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An Energy-Efficient Low Power LSTM Processor for Human Activity Monitoring | IEEE Conference Publication | IEEE Xplore

An Energy-Efficient Low Power LSTM Processor for Human Activity Monitoring


Abstract:

A low complexity Long Short-Term Memory (LSTM) based neural network architecture is proposed in this paper for the classification task of recognizing different human acti...Show More

Abstract:

A low complexity Long Short-Term Memory (LSTM) based neural network architecture is proposed in this paper for the classification task of recognizing different human activities in relation to various sensor modalities. The proposed model consists of one LSTM layer of 8 units, two dense layers having 80 and 32 neurons respectively and one output layer with 13 neurons for multi-class classification. We achieved 87.17 % classification accuracy with our proposed model to classify 12 activities from each other. The proposed work involves extensive hyperparameter optimization in order to develop a hardware implementable model architecture while also maintaining high classification accuracy. In this case, quantization allowed the model to have a small size of 365 kB which resulted in 2x improvement over the 16-bit precision. The hardware architecture is designed in a parameterized way with respect to the number of input channels, filters, and data width to give more flexibility in terms of reconfigurability. The proposed LSTM based model is fully synthesized and placed-and-routed on Xilinx Artix-7 FPGA. Our reconfigurable hardware architecture consumes 82 mW power at an operating frequency of 160 MHz. Our LSTM based FPGA hardware achieves 7.7 GOP/s/W energy efficiency which outperforms previous hardware architecture implementations on Human Activity Recognition (HAR) by atleast 5.2×. The proposed low power LSTM processor also has an improvement of atleast 4.1 x for energy efficiency over previous LSTM works based on language modeling and artifact detection.
Date of Conference: 08-11 September 2020
Date Added to IEEE Xplore: 06 September 2021
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Conference Location: Las Vegas, NV, USA

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