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Learning a Cross-modality Anomaly Detector for Remote Sensing Imagery

Remote sensing anomaly detector can find the objects deviating from the background as potential targets for Earth monitoring. Given the diversity in earth anomaly types, designing a transferring model with cross-modality detection ability should be cost-effective and flexible to new earth observatio...

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Published in:arXiv.org 2024-09
Main Authors: Li, Jingtao, Wang, Xinyu, Zhao, Hengwei, Zhang, Liangpei, Zhong, Yanfei
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Wang, Xinyu
Zhao, Hengwei
Zhang, Liangpei
Zhong, Yanfei
description Remote sensing anomaly detector can find the objects deviating from the background as potential targets for Earth monitoring. Given the diversity in earth anomaly types, designing a transferring model with cross-modality detection ability should be cost-effective and flexible to new earth observation sources and anomaly types. However, the current anomaly detectors aim to learn the certain background distribution, the trained model cannot be transferred to unseen images. Inspired by the fact that the deviation metric for score ranking is consistent and independent from the image distribution, this study exploits the learning target conversion from the varying background distribution to the consistent deviation metric. We theoretically prove that the large-margin condition in labeled samples ensures the transferring ability of learned deviation metric. To satisfy this condition, two large margin losses for pixel-level and feature-level deviation ranking are proposed respectively. Since the real anomalies are difficult to acquire, anomaly simulation strategies are designed to compute the model loss. With the large-margin learning for deviation metric, the trained model achieves cross-modality detection ability in five modalities including hyperspectral, visible light, synthetic aperture radar (SAR), infrared and low-light in zero-shot manner.
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subjects Anomalies
Conditional probability
Deviation
Infrared radar
Learning
Optimization
Ranking
Remote sensing
Sensors
Synthetic aperture radar
title Learning a Cross-modality Anomaly Detector for Remote Sensing Imagery
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