Access to high resolution satellite imagery has dramatically increased in recent years as several new constellations have entered service. High revisit frequencies as well as improved resolution has widened the use cases of satellite imagery to areas such as humanitarian relief and even Search and Rescue (SaR). We propose a novel remote sensing object detection dataset for deep learning assisted SaR. This dataset contains only small objects that have been identified as potential targets as part of a live SaR response. We evaluate the application of popular object detection models to this dataset as a baseline to inform further research. We also propose a novel object detection metric, specifically designed to be used in a deep learning assisted SaR setting.
翻译:近年来,随着几个新的星座投入使用,获取高分辨率卫星图像的机会急剧增加;高重访频率和改进分辨率使卫星图像的使用案例扩大到人道主义救济甚至搜索和救援等领域;我们提议建立一个新型的遥感物体探测数据集,用于深入学习协助的SaR。该数据集仅包含小物体,被确定为作为SAR现场反应的一部分的潜在目标。我们评估了将大众物体探测模型应用于该数据集作为基准的运用情况,以便为进一步的研究提供信息。我们还提出了一个新的物体探测指标,专门设计用于深入学习协助的SaR设置。