Hybrid Compression Techniques for EEG Data Based on Lossy/Lossless Compression Algorithms
Madyan Alsenwi, Tawfik Ismail, and M. Saeed Darweesh

TL;DR
This paper presents a hybrid EEG data compression system combining lossy DCT or DWT with lossless RLE or arithmetic encoding, achieving high compression ratios with minimal data loss.
Contribution
It introduces a novel combination of DCT/DWT with RLE/Arithmetic Encoding for efficient EEG data compression, optimizing both compression ratio and computational complexity.
Findings
DCT + RLE achieves CR=90% at RMSE=0.14
DWT + RLE achieves CR>95% at RMSE=0.2
Hybrid approach outperforms individual algorithms in efficiency
Abstract
The recorded Electroencephalography (EEG) data comes with a large size due to the high sampling rate. Therefore, large space and more bandwidth are required for storing and transmitting the EEG data. Thus, preprocessing and compressing the EEG data is a very important part in order to transmit and store it efficiently with less bandwidth and less space. The objective of this paper is to develop an efficient system for EEG data compression. In this system, the recorded EEG data are firstly preprocessed in the preprocessing unit. Standardization and segmentation of EEG data are done in this unit. Then, the resulting EEG data are passed to the compression unite. The compression unit composes of a lossy compression algorithm followed by a lossless compression algorithm. The lossy compression algorithm transforms the randomness EEG data into data with high redundancy. Subsequently, A…
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Taxonomy
TopicsBlind Source Separation Techniques · Advanced Data Compression Techniques · Analog and Mixed-Signal Circuit Design
