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TinyDL: Edge Computing and Deep Learning Based Real-time Hand Gesture Recognition Using Wearable Sensor

机译:Tinydl:使用可穿戴传感器的边缘计算和基于深度学习的实时手势识别

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Offloading data analysis to edge devices by decentralizing processing can be used to decrease bandwidth requirements, latency, and can decrease the total transmission time required in wireless devices. This can be especially useful for compact wearable devices used for health monitoring, human activity recognition, and gesture recognition, where sending raw data over wireless protocols such as Bluetooth can be both time and power consuming. By performing analysis on the wearable device, wireless radio usage can be greatly decreased, reducing a main power consumer on the device. Deep learning (DL) methods, specifically using Tensorflow (TF) and Keras were evaluated for their usage in such a case, in this example gesture recognition. A multilayer long short-term memory (LSTM) model was trained and evaluated off of data (10 gestures, 1000 trials total, balanced) from a finger-worn ring profile device that collected acceleration data, and was found to perform with accuracy from 75-95% per gesture. The attempted conversion of the model into a compressed TF Lite format, to allow for analysis on-device did not succeed, due to current incompatibilities between the different frameworks. Future work may improve the accuracy, and potentially expand the use of neural networks on wearables for health diagnostics or as input devices.
机译:通过分散处理将数据分析卸载到边缘设备可用于降低带宽要求,延迟,并且可以降低无线设备所需的总传输时间。这对于用于健康监测,人类活动识别和手势识别的紧凑型可穿戴设备特别有用,其中通过诸如蓝牙等无线协议发送原始数据可以是时间和功耗。通过对可穿戴设备进行分析,可以大大降低无线无线电使用,减少设备上的主要功率消耗。在这种情况下,在这种情况下,评估深度学习(DL)方法,具体地使用TensoRFlow(TF)和KERAS的使用,在这种情况下,在这种情况下识别。从收集加速度数据的手指磨损的环形轮廓设备培训和评估多层长期短期内存(LSTM)模型,并从收集加速数据的手指磨损的环形轮廓设备中进行培训和评估,并被发现从75开始每个手势-95%。由于不同框架之间的当前不兼容性,模型将模型转换为压缩的TF Lite格式,以允许对设备进行分析没有成功。未来的工作可能会提高准确性,并且可能扩大在用于健康诊断或输入设备的可穿戴物中使用神经网络。

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