基于IMU传感器的马来语手语识别方法的优化

Ammar Abdullah, N. A. Abdul-Kadir, F. K. Che Harun
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引用次数: 0

摘要

马来西亚手语(MSL)一直是马来西亚聋哑人的主要沟通媒介,但只有一小部分普通人能理解这种手语。一种常用的传递手语含义的方法是使用手语识别方法。基于视频的单反技术已经得到了广泛的研究,但仍然存在严重的环境误差和可移植性问题。相反,基于传感器的单反解决方案可以减轻这些问题,但代价是由于传感器的数量和位置需要达到足够的精度,因此设计体积庞大。因此,在本文中,我们研究了执行精确转换所需的惯性测量单元(IMU)传感器的最佳数量和位置。实验结果表明,我们提出的优化过程能够达到98%以上的识别准确率。这可能是基于传感器的手套设计的一个更小体积和更精简的基准,同时也克服了可用性和便携性问题。
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An Optimization of IMU Sensors-Based Approach for Malaysian Sign Language Recognition
Malaysian Sign Language (MSL) has been the main communication medium for Malaysian deaf people but only a small portion of ordinary people can comprehend this MSL. A common approach to convey the meaning of sign language is by using sign language recognition (SLR) method. A video-based SLR approach has been researched extensively but still heavily vulnerable to environment error and suffer from portability issue. Conversely, a sensor-based SLR solution can mitigate these problems at the cost of having bulky design due to the number and placement of the sensors required to achieve sufficient accuracy. Therefore, in this paper, we investigated the optimal number and placement of the inertial measurement unit (IMU) sensors required to perform an accurate conversion. Experimental results demonstrated our proposed optimization process is capable of achieving more than 98% of recognition accuracy. This could be a benchmark for a less bulky and leaner design of sensor-based hand glove as well as overcoming the usability and portability issues.
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