Salient object detection (SOD) for optical remote sensing images (RSIs) aims at locating and extracting visually distinctive objects/regions from the optical RSIs. Despite some saliency models were proposed to solve the intrinsic problem of optical RSIs (such as complex background and scale-variant objects), the accuracy and completeness are still unsatisfactory. To this end, we propose a relational reasoning network with parallel multi-scale attention for SOD in optical RSIs in this paper. The relational reasoning module that integrates the spatial and the channel dimensions is designed to infer the semantic relationship by utilizing high-level encoder features, thereby promoting the generation of more complete detection results. The parallel multi-scale attention module is proposed to effectively restore the detail information and address the scale variation of salient objects by using the low-level features refined by multi-scale attention. Extensive experiments on two datasets demonstrate that our proposed RRNet outperforms the existing state-of-the-art SOD competitors both qualitatively and quantitatively.
翻译:光学遥感图象(RSI)的显性物体探测(SOD)旨在从光学RSI中定位和提取有目共睹的物体/区域。尽管提出了一些显著模型以解决光学RSI的内在问题(例如复杂的背景和规模变化的物体),但准确性和完整性仍然不能令人满意。为此,我们提议在本文件中为光学遥感图象(RSI)的SOD建立一个具有平行多尺度关注的关联推理网络。将空间和频道维度结合起来的关联推理模块旨在利用高级编码特征来推断语义关系,从而促进产生更完整的探测结果。平行的多尺度注意模块的目的是有效地恢复详细信息,并通过使用通过多尺度关注改进的低层次特征解决显性物体的规模变化。关于两个数据集的广泛实验表明,我们拟议的RRNet在质量和数量上都超越了现有的尖端SOD竞争者。