Nonnegative-Constrained Joint Collaborative Representation with Union Dictionary for Hyperspectral Anomaly Detection
Shizhen Chang, Pedram Ghamisi

TL;DR
This paper introduces a nonnegative-constrained joint collaborative representation model with a union dictionary for hyperspectral anomaly detection, improving robustness and efficiency over existing methods.
Contribution
It proposes a novel NJCR model with a union dictionary and nonnegative constraints, enhancing hyperspectral anomaly detection accuracy and computational efficiency.
Findings
Outperforms state-of-the-art detectors on four datasets
Achieves higher detection accuracy and robustness
Demonstrates effectiveness of the union dictionary approach
Abstract
Recently, many collaborative representation-based (CR) algorithms have been proposed for hyperspectral anomaly detection. CR-based detectors approximate the image by a linear combination of background dictionaries and the coefficient matrix, and derive the detection map by utilizing recovery residuals. However, these CR-based detectors are often established on the premise of precise background features and strong image representation, which are very difficult to obtain. In addition, pursuing the coefficient matrix reinforced by the general -min is very time consuming. To address these issues, a nonnegative-constrained joint collaborative representation model is proposed in this paper for the hyperspectral anomaly detection task. To extract reliable samples, a union dictionary consisting of background and anomaly sub-dictionaries is designed, where the background sub-dictionary is…
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Taxonomy
TopicsRemote-Sensing Image Classification · Advanced Chemical Sensor Technologies · Remote Sensing and Land Use
