Paper ID: 2502.20668 • Published Feb 28, 2025
OpenEarthSensing: Large-Scale Fine-Grained Benchmark for Open-World Remote Sensing
Xiang Xiang, Zhuo Xu, Yao Deng, Qinhao Zhou, Yifan Liang, Ke Chen, Qingfang Zheng, Yaowei Wang, Xilin Chen, Wen Gao
Huazhong University of Science and Technology•Peng Cheng Laboratory•Chinese Academy of Sciences
TL;DR
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In open-world remote sensing, deployed models must continuously adapt to a
steady influx of new data, which often exhibits various shifts compared to what
the model encountered during the training phase. To effectively handle the new
data, models are required to detect semantic shifts, adapt to covariate shifts,
and continuously update themselves. These challenges give rise to a variety of
open-world tasks. However, existing open-world remote sensing studies typically
train and test within a single dataset to simulate open-world conditions.
Currently, there is a lack of large-scale benchmarks capable of evaluating
multiple open-world tasks. In this paper, we introduce OpenEarthSensing, a
large-scale fine-grained benchmark for open-world remote sensing.
OpenEarthSensing includes 189 scene and objects categories, covering the vast
majority of potential semantic shifts that may occur in the real world.
Additionally, OpenEarthSensing encompasses five data domains with significant
covariate shifts, including two RGB satellite domians, one RGB aerial domian,
one MS RGB domian, and one infrared domian. The various domains provide a more
comprehensive testbed for evaluating the generalization performance of
open-world models. We conduct the baseline evaluation of current mainstream
open-world tasks and methods on OpenEarthSensing, demonstrating that it serves
as a challenging benchmark for open-world remote sensing.
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