Due to their ability to offer more comprehensive information than data from a single view, multi-view (multi-source, multi-modal, multi-perspective, etc.) data are being used more frequently in remote sensing tasks. However, as the number of views grows, the issue of data quality becomes more apparent, limiting the potential benefits of multi-view data. Although recent deep neural network (DNN) based models can learn the weight of data adaptively, a lack of research on explicitly quantifying the data quality of each view when fusing them renders these models inexplicable, performing unsatisfactorily and inflexible in downstream remote sensing tasks. To fill this gap, in this paper, evidential deep learning is introduced to the task of aerial-ground dual-view remote sensing scene classification to model the credibility of each view. Specifically, the theory of evidence is used to calculate an uncertainty value which describes the decision-making risk of each view. Based on this uncertainty, a novel decision-level fusion strategy is proposed to ensure that the view with lower risk obtains more weight, making the classification more credible. On two well-known, publicly available datasets of aerial-ground dual-view remote sensing images, the proposed approach achieves state-of-the-art results, demonstrating its effectiveness. The code and datasets of this article are available at the following address: https://github.com/gaopiaoliang/Evidential.
翻译:由于能够提供比单一观点数据更全面的信息,多视角(多源、多模式、多视角、多视角等)数据在遥感任务中被更频繁地使用,然而,随着观测数量的增加,数据质量问题变得更加明显,限制了多视角数据的潜在惠益。尽管基于最近深层神经网络的模型可以适应性地了解数据的重要性,但在使用这些数据时缺乏对每种观点的数据质量的明确量化研究,使得这些模型难以解释,在下游遥感任务中执行不满意和不灵活的工作。为填补这一空白,本文件介绍了对空地双视图遥感场面任务进行证据深度学习,以模拟每种观点的可信度。具体地说,证据理论被用来计算不确定性值,用以描述每种观点的决策风险。基于这种不确定性,提出了一个新的决策级融合战略,以确保风险较低的观点获得更强的份量,在下游遥感任务中执行不满意和不灵活的工作。在两种已知的遥感图像分类中,可以公开展示其可获取的双层数据。