Design and implementation of auto encoder based bio medical signal transmission to optimize power using convolution neural network

K.N. Sunil Kumar , G.B. Arjun Kumar , Ravi Gatti , S. Santosh Kumar , Darshan A. Bhyratae , Satyasrikanth Palle
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引用次数: 1

Abstract

Real-time biomedical signal transmission requires IoTs and cloud infrastructure. In this work, we investigate feasible lossy compression approaches that leverage the temporal and spatial dynamics of the signal along with current algorithms based on Compressive Sensing (CS) that use signal correlation in space and time. These techniques are altered so they may be applied efficiently to a distributed WSN. To achieve this, we proposed Convolution Neural Network (CNN) based Optimized Bio-Signals Compression using Auto-Encoder (BCAE), which integrates auto-encoder and feature selection. Instead of using the entire signal as an input, we encode the main part of the signal and send it to the desired location. Reconstruction decrypts without signal loss. Realistic aggregation and data collection procedures can improve data reconstruction accuracy. We compare various techniques' reconstruction error vs. energy requirements. The simulation results reveal that packet loss is 40% and data reconstruction error is 5%. Data forwarding time is lowered by 16.36%, while network energy usage is cut by 23.59%. The proposed method outperforms with existing techniques and the results are validated using MATLAB.

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基于卷积神经网络的自动编码器生物医学信号传输功率优化的设计与实现
实时生物医学信号传输需要物联网和云基础设施。在这项工作中,我们研究了可行的有损压缩方法,这些方法利用信号的时空动态,以及基于压缩感知(CS)的当前算法,该算法使用空间和时间上的信号相关性。这些技术经过改进,可以有效地应用于分布式无线传感器网络。为了实现这一目标,我们提出了基于卷积神经网络(CNN)的优化生物信号压缩,使用自编码器(BCAE),它集成了自编码器和特征选择。我们没有使用整个信号作为输入,而是对信号的主要部分进行编码并将其发送到所需的位置。重建解密没有信号丢失。真实的聚合和数据收集过程可以提高数据重建的准确性。我们比较了各种技术的重建误差与能量需求。仿真结果表明,该算法的丢包率为40%,数据重构误差为5%。数据转发时间降低16.36%,网络能耗降低23.59%。该方法优于现有技术,并通过MATLAB对结果进行了验证。
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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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审稿时长
57 days
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