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Power Efficient Data Compression Hardware for Wearable and Wireless Biomedical Sensing Devices

机译:适用于可穿戴和无线生物医学传感设备的高效数据压缩硬件

摘要

This thesis aims to verify a possible benefit lossless data compression and reduction techniques can bring to a wearable and wireless biomedical device, which is anticipated to be system power saving. A wireless transceiver is one of the main contributors to the system power of a wireless biomedical sensing device, and reducing the data transmitted by the transceiver with a minimum hardware cost can therefore help to save the power. This thesis is going to investigate the impact of the data compression and reduction on the system power of a wearable and wireless biomedical device and trying to find a proper compression technique that can achieve power saving of the device.udThe thesis first examines some widely used lossy and lossless data compression and reduction techniques for biomedical data, especially EEG data. Then it introduces a novel lossless biomedical data compression technique designed for this research called Log2 sub-band encoding. The thesis then moves on to the biomedical data compression evaluation of the Log2 sub-band encoding and an existing 2-stage technique consisting of the DPCM and the Huffman encoding. The next part of this thesis explores the signal classification potential of the Log2 sub-band encoding. It was found that some of the signal features extracted as a by-product during the Log2 sub-band encoding process could be used to detect certain signal events like epileptic seizures, with a proper method. The final section of the thesis focuses on the power analysis of the hardware implementation of two compression techniques referred to earlier, as well as the system power analysis. The results show that the Log2 sub-band is comparable and even superior to the 2-stage technique in terms of data compression and power performance. The system power requirement of an EEG signal recorder that has the Log2 sub-band implemented is significantly reduced.
机译:本文旨在验证一种可能的好处,即无损数据压缩和减少技术可以带给可穿戴无线医疗设备,有望节省系统功耗。无线收发器是无线生物医学传感设备系统功率的主要贡献者之一,因此以最小的硬件成本来减少收发器发送的数据可以帮助节省功率。本文将研究数据压缩和压缩对可穿戴无线生物医学设备的系统功耗的影响,并试图找到合适的压缩技术来实现设备的节能。 ud本文首先研究了一些广泛使用的压缩技术。用于生物医学数据(尤其是EEG数据)的有损和无损数据压缩和归约技术。然后介绍了一种针对该研究而设计的新颖的无损生物医学数据压缩技术,称为Log2子带编码。然后,论文继续进行Log2子带编码的生物医学数据压缩评估以及由DPCM和Huffman编码组成的现有2级技术。本文的下一部分探讨了Log2子带编码的信号分类潜力。发现在Log2子带编码过程中作为副产物提取的某些信号特征可通过适当的方法用于检测某些信号事件,例如癫痫发作。本文的最后一部分着重于前面提到的两种压缩技术的硬件实现的功耗分析以及系统功耗分析。结果表明,就数据压缩和功率性能而言,Log2子带具有可比性,甚至优于2级技术。实现了Log2子带的EEG信号记录器的系统功率要求大大降低。

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    Dai Chengliang;

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  • 年度 2016
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