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Strategies for High-Performance Resource-Efficient Compression of Neural Spike Recordings

机译:高性能资源高效压缩神经峰值记录的策略

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摘要

Brain-machine interfaces (BMIs) based on extracellular recordings with microelectrodes provide means of observing the activities of neurons that orchestrate fundamental brain function, and are therefore powerful tools for exploring the function of the brain. Due to physical restrictions and risks for post-surgical complications, wired BMIs are not suitable for long-term studies in freely behaving animals. Wireless BMIs ideally solve these problems, but they call for low-complexity techniques for data compression that ensure maximum utilization of the wireless link and energy resources, as well as minimum heat dissipation in the surrounding tissues. In this paper, we analyze the performances of various system architectures that involve spike detection, spike alignment and spike compression. Performance is analyzed in terms of spike reconstruction and spike sorting performance after wireless transmission of the compressed spike waveforms. Compression is performed with transform coding, using five different compression bases, one of which we pay special attention to. That basis is a fixed basis derived, by singular value decomposition, from a large assembly of experimentally obtained spike waveforms, and therefore represents a generic basis specially suitable for compressing spike waveforms. Our results show that a compression factor of 99.8%, compared to transmitting the raw acquired data, can be achieved using the fixed generic compression basis without compromising performance in spike reconstruction and spike sorting. Besides illustrating the relative performances of various system architectures and compression bases, our findings show that compression of spikes with a fixed generic compression basis derived from spike data provides better performance than compression with downsampling or the Haar basis, given that no optimization procedures are implemented for compression coefficients, and the performance is similar to that obtained when the optimal SVD based basis is used.
机译:基于带有微电极的细胞外记录的脑机接口(BMI)提供了观察协调基本脑功能的神经元活动的手段,因此是探索脑功能的有力工具。由于身体上的限制和手术后并发症的风险,有线BMI不适合在行为自由的动物中进行长期研究。无线BMI可以理想地解决这些问题,但是它们需要用于数据压缩的低复杂度技术,以确保最大程度地利用无线链路和能源,以及最小化周围组织的散热。在本文中,我们分析了涉及尖峰检测,尖峰对齐和尖峰压缩的各种系统架构的性能。在无线传输压缩的尖峰波形后,将根据尖峰重建和尖峰排序性能来分析性能。压缩是通过使用五个不同的压缩基础的变换编码来执行的,我们特别注意其中之一。该基础是通过奇异值分解从大量的实验获得的尖峰波形中得出的固定基础,因此代表了特别适合于压缩尖峰波形的通用基础。我们的结果表明,与传输原始采集的数据相比,使用固定的通用压缩基础可以实现99.8%的压缩率,而不会影响尖峰重建和尖峰排序的性能。除了说明各种系统体系结构和压缩基础的相对性能外,我们的发现还表明,使用固定的通用压缩基础(由尖峰数据得出)来压缩尖峰比使用下采样或Haar基础进行压缩的性能要好,这是因为没有针对以下方面实施优化程序压缩系数,并且性能类似于使用基于SVD的最佳基准时获得的性能。

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