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Low-cost static gesture recognition system using MEMS accelerometers

机译:使用MEMS加速度计的低成本静态手势识别系统

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The primary objective of the paper is to construct and test a low-cost, minimally supervised gesture recognition system which identifies static gestures efficiently and accurately. The proposed system uses ADXL335 accelerometer sensors which track the gestures and these sensors are interfaced with an Arduino ATMega 2560 micro-controller for data processing and gesture recognition. The software of the system implemented in the micro-controller, features a computationally feasible algorithm which requires only nominal resources to recognize the gestures. The paper further elucidates on minimizing the number of accelerometers to reduce the cost and power-consumption of the system. The performance of the system is assessed using static gestures in the alphabets of the American Sign Language (ASL) across data-sets obtained from 3 trained ASL signers. The average run-time efficiency of the proposed system with a maximum and minimum configuration of 5 and 2 accelerometers was found to be 95.3% and 87.0%, with the cost of these prototype systems being realized at 20 USD and 12.5 USD respectively. It was also found that the system can be trained for the static gestures of the alphabets in ASL under two minutes by a new-user with any system configuration. The authors also feel that the system is compatible with other IoT platforms for interoperability.
机译:本文的主要目的是构建和测试一种低成本,最少监督的手势识别系统,该系统可以高效,准确地识别静态手势。拟议的系统使用跟踪手势的ADXL335加速度传感器,并将这些传感器与Arduino ATMega 2560微控制器进行接口以进行数据处理和手势识别。在微控制器中实现的系统软件具有计算上可行的算法,该算法仅需要名义上的资源即可识别手势。本文进一步阐明了如何将加速计的数量减至最少,以降低系统的成本和功耗。该系统的性能是使用美国手语(ASL)字母中的静态手势跨3个训练有素的ASL签名者获得的数据集进行评估的。所建议的系统的最大和最小配置分别为5和2个加速度计的平均运行效率为95.3%和87.0%,这些原型系统的成本分别为20美元和12.5美元。还发现,具有任何系统配置的新用户都可以在两分钟内针对ASL中字母的静态手势来训练系统。作者还认为该系统与其他IoT平台兼容以实现互操作性。

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