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SRL-SOA: Self-Representation Learning with Sparse 1D-Operational Autoencoder for Hyperspectral Image Band Selection

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The band selection in the hyperspectral image (HSI) data processing is an important task considering its effect on the computational complexity and accuracy. In this work, we propose a novel framework for the band selection problem: Self-Representation Learning (SRL) with Sparse 1D-Operational Autoencoder (SOA). The proposed SLR-SOA approach introduces a novel autoencoder model, SOA, that is designed to learn a representation domain where the data are sparsely represented. Moreover, the network composes of 1D-operational layers with the non-linear neuron model. Hence, the learning capability of neurons (filters) is greatly improved with shallow architectures. Using compact architectures is especially crucial in autoencoders as they tend to overfit easily because of their identity mapping objective. Overall, we show that the proposed SRL-SOA band selection approach outperforms the competing methods over two HSI data including Indian Pines and Salinas-A considering the achieved land cover classification accuracies. The software implementation of the SRL-SOA approach is shared publicly at https://github.com/meteahishali/SRL-SOA.

Mete Ahishali, Serkan Kiranyaz, Iftikhar Ahmad, Moncef Gabbouj• 2022

Related benchmarks

TaskDatasetResultRank
Hyperspectral ClassificationPaviaU 15 bands
Overall Accuracy (OA)91.9
11
Hyperspectral ClassificationIndian Pines 25 bands
OA80.7
11
Hyperspectral ClassificationKSC 15 bands
Overall Accuracy (OA)88.78
11
Hyperspectral ClassificationSalinas 20 bands
Overall Accuracy92.81
11
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