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Co-Segmentation and Superpixel-Based Graph Cuts for Building Change Detection from Bi-Temporal Digital Surface Models and Aerial Images

机译:基于双时相数字曲面模型和航拍图像的建筑物细分检测的基于共分割和基于超像素的图割

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Thanks to the recent development of laser scanner hardware and the technology of dense image matching (DIM), the acquisition of three-dimensional (3D) point cloud data has become increasingly convenient. However, how to effectively combine 3D point cloud data and images to realize accurate building change detection is still a hotspot in the field of photogrammetry and remote sensing. Therefore, with the bi-temporal aerial images and point cloud data obtained by airborne laser scanner (ALS) or DIM as the data source, a novel building change detection method combining co-segmentation and superpixel-based graph cuts is proposed in this paper. In this method, the bi-temporal point cloud data are firstly combined to achieve a co-segmentation to obtain bi-temporal superpixels with the simple linear iterative clustering (SLIC) algorithm. Secondly, for each period of aerial images, semantic segmentation based on a deep convolutional neural network is used to extract building areas, and this is the basis for subsequent superpixel feature extraction. Again, with the bi-temporal superpixel as the processing unit, a graph-cuts-based building change detection algorithm is proposed to extract the changed buildings. In this step, the building change detection problem is modeled as two binary classifications, and acquisition of each period’s changed buildings is a binary classification, in which the changed building is regarded as foreground and the other area as background. Then, the graph cuts algorithm is used to obtain the optimal solution. Next, by combining the bi-temporal changed buildings and digital surface models (DSMs), these changed buildings are further classified as “newly built,” “taller,” “demolished”, and “lower”. Finally, two typical datasets composed of bi-temporal aerial images and point cloud data obtained by ALS or DIM are used to validate the proposed method, and the experiments demonstrate the effectiveness and generality of the proposed algorithm.
机译:得益于激光扫描仪硬件的最新发展和密集图像匹配(DIM)技术,三维(3D)点云数据的获取变得越来越方便。然而,如何有效地将3D点云数据和图像结合起来以实现准确的建筑物变化检测仍然是摄影测量和遥感领域的热点。因此,以机载激光扫描仪(ALS)或DIM获取的双时空影像和点云数据为数据源,提出了一种基于共分割和基于超像素的图割相结合的新型建筑物变化检测方法。在这种方法中,首先通过简单线性迭代聚类(SLIC)算法将双时相点云数据进行组合,以得到双时相超像素。其次,对于航空影像的每个周期,基于深度卷积神经网络的语义分割被用于提取建筑物区域,这是后续超像素特征提取的基础。再次,以双时相超像素为处理单元,提出了一种基于图割的建筑物变化检测算法,以提取变化后的建筑物。在此步骤中,将建筑物变化检测问题建模为两个二进制分类,并且每个时期的变化建筑物的获取都是二进制分类,其中,将变化建筑物视为前景,将其他区域视为背景。然后,使用图割算法获得最优解。接下来,通过组合双时变建筑和数字地面模型(DSM),这些变建筑被进一步分类为“新建”,“塔勒”,“拆除”和“下部”。最后,利用两个时空航拍图像和由ALS或DIM获得的点云数据组成的两个典型数据集,对该算法进行了验证,实验证明了该算法的有效性和普遍性。

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