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A Unified Multimodal Deep Learning Framework For Remote Sensing Imagery Classification

机译:遥感图像分类的统一多模式深度学习框架

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In this paper, we present a unified deep learning framework for multimodal remote sensing image classification, U-MDL for short. U-MDL attempts to develop a general network architecture that consists of two subnetworks for feature extraction and feature fusion, respectively, with a focus on "which", "when", and "how" to fuse. For this purpose, we detail several common but effective fusion modules in the networks, e.g., early fusion, middle fusion, late fusion, and encoder-decoder fusion. These modules can be generalized well into our U-MDL framework. More significantly, we also emphasize to investigate a special case of multi-modality learning (MML), that is, cross-modality learning (CML) which widely exists in real applications. Moreover, extensive experiments are conducted to demonstrate the superiority and effectiveness of the proposed U-MDL framework in the remote sensing image classification task. The codes and datasets are available at: https://github.com/danfenghong/IEEE_TGRS_MDL-RS for the sake of reproducibility.
机译:在本文中,我们为多模式遥感图像分类,U-MDL提供了一个统一的深度学习框架。 U-MDL尝试开发一般的网络架构,该架构包括两个子网,分别为特征提取和特征融合,重点关注“哪个”,“何时”,以及“如何”熔断器。为此目的,我们详细介绍了网络中的几种常见但有效的融合模块,例如早期融合,中融合,晚融合和编码器 - 解码器融合。这些模块可以普遍存在我们的U-MDL框架中。更重要的是,我们还强调调查多种方式学习(MML)的特殊情况,即广泛存在于实际应用中的跨模式学习(CML)。此外,进行了广泛的实验,以证明所提出的U-MDL框架在遥感图像分类任务中的优越性和有效性。代码和数据集可用于:https://github.com/danfenghong/ieee_tgrs_mdl-是为了重复性。

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