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Scene classification of multisource remote sensing data with two-stream densely connected convolutional neural network

机译:两流密集连接卷积神经网络的多源遥感数据场景分类

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Scene classification is a hot research topic in the geoscience and remote sensing (RS) community. Currently, the investigations conducted in RS domain mainly use single source data (e.g. multispectral imagery (MSI), hyperspectral imagery (HSI), or light detection and ranging (LiDAR). etc.). However, one of the RS data aforementioned merely provides one certain perspective of the complex scenes while the multisource data fusion can provide complementary and robust knowledge about the objects of interest. We aim at fusing the spectral-spatial information of the HSI and the spatial-elevation information of LiDAR data for scene classification. In this work, the densely connected convolutional neural network (DenseNet), which connects all preceding layers to later layers in feed-forword manner, is employed to effectively extract and reuse heterogeneous features from HSI and LiDAR data. More specifically, a novel two-stream DenseNet architecture is proposed, which builds an identical but separated DenseNet stream for each data respectively. Then one of stream is utilized to extract the spectral-spatial features from HSI, the other is exploited to extract the spatial-elevation features of LiDAR data. Subsequently, the spectral-spatial-elevation features extracted in two streams are deeply fused within the fusion network which consists of two fully-connected layers for the final classification. Experimental results conducted on widely-used benchmark datasets show that the proposed architecture provides competitive performance in comparison with the state-of-the-art methods.
机译:场景分类是地球科学和遥感(RS)社区的热门研究主题。目前,在RS域中进行的调查主要使用单源数据(例如,多光谱图像(MSI),高光谱图像(HSI)或光检测和测距(LIDAR)。等)。然而,上述RS数据之一仅仅提供了复杂场景的一定的视角,而多源数据融合可以提供关于感兴趣对象的互补和鲁棒知识。我们旨在解决HSI的光谱空间信息和LIDAR数据的空间升高信息进行场景分类。在这项工作中,将所有先前层连接到较晚的卷绕方式的密集连接的卷积神经网络(DENSENET),以有效地提取和重用来自HSI和LIDAR数据的异构特征。更具体地,提出了一种新的二流DenSenet架构,其分别为每个数据构建相同但分离的DenSenet流。然后利用其中一个流来提取来自HSI的光谱空间特征,另一个被利用以提取LIDAR数据的空间升高特征。随后,在两个流中提取的光谱空间升高特征在融合网络中深入融合,该融合网络包括两个全连接的层,用于最终分类。在广泛使用的基准数据集中进行的实验结果表明,拟议的架构与最先进的方法相比,提供了竞争性能。

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