Yang Xidong, Chen Xiang, Cao Xiang, Wei Shengjing, Zhang Xu
IEEE J Biomed Health Inform. 2017 Jul;21(4):994-1004. doi: 10.1109/JBHI.2016.2560907. Epub 2016 May 3.
Chinese Sign Language (CSL) subword recognition based on surface electromyography (sEMG), accelerometer (ACC), and gyroscope (GYRO) sensors was explored in this paper. In order to fuse effectively the information of these three kinds of sensors, the classification abilities of sEMG, ACC, GYRO, and their combinations in three common sign components (one or two handed, hand orientation, and hand amplitude) were evaluated first and then an optimized tree-structure classification framework was proposed for CSL subword recognition. Eight subjects participated in this study and recognition experiments under different testing conditions were implemented on a target set consisting of 150 CSL subwords. The proposed optimized tree-structure classification framework based on sEMG, ACC, and GYRO obtained the best performance among seven different testing conditions with single sensor, paired-sensor fusion, and three-sensor fusion, and the overall recognition accuracies of 94.31% and 87.02% were obtained for 150 CSL subwords in a user-specific test and user-independent test, respectively. Our study could lay a basis for the implementation of large-vocabulary sign language recognition system based on sEMG, ACC, and GYRO sensors.
本文探讨了基于表面肌电图(sEMG)、加速度计(ACC)和陀螺仪(GYRO)传感器的中国手语(CSL)子词识别。为了有效融合这三种传感器的信息,首先评估了sEMG、ACC、GYRO及其组合在三种常见手语成分(单手或双手、手的方向和手的幅度)中的分类能力,然后提出了一种优化的树结构分类框架用于CSL子词识别。八名受试者参与了本研究,并在由150个CSL子词组成的目标集上进行了不同测试条件下的识别实验。所提出的基于sEMG、ACC和GYRO的优化树结构分类框架在单传感器、双传感器融合和三传感器融合的七种不同测试条件下取得了最佳性能,在特定用户测试和非特定用户测试中,150个CSL子词的总体识别准确率分别达到了94.31%和87.02%。我们的研究可为基于sEMG、ACC和GYRO传感器的大词汇量手语识别系统的实现奠定基础。