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Study of Compressed Sensing and Predictor Techniques for the Compression of Neural Signals under the Influence of Noise

机译:基于噪声影响下神经信号压缩压缩传感和预测技术的研究

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In this paper an analysis of compression schemes based on compressed sensing (CS) and predictor techniques for neural signals is presented. The focus is on how much a compression algorithm can reduce data while not affecting the subsequent signal processing. Since neural signals are processed by means of spike sorting algorithms the evaluation is not trivial and not well defined, since there exists in fact many different ways to detect and cluster the spikes. Evaluating how much a compression scheme affects the result of spike sorting programs is a crucial step before implementing such compression technique. In the analysis two use cases are evaluated: in the first, spikes are detected and extracted and only thereafter compressed. In the second case, no information on the spikes is available and the whole raw signal is compressed. When dealing only with spike frames CS offers great compression at almost no loss, in the case of the whole recording its performances are greatly impaired and delta compression outperforms it in terms of data reduction and spike sorting results. In this case the reduction rates are modest but significant, ≈3 - 4 times data reduction and the whole signal is preserved avoiding big permanent losses of information.
机译:本文介绍了基于压缩检测(CS)的压缩方案及其用于神经信号的预测技术的分析。重点是压缩算法可以减少数据,同时不影响随后的信号处理。由于通过尖峰分选算法处理神经信号,因此评估不是微不足道的并且没有明确,因为实际上存在许多不同的方式来检测和聚类尖峰。评估压缩方案的压缩方案的影响是多少,在实现这种压缩技术之前是一个重要的步骤。在分析中,评估两种用例:首先,检测并提取尖峰,然后仅压缩。在第二种情况下,没有关于尖峰的信息可用,并且整个原始信号被压缩。当仅与Spike Frames CS处理时,在几乎没有损失的情况下提供了很大的压缩,就在整个记录的情况下,其性能大大受损,并且在数据减少和尖峰分类结果方面的性能很大。在这种情况下,减少速率是适度但重要的,≈3-4倍数据减少和整个信号被保留避免了大量的信息损失。

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