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首页> 外文期刊>IEEE transactions on circuits and systems . I , Regular papers >A Partially Binarized Hybrid Neural Network System for Low-Power and Resource Constrained Human Activity Recognition
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A Partially Binarized Hybrid Neural Network System for Low-Power and Resource Constrained Human Activity Recognition

机译:用于低功耗和资源限制人类活动识别的部分二金发混合神经网络系统

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A custom Human Activity Recognition system is presented based on the resource-constrained Hardware (HW) implementation of a new partially binarized Hybrid Neural Network. The system processes data in real-time from a single tri-axial accelerometer, and is able to classify between 5 different human activities with an accuracy of 97.5% when the Output Data Rate of the sensor is set to 25 Hz. The new Hybrid Neural Network (HNN) has binary weights (i.e. constrained to +1 or −1) but uses non-binarized activations for some layers. This, in conjunction with a custom pre-processing module, achieves much higher accuracy than Binarized Neural Network. During pre-processing, the measurements are made independent from the spatial orientation of the sensor by exploiting a reference frame transformation. A prototype has been realized in a Xilinx Artix 7 FPGA, and synthesis results have been obtained with TSMC CMOS 65 nm LP HVT and 90 nm standard cells. Best result shows a power consumption of $6.3~mu ext{W}$ and an area occupation of 0.2 mm $^{mathbf {2}}$ when real-time operations are set, enabling in this way, the possibility to integrate the entire HW accelerator in the auxiliary circuitry that normally equips inertial Micro Electro-Mechanical Systems (MEMS).
机译:基于新部分二值化混合神经网络的资源受限硬件(HW)实现来呈现定制人类活动识别系统。系统从单轴加速度计实时处理数据,并且当传感器的输出数据速率设定为25Hz时,能够在5种不同的人类活动之间进行分类,精度为97.5%。新的混合神经网络(HNN)具有二进制权重(即约束到+1或-1),但使用一些层的非二值激活。这与定制预处理模块一起实现比二值化神经网络更高的准确性。在预处理期间,通过利用参考帧变换来使测量与传感器的空间取向无关。在Xilinx Artix 7 FPGA中已经实现了原型,并且已经用TSMC CMOS 65nm LP HVT和90nM标准电池获得了合成结果。最好的结果显示了功耗<内联公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> $ 6.3〜 mu text {w} $ 区域占用0.2毫米<内联公式XMLNS:MML =“http://www.w3.org/1998/math/mathml”xmlns:xlink =“http://www.w3.org/1999/xlink”> $ ^ { MathBF {2}} $ 当设置实时操作时,以这种方式启用,可以将整个HW加速器集成在通常以惯性微机电系统(MEMS)的辅助电路中集成在辅助电路中的可能性。

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