AI Security for Geoscience and Remote Sensing: Challenges and Future
Trends
- URL: http://arxiv.org/abs/2212.09360v2
- Date: Thu, 22 Jun 2023 15:51:34 GMT
- Title: AI Security for Geoscience and Remote Sensing: Challenges and Future
Trends
- Authors: Yonghao Xu, Tao Bai, Weikang Yu, Shizhen Chang, Peter M. Atkinson,
Pedram Ghamisi
- Abstract summary: This paper reviews the current development of AI security in the geoscience and remote sensing field.
It covers the following five important aspects: adversarial attack, backdoor attack, federated learning, uncertainty and explainability.
To the best of the authors' knowledge, this paper is the first attempt to provide a systematic review of AI security-related research in the geoscience and RS community.
- Score: 16.001238774325333
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent advances in artificial intelligence (AI) have significantly
intensified research in the geoscience and remote sensing (RS) field. AI
algorithms, especially deep learning-based ones, have been developed and
applied widely to RS data analysis. The successful application of AI covers
almost all aspects of Earth observation (EO) missions, from low-level vision
tasks like super-resolution, denoising and inpainting, to high-level vision
tasks like scene classification, object detection and semantic segmentation.
While AI techniques enable researchers to observe and understand the Earth more
accurately, the vulnerability and uncertainty of AI models deserve further
attention, considering that many geoscience and RS tasks are highly
safety-critical. This paper reviews the current development of AI security in
the geoscience and RS field, covering the following five important aspects:
adversarial attack, backdoor attack, federated learning, uncertainty and
explainability. Moreover, the potential opportunities and trends are discussed
to provide insights for future research. To the best of the authors' knowledge,
this paper is the first attempt to provide a systematic review of AI
security-related research in the geoscience and RS community. Available code
and datasets are also listed in the paper to move this vibrant field of
research forward.
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