论文标题
局部和非本地特征的深层融合,以获得精密滑坡识别
Deep Fusion of Local and Non-Local Features for Precision Landslide Recognition
论文作者
论文摘要
滑坡库存的精确映射对于缓解危害至关重要。大多数滑坡通常与其他令人困惑的地质特征共存,并且这种区域的存在只能大规模地明确推断。此外,本地信息对于保存对象边界也很重要。为了解决这个问题,本文提出了一种有效的方法来融合本地和非本地特征,以克服上下文问题。我们基于在遥感社区中广泛采用的U-NET体系结构,我们利用了两个其他模块。第一个使用扩张的卷积和相应的真实空间金字塔池,这在不牺牲空间分辨率或增加记忆使用情况的情况下扩大了接受场。第二种使用刻度注意机制来指导通过学习的重量图从粗级的特征提高采样。在实施中,针对原始U-NET的计算开销仅是少数卷积层。实验评估表明,该提出的方法优于最先进的通用语义分割方法。此外,消融研究表明,这两个模型在滑坡识别性能方面具有广泛的增强。
Precision mapping of landslide inventory is crucial for hazard mitigation. Most landslides generally co-exist with other confusing geological features, and the presence of such areas can only be inferred unambiguously at a large scale. In addition, local information is also important for the preservation of object boundaries. Aiming to solve this problem, this paper proposes an effective approach to fuse both local and non-local features to surmount the contextual problem. Built upon the U-Net architecture that is widely adopted in the remote sensing community, we utilize two additional modules. The first one uses dilated convolution and the corresponding atrous spatial pyramid pooling, which enlarged the receptive field without sacrificing spatial resolution or increasing memory usage. The second uses a scale attention mechanism to guide the up-sampling of features from the coarse level by a learned weight map. In implementation, the computational overhead against the original U-Net was only a few convolutional layers. Experimental evaluations revealed that the proposed method outperformed state-of-the-art general-purpose semantic segmentation approaches. Furthermore, ablation studies have shown that the two models afforded extensive enhancements in landslide-recognition performance.