Semantic segmentation using fine-resolution remotely sensed images plays a critical role in many practical applications, such as urban planning, environmental protection, natural and anthropogenic landscape monitoring, etc. However, the automation of semantic segmentation, i.e., automatic categorization/labeling and segmentation is still a challenging task, particularly for fine-resolution images with huge spatial and spectral complexity. Addressing such a problem represents an exciting research field, which paves the way for scene-level landscape pattern analysis and decision making. In this paper, we propose an approach for automatic land segmentation based on the Feature Pyramid Network (FPN). As a classic architecture, FPN can build a feature pyramid with high-level semantics throughout. However, intrinsic defects in feature extraction and fusion hinder FPN from further aggregating more discriminative features. Hence, we propose an Attention Aggregation Module (AAM) to enhance multi-scale feature learning through attention-guided feature aggregation. Based on FPN and AAM, a novel framework named Attention Aggregation Feature Pyramid Network (A2-FPN) is developed for semantic segmentation of fine-resolution remotely sensed images. Extensive experiments conducted on three datasets demonstrate the effectiveness of our A2 -FPN in segmentation accuracy. Code is available at https://github.com/lironui/A2-FPN.
翻译:使用精分辨率遥感图像的语义分解在许多实际应用中发挥着关键作用,如城市规划、环境保护、自然和人为景观监测等。 然而,语义分解自动化,即自动分类/标签和分解,仍是一项艰巨的任务,特别是对空间和光谱复杂度极高的精度图像而言。 解决这一问题是一个令人振奋的研究领域,为现场景观模式分析和决策铺平了道路。 在本文件中,我们提出了一个基于地貌金字网(FPN)的自动土地分解方法。作为一个经典建筑,FPN可以建立一个具有高等级语义的地貌金字塔。然而,地貌分解和分解的内在缺陷妨碍FPN进一步集聚更具歧视性的特征。因此,我们建议建立一个注意聚合模块(AAM),通过注意引导的地貌汇总加强多层次地貌学习。基于FPNPN和AUIA,一个名为 " 注意地貌网状图集 " (A2-FPN)的新框架,它可以建立一个具有高等级的地貌金字形金字形形形形形形图。在磁分解图解中,用于进行遥感分解分析。