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Unsupervised feature extraction from hyperspectral images (HSIs) relies on efficient data representation. However, classical data representation techniques, e.g., principal component analysis and independent component analysis, do not reflect the intrinsic characteristics of HSI, and as such, they are less efficient for producing discriminative features. To address this issue, we have developed an intrinsic representation (IR) approach to support HSI classification. Based on the linear spectral mixture model, the IR approach explains the underlying physical factors that are responsible for generating HSI. Moreover, it addresses other important characteristics of HSI, i.e., the noise variance heterogeneity effect in the spectral domain and the spatial correlation effect in image domain. The IR model is solved iteratively by alternating the estimation of IR coefficients given IR bases and the update of IR bases given the coefficients. The resulting IR coefficients are discriminative, compact, and noise resistant, thereby constituting powerful features for improved HSI classification. The experiments on both simulated and real HSI demonstrate that the features extracted by the IR model are more capable of boosting the classification performance than the other referenced techniques.
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Linlin Xu
University of Calgary
Alexander Wong
University of British Columbia
Fan Li
Nanchang Institute of Technology
IEEE Transactions on Geoscience and Remote Sensing
University of Waterloo
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Xu et al. (Fri,) studied this question.
synapsesocial.com/papers/6a20e79b76382611e5181835 — DOI: https://doi.org/10.1109/tgrs.2015.2474132
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