Abstract

Lately, generative adversarial networks (GAN)-based methods have drawn extensive attention and achieved a promising performance in the field of hyperspectral anomaly detection (HAD) owing to GAN’s powerful data generation capability. However, without considering the background spatial features, most of these methods can not obtain a GAN with a strong background generation ability. Besides, they fail to address the hyperspectral image (HSI) redundant information disturbance problem in the anomaly detection part. To solve these issues, the unsupervised generative adversarial network with background spatial feature enhancement and irredundant pooling (BEGAIP) is proposed for HAD. To make better use of features, spatial and spectral features union extraction idea is also applied to the proposed model. To be specific, in spatial branch, a new background spatial feature enhancement way is proposed to get a data set containing relatively pure background information to train GAN and reconstruct a more vivid background image. In a spectral branch, irredundant pooling (IP) is invented to remove redundant information, which can also enhance the background spectral feature. Finally, the features obtained from the spectral and spatial branch are combined for HAD. The experimental results conducted on several HSI data sets display that the model proposed acquire a better performance than other relevant algorithms.

Highlights

  • A hyperspectral image (HSI) is viewed as a 3-D matrix with spectral and spatial dimensions

  • We propose a new constrained generative adversarial networks (GAN) training method based on background spatial feature enhancement (BE)

  • In the hyperspectral anomaly detection (HAD) evaluation area, receiver operating characteristic (ROC) is the most popular [46]. It is like a function where the true positive rate (TPR) is uniquely determined when the false positive rate (FPR) is fixed

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Summary

Introduction

A hyperspectral image (HSI) is viewed as a 3-D matrix with spectral and spatial dimensions. Generative Adversarial Network with Background Enhancement and Irredundant Pooling for Hyperspectral Anomaly Detection. Without considering the background spatial features, most of these methods can not obtain a GAN with a strong background generation ability They fail to address the hyperspectral image (HSI) redundant information disturbance problem in the anomaly detection part. To solve these issues, the unsupervised generative adversarial network with background spatial feature enhancement and irredundant pooling (BEGAIP). In spatial branch, a new background spatial feature enhancement way is proposed to get a data set containing relatively pure background information to train GAN and reconstruct a more vivid background image.

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