Andrew Du, Yee Wei Law, M. Sasdelli, Bo Chen, Ken Clarke, M. Brown, Tat-Jun Chin
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Adversarial Attacks against a Satellite-borne Multispectral Cloud Detector
Data collected by Earth-observing (EO) satellites are often afflicted by cloud cover. Detecting the presence of clouds-which is increasingly done using deep learning-is crucial preprocessing in EO applications. In fact, advanced EO satellites perform deep learning-based cloud detection on board and downlink only clear-sky data to save bandwidth. In this paper, we highlight the vulnerability of deep learning-based cloud detection towards adversarial attacks. By optimising an adversarial pattern and superimposing it into a cloudless scene, we bias the neural network into detecting clouds in the scene. Since the input spectra of cloud detectors include the nonvisible bands, we generated our attacks in the multispectral domain. This opens up the potential of multi-objective attacks, specifically, adversarial biasing in the cloud-sensitive bands and visual camouflage in the visible bands. We also investigated mitigation strategies against the attacks.