Sriraam N
Center for Biomedical Informatics and Signal Processing, Department of Biomedical Engineering, SSN College of Engineering, Chennai 603110, India.
Int J Telemed Appl. 2011;2011:860549. doi: 10.1155/2011/860549. Epub 2011 Jul 3.
A telemedicine system using communication and information technology to deliver medical signals such as ECG, EEG for long distance medical services has become reality. In either the urgent treatment or ordinary healthcare, it is necessary to compress these signals for the efficient use of bandwidth. This paper discusses a quality on demand compression of EEG signals using neural network predictors for telemedicine applications. The objective is to obtain a greater compression gains at a low bit rate while preserving the clinical information content. A two-stage compression scheme with a predictor and an entropy encoder is used. The residue signals obtained after prediction is first thresholded using various levels of thresholds and are further quantized and then encoded using an arithmetic encoder. Three neural network models, single-layer and multi-layer perceptrons and Elman network are used and the results are compared with linear predictors such as FIR filters and AR modeling. The fidelity of the reconstructed EEG signal is assessed quantitatively using parameters such as PRD, SNR, cross correlation and power spectral density. It is found from the results that the quality of the reconstructed signal is preserved at a low PRD thereby yielding better compression results compared to results obtained using lossless scheme.
一种利用通信和信息技术来传输诸如心电图、脑电图等医学信号以提供远程医疗服务的远程医疗系统已成为现实。在紧急治疗或普通医疗保健中,为了有效利用带宽,有必要对这些信号进行压缩。本文讨论了一种用于远程医疗应用的基于神经网络预测器的脑电图信号按需质量压缩方法。目的是在保持临床信息内容的同时,以低比特率获得更大的压缩增益。采用了一种带有预测器和熵编码器的两级压缩方案。预测后得到的残差信号首先使用不同级别的阈值进行阈值处理,然后进一步量化,再使用算术编码器进行编码。使用了三种神经网络模型,即单层和多层感知器以及埃尔曼网络,并将结果与诸如FIR滤波器和AR建模等线性预测器进行了比较。使用PRD、SNR、互相关和功率谱密度等参数对重建脑电图信号的保真度进行了定量评估。结果发现,重建信号的质量在低PRD时得以保持,因此与使用无损方案获得的结果相比,产生了更好的压缩效果。