BiGSeT: Binary Mask-Guided Separation Training for DNN-based Hyperspectral Anomaly Detection
Haijun Liu, Xi Su, Xiangfei Shen, Lihui Chen, Xichuan Zhou

TL;DR
BiGSeT introduces a binary mask-guided training strategy for DNNs to improve hyperspectral anomaly detection by effectively separating background and anomalies, leading to superior detection performance.
Contribution
The paper proposes a novel, model-independent training method that enhances DNN-based hyperspectral anomaly detection by incorporating binary mask-guided separation training.
Findings
Achieved 90.67% AUC on HyMap Cooke City dataset.
Improved detection performance across various deep network structures.
Demonstrated effective transferability of the training strategy.
Abstract
Hyperspectral anomaly detection (HAD) aims to recognize a minority of anomalies that are spectrally different from their surrounding background without prior knowledge. Deep neural networks (DNNs), including autoencoders (AEs), convolutional neural networks (CNNs) and vision transformers (ViTs), have shown remarkable performance in this field due to their powerful ability to model the complicated background. However, for reconstruction tasks, DNNs tend to incorporate both background and anomalies into the estimated background, which is referred to as the identical mapping problem (IMP) and leads to significantly decreased performance. To address this limitation, we propose a model-independent binary mask-guided separation training strategy for DNNs, named BiGSeT. Our method introduces a separation training loss based on a latent binary mask to separately constrain the background and…
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Taxonomy
TopicsRemote-Sensing Image Classification · Remote Sensing and Land Use · Advanced Chemical Sensor Technologies
MethodsAutoencoders
