Paper
14 October 2019 Deep canonical correlation analysis for hyperspectral image classification
Kemal Gürkan Toker, Seniha Esen Yüksel
Author Affiliations +
Abstract
Multi-view learning (MVL) is a technique which utilizes multiple views of data simultaneously during training to learn more expressive representations. Multi-view learning has been gaining a large amount of interest in various machine learning applications recently. In this paper, we focus on learning representations prior to classification using multi-view learning via deep canonical correlation analysis (DCCA) in hyperspectral image processing. We propose a classification framework including a proposed view generation approach. The motivation of our proposed view generation approach is to fuse spatial and spectral information. The performance of our proposed view generation approach is compared with the other view generation methods in the literature; namely the uniform band slicing and correlation-partition-based clustering. To evaluate the effectiveness of the proposed approach, we performed experiments on two commonly used hyperspectral image datasets. Experimental results based on two hyperspectral image datasets demonstrate that the proposed classification framework provides satisfactory classification performances.
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Kemal Gürkan Toker and Seniha Esen Yüksel "Deep canonical correlation analysis for hyperspectral image classification", Proc. SPIE 11150, Remote Sensing of the Ocean, Sea Ice, Coastal Waters, and Large Water Regions 2019, 1115009 (14 October 2019); https://doi.org/10.1117/12.2532467
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KEYWORDS
Hyperspectral imaging

Image classification

Canonical correlation analysis

Principal component analysis

Matrices

Image fusion

Image processing

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