Sriraam N, Eswaran C
Department of Information Technology, SSN College of Engineering, Chennai 603110, India.
IEEE Trans Inf Technol Biomed. 2008 Sep;12(5):587-94. doi: 10.1109/TITB.2007.907981.
Lossless compression of EEG signal is of great importance for the neurological diagnosis as the specialists consider the exact reconstruction of the signal as a primary requirement. This paper discusses a lossless compression scheme for EEG signals that involves a predictor and an adaptive error modeling technique. The prediction residues are arranged based on the error count through an histogram computation. Two optimal regions are identified in the histogram plot through a heuristic search such that the bit requirement for encoding the two regions is minimum. Further improvement in the compression is achieved by removing the statistical redundancy that is present in the residue signal by using a context-based bias cancellation scheme. Three neural network predictors, namely, single-layer perceptron, multilayer perceptron, and Elman network and two linear predictors, namely, autoregressive model and finite impulse response filter are considered. Experiments are conducted using EEG signals recorded under different physiological conditions and the performances of the proposed methods are evaluated in terms of the compression ratio. It is shown that the proposed adaptive error modeling schemes yield better compression results compared to other known compression methods.
脑电图(EEG)信号的无损压缩对于神经学诊断非常重要,因为专家们将信号的精确重建视为首要要求。本文讨论了一种针对EEG信号的无损压缩方案,该方案涉及一个预测器和一种自适应误差建模技术。通过直方图计算,根据误差计数对预测残差进行排列。通过启发式搜索在直方图中识别出两个最优区域,以使对这两个区域进行编码所需的比特数最少。通过使用基于上下文的偏差消除方案消除残差信号中存在的统计冗余,进一步提高了压缩率。考虑了三种神经网络预测器,即单层感知器、多层感知器和埃尔曼网络,以及两种线性预测器,即自回归模型和有限脉冲响应滤波器。使用在不同生理条件下记录的EEG信号进行实验,并根据压缩率评估所提出方法的性能。结果表明,与其他已知压缩方法相比,所提出的自适应误差建模方案产生了更好的压缩结果。