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Improving sparse coding based hyperspectral image classification via tensor decomposition and oversegmentation

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Özet

Hyperspectral imaging, with its detailed spectral and spatial information, can be applied in various fields such as re-mote sensing, biomedical engineering, and quality control. However, the high dimensionality and large data volume of HS images pose significant challenges for efficient processing and classification. A well-known hyperspectral classification approach is sparse coding. This study proposes an efficient method to enhance the sparse coding-based classification of HS images by integrating two methods, namely the High Dimensional Model Representation and Simple Linear Iterative Clustering. Initially, HDMR was applied to decompose the 3-D HS tensor into manageable components, effectively reducing noise and correlations. Subsequently, SLIC oversegmentation was employed to generate superpixels, facilitating localized feature extraction. The average spectral signal of each superpixel is classified using a sparse coding classifier. Experimental results on public HS datasets - Indian Pines, Pavia University, and Salinas - demonstrate that the proposed HDMR and SLIC integration significantly improves classification accu-racy and reduces computational complexity compared to conventional methods. This approach leveraged the strengths of tensor decomposition and superpixel segmentation to offer a robust and efficient solution for HS image classification.

Orijinal dilİngilizce
Ana bilgisayar yayını başlığıAIP Conference Proceedings
EditörlerTheodore E. Simos, Charalambos Tsitouras
YayınlayanAmerican Institute of Physics
Baskı1
ISBN (Elektronik)9780735453876
DOI'lar
Yayın durumuYayınlandı - 7 May 2026
EtkinlikInternational Conference on Numerical Analysis and Applied Mathematics, ICNAAM 2024 - Heraklion, Greece
Süre: 11 Eyl 202417 Eyl 2024

Yayın serisi

AdıAIP Conference Proceedings
Sayı1
Hacim3489
ISSN (Basılı)0094-243X
ISSN (Elektronik)1551-7616

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???event.eventtypes.event.conference???International Conference on Numerical Analysis and Applied Mathematics, ICNAAM 2024
Ülke/BölgeGreece
ŞehirHeraklion
Periyot11/09/2417/09/24

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Publisher Copyright:
© 2026 Author(s).

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