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Multiple Hybrid Compression Techniques for Electroencephalography Data

机译:脑电图数据的多种混合压缩技术

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The large data size of Electroencephalography (EEG) is a result of long-time recording, the large number of electrodes, and a high sampling rate together. Therefore, the required bandwidth and the storage space are larger for efficient data transmission and storing. So, for higher efficiency transmission with less bandwidth and storage space, EEG data compression is a very important issue. This paper introduces two efficient algorithms for EEG compression. In the first algorithm, the EEG data is transformed through Discrete Wavelet Transform (DWT). Then it passes through Set Partitioning in Hierarchical Trees (SPIHT) compression algorithm. While in the second algorithm the data is segmented into N segments and these segments are transformed using Discrete Cosine Transform (DCT) then encoded using Uniform Quantized Huffman (UQH) scheme. Finally, the Lempel Ziv Welch (LZW) is used as a second lossless encoding algorithm for making a heavy compression. The system performance is evaluated in terms of the total time for compression and reconstruction, compression ratio, and root mean square error. The proposed hybrid technique DCT/UQH/LZW achieves 95% compression compared to 59% by DCT/RLE with the same similarity. Furthermore, it reduces 50% less root mean square error.
机译:脑电图(EEG)的大数据量是长时间记录,大量电极和高采样率共同作用的结果。因此,为了有效的数据传输和存储,所需的带宽和存储空间更大。因此,对于具有较少带宽和存储空间的更高效率的传输,EEG数据压缩是一个非常重要的问题。本文介绍了两种有效的EEG压缩算法。在第一种算法中,脑电数据通过离散小波变换(DWT)进行转换。然后,它通过层次树中的集分区(SPIHT)压缩算法。在第二种算法中,数据被分割为N个段,然后使用离散余弦变换(DCT)转换这些段,然后使用统一量化霍夫曼(UQH)方案进行编码。最后,Lempel Ziv Welch(LZW)被用作第二种无损编码算法,用于进行大量压缩。根据压缩和重建的总时间,压缩率和均方根误差来评估系统性能。所提出的混合技术DCT / UQH / LZW达到了95%的压缩率,而DCT / RLE具有相同的相似度时达到了59%的压缩率。此外,它减少了50%的均方根误差。

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