的识别准确率,也提高了整体准确率。该方法不仅提高了手写识别数据的准确性,而且减少了传输和处理的数据量。它适用于在嵌入式系统中实现高效的手写识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Online Handwriting Recognition Based on Microphone and IMU
This paper presents a method for handwritten character recognition based on the Inertial Measurement Unit (IMU) and the microphone set on the pen. It realized online handwriting recognition by integrating acceleration data and audio data of handwritten action. In this method, the audio during writing is firstly recognized and located, and the effective acceleration sensing data during writing are filtered by the audio location results. The filtered data sets of strokes and characters are used to train the model for handwriting recognition with neural network learning method. Through the training and testing of 1500 groups (2 * 15 * 50 = 1500) of 15 types of characters, this work realizes the results that the overall recognition accuracy is improved by 8% and the recognition accuracy of several typical characters is improved by 18% compared with the original model, which shows that the algorithm effectively improves the recognition accuracy of some typical characters and also enhances the overall accuracy. The method not only improves the accuracy of handwriting recognition data, but also reduces the amount of data transmitted and processed. It is suitable for the implementation of efficient handwriting recognition in embedded system.
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