Iterative Enhanced Multivariance Products Representation for Effective Compression of Hyperspectral Images
Enstitü Öğr. Üyelerimizden Prof. Dr. Metin Demiralp ve Doç. Dr. Behçet Uğur Töreyin'in yazarları arasında bulunduğu 'Iterative Enhanced Multivariance Products Representation for Effective Compression of Hyperspectral Images' başlıklı makale IEEE Transactions on Geoscience and Remote Sensing dergisinde 16 Kasım 2020'de yayınlanmıştır.
Effective compression of hyperspectral (HS) images is essential due to their large data volume. Since these images are high dimensional, processing them is also another challenging issue. In this work, an efficient lossy HS image compression method based on enhanced multivariance products representation (EMPR) is proposed. As an efficient data decomposition method, EMPR enables us to represent the given multidimensional data with lower-dimensional entities. EMPR, as a finite expansion with relevant approximations, can be acquired by truncating this expansion at certain levels. Thus, EMPR can be utilized as a highly effective lossy compression algorithm for hyper spectral images. In addition to these, an efficient variety of EMPR is also introduced in this article, in order to increase the compression efficiency. The results are benchmarked with several state-of-the-art lossy compression methods. It is observed that both higher peak signal-to-noise ratio values and improved classification accuracy are achieved from EMPR-based methods.