πŸ“… 30 April 2025
DOI: 10.26877/h26m6b34

Evaluating Compressed Sensing Matrix Techniques: A Comparative Study of PCA and Conventional Methods

Advance Sustainable Science, Engineering and Technology
Universitas Persatuan Guru Republik Indonesia Semarang

πŸ“„ Abstract

This research examines the performance of various compressed sensing matrix techniques, with a focus on Principal Component Analysis (PCA) compared to conventional methods. By applying these techniques to a range of high-dimensional datasets, we assess their effectiveness in reducing data dimensionality while preserving essential information. Our results demonstrate that PCA consistently outperforms traditional methods in terms of both accuracy and computational efficiency. These findings have significant implications for fields such as signal processing, image compression, and data analytics, where efficient data representation is critical. The study provides a framework for selecting the optimal dimensionality reduction technique, enabling improvements in processing speed and accuracy in practical applications.

πŸ”– Keywords

#Compressed Sensing; Principal Component Analysis (PCA); Data Dimensionality Reduction; Signal Processing; Measurement Matrix; Image Compression; Signal Reconstruction Techniques; Data Analytics

ℹ️ Informasi Publikasi

Tanggal Publikasi
30 April 2025
Volume / Nomor / Tahun
Volume 7, Nomor 2, Tahun 2025

πŸ“ HOW TO CITE

Chakraborty, Parnasree; Kalaivani Subbaian; Tharini Chandrapragasam; Jagir Hussain Shagul Hameed, "Evaluating Compressed Sensing Matrix Techniques: A Comparative Study of PCA and Conventional Methods," Advance Sustainable Science, Engineering and Technology, vol. 7, no. 2, Apr. 2025.

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