Dealing with missing modalities at test time for land cover mapping: A case study on multi-source optical data

Y. J. E. Gbodjo, D. Ienco
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引用次数: 0

Abstract

In recent years, multiple sources of remote sensing data have become increasingly available to monitor Earth’s surface phenomena. However, unlike High Spatial Resolution (HSR) data, Very High Spatial Resolution (VHSR) satellite images remain difficult to collect over large areas due to acquisition costs and a smaller swath. This often compromises the simultaneous use of both sources of data over same study areas for many applications. In this work, we investigate a land cover mapping setting in which both HSR and VHSR are available at the learning stage of a deep neural network while only the HSR data is available at inference time for model inference. We thus propose simple but effective strategies for enhancing the land cover classification in this scenario of incomplete multi-source remote sensing data when the model is deployed.
土地覆盖制图测试时缺失模态的处理:以多源光学数据为例
近年来,越来越多的遥感数据来源可用于监测地球表面现象。然而,与高空间分辨率(HSR)数据不同,由于获取成本和较小的区域,极高空间分辨率(VHSR)卫星图像仍然难以在大范围内收集。这通常会危及在许多应用程序的同一研究领域同时使用两种数据源。在这项工作中,我们研究了一种土地覆盖制图设置,在深度神经网络的学习阶段,高铁和VHSR都是可用的,而在模型推理时,只有高铁数据可用。因此,我们提出了简单而有效的策略,以增强该模型在不完整多源遥感数据场景下的土地覆盖分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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