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On EEG lossy data compression for data-intensive neurological mobile health solutions

机译:针对数据密集型神经系统移动健康解决方案的脑电图有损数据压缩

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Neurologically-oriented m-health applications are characterized by the recording, transmission, and processing of large volumes of EEG data. This places a significant load on the systems' components in terms of storage capacity, processing capabilities, etc. Data compression has been proposed as one technique to reduce the amount of data originating from the sensing node to the processing node. While lossless compression was considered the method of choice due to the critical aspect of preserving the features of EEG data, in this work, we propose an aggressive lossy/lossless hybrid scheme that provides a good tradeoff between compression performance and feature preservation by adaptively varying the data percentage which is being compressed in a lossless or lossy manner. Simulation results using real EEG data segments show the high compression ratio that can be achieved while preserving the signal quality.
机译:面向神经学的移动医疗应用程序的特征在于记录,传输和处理大量EEG数据。在存储容量,处理能力等方面,这给系统的组件带来了很大的负担。数据压缩已被提出作为减少从传感节点到处理节点的数据量的一种技术。由于保留脑电数据特征的关键方面,无损压缩被认为是一种选择方法,在这项工作中,我们提出了一种积极的有损/无损混合方案,该方案可通过自适应地改变压缩率和特征保留来提供良好的折衷方案。以无损或有损方式压缩的数据百分比。使用实际EEG数据段的仿真结果表明,可以在保持信号质量的同时实现较高的压缩率。

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