Triplet-Watershed for Hyperspectral Image Classification
- URL: http://arxiv.org/abs/2103.09384v1
- Date: Wed, 17 Mar 2021 01:06:49 GMT
- Title: Triplet-Watershed for Hyperspectral Image Classification
- Authors: Aditya Challa, Sravan Danda, B.S.Daya Sagar and Laurent Najman
- Abstract summary: We propose a novel approach to train deep learning networks to obtain representations suitable for the watershed classifier.
We show that exploiting such characteristics allows the Triplet-Watershed to achieve state-of-art results.
Results are validated on Indianpines (IP), University of Pavia (UP), and Kennedy Space Center (KSC) datasets.
- Score: 7.285139308970045
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Hyperspectral images (HSI) consist of rich spatial and spectral information,
which can potentially be used for several applications. However, noise, band
correlations and high dimensionality restrict the applicability of such data.
This is recently addressed using creative deep learning network architectures
such as ResNet, SSRN, and A2S2K. However, the last layer, i.e the
classification layer, remains unchanged and is taken to be the softmax
classifier. In this article, we propose to use a watershed classifier.
Watershed classifier extends the watershed operator from Mathematical
Morphology for classification. In its vanilla form, the watershed classifier
does not have any trainable parameters. In this article, we propose a novel
approach to train deep learning networks to obtain representations suitable for
the watershed classifier. The watershed classifier exploits the connectivity
patterns, a characteristic of HSI datasets, for better inference. We show that
exploiting such characteristics allows the Triplet-Watershed to achieve
state-of-art results. These results are validated on Indianpines (IP),
University of Pavia (UP), and Kennedy Space Center (KSC) datasets, relying on
simple convnet architecture using a quarter of parameters compared to previous
state-of-the-art networks.
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