Sketched Multi-view Subspace Learning for Hyperspectral Anomalous Change
Detection
- URL: http://arxiv.org/abs/2210.04271v1
- Date: Sun, 9 Oct 2022 14:08:17 GMT
- Title: Sketched Multi-view Subspace Learning for Hyperspectral Anomalous Change
Detection
- Authors: Shizhen Chang, Michael Kopp, Pedram Ghamisi
- Abstract summary: A sketched multi-view subspace learning model is proposed for anomalous change detection.
The proposed model preserves major information from the image pairs and improves computational complexity.
experiments are conducted on a benchmark hyperspectral remote sensing dataset and a natural hyperspectral dataset.
- Score: 12.719327447589345
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In recent years, multi-view subspace learning has been garnering increasing
attention. It aims to capture the inner relationships of the data that are
collected from multiple sources by learning a unified representation. In this
way, comprehensive information from multiple views is shared and preserved for
the generalization processes. As a special branch of temporal series
hyperspectral image (HSI) processing, the anomalous change detection task
focuses on detecting very small changes among different temporal images.
However, when the volume of datasets is very large or the classes are
relatively comprehensive, existing methods may fail to find those changes
between the scenes, and end up with terrible detection results. In this paper,
inspired by the sketched representation and multi-view subspace learning, a
sketched multi-view subspace learning (SMSL) model is proposed for HSI
anomalous change detection. The proposed model preserves major information from
the image pairs and improves computational complexity by using a sketched
representation matrix. Furthermore, the differences between scenes are
extracted by utilizing the specific regularizer of the self-representation
matrices. To evaluate the detection effectiveness of the proposed SMSL model,
experiments are conducted on a benchmark hyperspectral remote sensing dataset
and a natural hyperspectral dataset, and compared with other state-of-the art
approaches.
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