IEEE Trans Biomed Circuits Syst. 2018 Feb;12(1):231-241. doi: 10.1109/TBCAS.2017.2779324.
This work presents a wireless multichannel electroencephalogram (EEG) recording system featuring lossless and near-lossless compression of the digitized EEG signal. Two novel, low-complexity, efficient compression algorithms were developed and tested in a low-power platform. The algorithms were tested on six public EEG databases comparing favorably with the best compression rates reported up to date in the literature. In its lossless mode, the platform is capable of encoding and transmitting 59-channel EEG signals, sampled at 500 Hz and 16 bits per sample, at a current consumption of 337 A per channel; this comes with a guarantee that the decompressed signal is identical to the sampled one. The near-lossless mode allows for significant energy savings and/or higher throughputs in exchange for a small guaranteed maximum per-sample distortion in the recovered signal. Finally, we address the tradeoff between computation cost and transmission savings by evaluating three alternatives: sending raw data, or encoding with one of two compression algorithms that differ in complexity and compression performance. We observe that the higher the throughput (number of channels and sampling rate) the larger the benefits obtained from compression.
这项工作提出了一种无线多通道脑电图(EEG)记录系统,其特点是对数字化的 EEG 信号进行无损和近无损压缩。开发并在低功耗平台上测试了两种新颖的、低复杂度、高效的压缩算法。该算法在六个公共 EEG 数据库上进行了测试,与迄今为止文献中报道的最佳压缩率相比表现出色。在无损模式下,该平台能够以 337 A/通道的电流消耗对 59 通道、500 Hz 采样率和 16 位/样本的 EEG 信号进行编码和传输;这保证了解压后的信号与采样信号完全相同。近无损模式允许显著节省能量和/或更高的吞吐量,以换取恢复信号中可保证的最大样本失真的小增量。最后,我们通过评估三种替代方案来解决计算成本和传输节省之间的权衡:发送原始数据,或使用两种在复杂度和压缩性能上有所不同的压缩算法进行编码。我们观察到,吞吐量(通道数量和采样率)越高,从压缩中获得的收益就越大。