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Building change detection via a combination of CNNs using only RGB aerial imageries

机译:仅使用RGB航拍图像通过CNN组合进行建筑物变化检测

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Building change information extracted from remote sensing imageries is important for various applications such as urban management and marketing planning. The goal of this work is to develop a methodology for automatically capturing building changes from remote sensing imageries. Recent studies have addressed this goal by exploiting 3-D information as a proxy for building height. In contrast, because in practice it is expensive or impossible to prepare 3-D information, we do not rely on 3-D data but focus on using only RGB aerial imageries. Instead, we employ deep convolutional neural networks (CNNs) to extract effective features, and improve change detection accuracy in RGB remote sensing imageries. We consider two aspects of building change detection, building detection and subsequent change detection. Our proposed methodology was tested on several areas, which has some differences such as dominant building characteristics and varying brightness values. On all over the tested areas, the proposed method provides good results for changed objects, with recall values over 75 % with a strict overlap requirement of over 50% in intersection-over-union (IoU). When the IoU threshold was relaxed to over 10%, resulting recall values were over 81%. We conclude that use of CNNs enables accurate detection of building changes without employing 3-D information.
机译:从遥感影像中提取的建筑变化信息对于各种应用(例如城市管理和市场营销计划)非常重要。这项工作的目的是开发一种从遥感影像中自动捕获建筑物变化的方法。最近的研究通过利用3D信息作为建筑物高度的替代物来解决此目标。相反,由于在实践中准备3D信息非常昂贵或不可能,因此我们不依赖于3D数据,而是专注于仅使用RGB航空影像。相反,我们采用深度卷积神经网络(CNN)提取有效特征,并提高RGB遥感影像中的变化检测精度。我们考虑建筑物变更检测,建筑物检测和后续变更检测两个方面。我们提出的方法已在多个领域进行了测试,这些领域存在一些差异,例如主要建筑特征和变化的亮度值。在所有测试区域中,所提出的方法都能为更改后的对象提供良好的结果,召回值超过75%,并且交叉重叠(IoU)的严格重叠要求超过50%。当IoU阈值放宽到10%以上时,召回值将超过81%。我们得出的结论是,使用CNN无需使用3D信息即可准确检测建筑物的变化。

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