改进航空图像语义分割的新框架

Shuke He, Chen Jin, Lisheng Shu, Xuzhi He, Mingyi Wang, Gang Liu
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引用次数: 0

摘要

高空间分辨率(HSR)遥感图像呈现出前景-背景错综复杂的丰富织锦,使得在航空环境中进行语义分割成为一项艰巨而重要的任务。这一挑战的核心是两个关键问题:1) 减少背景干扰,提高前景清晰度。2) 在密集的小物体群中进行精确分割。传统的语义分割方法主要针对自然场景中大型物体的分割,但在面对航空图像的特征时,如广阔的背景区域、微小的前景物体和密集的目标集群时,这些方法往往会显得力不从心。为此,我们提出了一个新颖的语义分割框架,以克服这些障碍。为了应对第一个挑战,我们将 PointFlow 模块与前景-场景(F-S)模块结合使用。PointFlow 模块可以阻挡无关的背景信息,而 F-S 模块则可以促进场景和前景之间的共生关系,从而提高清晰度。对于第二项挑战,我们采用了一种称为分离学习的双分支结构,包括前景优先级估计和小物体边缘对齐(SOEA)。我们的前景显著性引导损失通过优先处理前景实例和挑战背景实例来优化训练过程。在 iSAID 和 Vaihingen 数据集上进行的大量实验验证了我们方法的有效性。我们的方法不仅超越了现有的通用语义分割技术,而且还优于最先进的遥感分割方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new framework for improving semantic segmentation in aerial imagery
High spatial resolution (HSR) remote sensing imagery presents a rich tapestry of foreground-background intricacies, rendering semantic segmentation in aerial contexts a formidable and vital undertaking. At its core, this challenge revolves around two pivotal questions: 1) Mitigating Background Interference and Enhancing Foreground Clarity. 2) Accurate Segmentation in Dense Small Object Cluster. Conventional semantic segmentation methods primarily cater to the segmentation of large-scale objects in natural scenes, yet they often falter when confronted with aerial imagery’s characteristic traits such as vast background areas, diminutive foreground objects, and densely clustered targets. In response, we propose a novel semantic segmentation framework tailored to overcome these obstacles. To address the first challenge, we leverage PointFlow modules in tandem with the Foreground-Scene (F-S) module. PointFlow modules act as a barrier against extraneous background information, while the F-S module fosters a symbiotic relationship between the scene and foreground, enhancing clarity. For the second challenge, we adopt a dual-branch structure termed disentangled learning, comprising Foreground Precedence Estimation and Small Object Edge Alignment (SOEA). Our foreground saliency guided loss optimally directs the training process by prioritizing foreground examples and challenging background instances. Extensive experimentation on the iSAID and Vaihingen datasets validates the efficacy of our approach. Not only does our method surpass prevailing generic semantic segmentation techniques, but it also outperforms state-of-the-art remote sensing segmentation methods.
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