Robust semantic segmentation of VHR remote sensing images from UAV sensors is critical for earth observation, land use, land cover or mapping applications. Several factors such as shadows, weather disruption and camera shakes making this problem highly challenging, especially only using RGB images. In this paper, we propose the use of multi-modality data including NIR, RGB and DSM to increase robustness of segmentation in blurred or partially damaged VHR remote sensing images. By proposing a cascaded dense encoder-decoder network and the SELayer based fusion and assembling techniques, the proposed RobustDenseNet achieves steady performance when the image quality is decreasing, compared with the state-of-the-art semantic segmentation model.
翻译:在本文中,我们提议使用多模式数据,包括NIR、RGB和DSM, 以提高模糊或部分损坏的VHR遥感图像的分解强度。提议采用串联密度编码器分解网络和基于SeLayer的聚变和组装技术,与最先进的语义分解模型相比,拟议的RobustDenseNet在图像质量下降时取得稳步的性能。