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A New Framework for Automatic Airports Extraction from SAR Images Using Multi-Level Dual Attention Mechanism

机译:采用多级双重关注机制从SAR图像提取的自动机场新框架

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摘要

The detection of airports from Synthetic Aperture Radar (SAR) images is of great significance in various research fields. However, it is challenging to distinguish the airport from surrounding objects in SAR images. In this paper, a new framework, multi-level and densely dual attention (MDDA) network is proposed to extract airport runway areas (runways, taxiways, and parking lots) in SAR images to achieve automatic airport detection. The framework consists of three parts: down-sampling of original SAR images, MDDA network for feature extraction and classification, and up-sampling of airports extraction results. First, down-sampling is employed to obtain a medium-resolution SAR image from the high-resolution SAR images to ensure the samples (500 x 500) can contain adequate information about airports. The dataset is then input to the MDDA network, which contains an encoder and a decoder. The encoder uses ResNet_101 to extract four-level features with different resolutions, and the decoder performs fusion and further feature extraction on these features. The decoder integrates the chained residual pooling network (CRP_Net) and the dual attention fusion and extraction (DAFE) module. The CRP_Net module mainly uses chained residual pooling and multi-feature fusion to extract advanced semantic features. In the DAFE module, position attention module (PAM) and channel attention mechanism (CAM) are combined with weighted filtering. The entire decoding network is constructed in a densely connected manner to enhance the gradient transmission among features and take full advantage of them. Finally, the airport results extracted by the decoding network were up-sampled by bilinear interpolation to accomplish airport extraction from high-resolution SAR images. To verify the proposed framework, experiments were performed using Gaofen-3 SAR images with 1 m resolution, and three different airports were selected for accuracy evaluation. The results showed that the mean pixels accuracy (MPA) and mean intersection over union (MIoU) of the MDDA network was 0.98 and 0.97, respectively, which is much higher than RefineNet and DeepLabV3. Therefore, MDDA can achieve automatic airport extraction from high-resolution SAR images with satisfying accuracy.
机译:从合成孔径雷达(SAR)图像的机场检测到各种研究领域具有重要意义。然而,将机场与SAR图像中的周围物体区分开来挑战。在本文中,提出了一种新的框架,多级和密集的双重关注(MDDA)网络,以在SAR图像中提取机场跑道区域(跑道,滑行道和停车场)以实现自动机场检测。该框架由三个部分组成:原始SAR图像的下式采样,MDDA网络,用于特征提取和分类,以及机场提取结果的上抽样。首先,采用下抽样来获得来自高分辨率SAR图像的中分辨率SAR图像,以确保样品(500×500)可以包含有关机场的适当信息。然后将数据集输入到MDDA网络,该网络包含编码器和解码器。编码器使用Reset_101提取具有不同分辨率的四级功能,解码器对这些功能进行融合和进一步的特征提取。解码器集成了链式的残余池网络(CRP_NET)和双重注意融合和提取(DAFF)模块。 CRP_NET模块主要使用链断的残余池和多重功能融合来提取高级语义功能。在铲斗模块中,位置注意模块(PAM)和通道注意机制(CAM)与加权滤波相结合。整个解码网络以密集连接的方式构造,以增强特征之间的梯度传输,并充分利用它们。最后,通过双线性插值对解码网络提取的机场结果是从高分辨率SAR图像完成机场提取的。为了验证所提出的框架,使用具有1米分辨率的高芬-3 SAR图像进行实验,并选择三种不同的机场进行准确性评估。结果表明,MDDA网络的平均像素精度(MPA)和平均交叉分别为0.98和0.97,远高于RefineNet和Deeplabv3。因此,MDDA可以通过满足精度来实现高分辨率SAR图像的自动机场提取。

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