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Deep Convolutional Sparse Coding Network for Salient Object Detection in VHR Remote Sensing Images

机译:VHR遥感图像中突出对象检测的深度卷积稀疏编码网络

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In order to reduce computational redundancy and increase the speed of image analysis, Saliency Object Detection (SOD) is one of the outstanding methods for Very High Resolution (VHR) remote sensing image analysis. However, Remote sensing images (RSIs) have the characteristics of diverse spatial resolutions and cluttered backgrounds, leading to the direct use of SOD methods for natural scenes generally not achieving satisfactory results. In this paper, combining the advantages of Convolutional Sparse Coding (CSC) and deep neural networks, a deep CSC network model is proposed for SOD of RSIs. First, a CSC Block (SCSB) is constructed by combining the CNN component and the Soft Shrinkage Threshold (SST) function to fully extract the effective information of the image. Then, build a multi-level coding network by stacking multiple CSCBs to enhance the perception of multi-scale and detailed information of salient targets. Finally, multi-level features are integrated in a simple way, and the entire network performs supervised learning in an end-to-end manner. The experimental results on the RSIs data set show that the proposed network model is superior to other methods in both quantitative and qualitative performance comparison.
机译:为了降低计算冗余并提高图像分析的速度,显着对象检测(SOD)是非常高分辨率(VHR)遥感图像分析的优异方法之一。然而,遥感图像(RSIS)具有不同的空间分辨率和杂乱背景的特点,导致直接使用SOD方法对于自然场景通常不实现令人满意的结果。在本文中,组合卷积稀疏编码(CSC)和深神经网络的优点,提出了一种SOD的深度CSC网络模型。首先,通过组合CNN分量和软收缩阈值(SST)功能来构建CSC块(SCSB)来完全提取图像的有效信息。然后,通过堆叠多个CSCB来构建多级编码网络,以增强对多尺度和突出目标的详细信息的感知。最后,多级功能以简单的方式集成,整个网络以端到端的方式执行监督学习。 RSIS数据集的实验结果表明,所提出的网络模型优于定量和定性性能比较的其他方法。

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