Salient object detection in optical remote sensing images (ORSI-SOD) has been widely explored for understanding ORSIs. However, previous methods focus mainly on improving the detection accuracy while neglecting the cost in memory and computation, which may hinder their real-world applications. In this paper, we propose a novel lightweight ORSI-SOD solution, named CorrNet, to address these issues. In CorrNet, we first lighten the backbone (VGG-16) and build a lightweight subnet for feature extraction. Then, following the coarse-to-fine strategy, we generate an initial coarse saliency map from high-level semantic features in a Correlation Module (CorrM). The coarse saliency map serves as the location guidance for low-level features. In CorrM, we mine the object location information between high-level semantic features through the cross-layer correlation operation. Finally, based on low-level detailed features, we refine the coarse saliency map in the refinement subnet equipped with Dense Lightweight Refinement Blocks, and produce the final fine saliency map. By reducing the parameters and computations of each component, CorrNet ends up having only 4.09M parameters and running with 21.09G FLOPs. Experimental results on two public datasets demonstrate that our lightweight CorrNet achieves competitive or even better performance compared with 26 state-of-the-art methods (including 16 large CNN-based methods and 2 lightweight methods), and meanwhile enjoys the clear memory and run time efficiency. The code and results of our method are available at https://github.com/MathLee/CorrNet.
翻译:在光学遥感图像(ORSI-SOD)中,人们广泛探索了光学遥感图像(ORSI-SOD)中的显性对象探测,以了解ORSI,然而,以往的方法主要侧重于提高探测精确度,而忽略了记忆和计算的成本,这可能会妨碍其真实世界应用。在本文中,我们提出了一个新的轻型ORSI-SOD解决方案,名为CorrNet,以解决这些问题。在CorrNet中,我们首先减轻脊椎(VGG-16),并建立一个用于地貌提取的轻度子网。随后,根据粗度至纯度战略,我们从一个Correlelation模块(CorrM)中的高级语义特征生成了初步粗度显性图。粗度的显性地图作为低度特征的定位指南。在CorrM CorrM中,我们通过跨层相关操作在高层次的语系特征之间埋设目标定位信息。 最后,我们根据低度的详细特征,改进了配有Dense Lightrightright Refin refility Broups, 最终绘制了精度的精度地图。通过将精度参数和精确的精度地图, 运行了每部分的精度的精度的参数运行, 4 运行了精度参数和计算结果。