首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Improving public data for building segmentation from Convolutional Neural Networks (CNNs) for fused airborne lidar and image data using active contours
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Improving public data for building segmentation from Convolutional Neural Networks (CNNs) for fused airborne lidar and image data using active contours

机译:使用主动轮廓线改善融合的机载激光雷达和图像数据的卷积神经网络(CNN)用于建筑物分割的公共数据

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Robust and reliable automatic building detection and segmentation from aerial images/point clouds has been a prominent field of research in remote sensing, computer vision and point cloud processing for a number of decades. One of the largest issues associated with deep learning methods is the high quantity of data required for training. To help address this we present a method to improve public GIS building footprint labels by using Morphological Geodesic Active Contours (MorphGACs). We demonstrate by improving the quality of building footprint labels for detection and semantic segmentation, more robust and reliable models can be obtained. We evaluate these methods over a large UK-based dataset of 24556 images containing 169835 building instances. This is achieved by training several Mask/Faster R-CNN and RetinaNet deep convolutional neural networks. Networks are supplied with both RGB and fused RGB-lidar data. We offer quantitative analysis on the benefits of the inclusion of depth data for building segmentation. By employing both methods we achieve a detection accuracy of 0.92 (mAP@0.5) and segmentation f1 scores of 0.94 over a 4911 test images ranging from urban to rural scenes.
机译:数十年来,从航空影像/点云中进行可靠可靠的自动建筑物检测和分割一直是遥感,计算机视觉和点云处理领域的重要研究领域。与深度学习方法相关的最大问题之一是训练所需的大量数据。为了解决这个问题,我们提出了一种通过使用形态测地线活动轮廓线(MorphGAC)来改进公共GIS建筑足迹标签的方法。我们通过提高用于检测和语义分割的建筑足迹标签的质量来证明,可以获得更强大和可靠的模型。我们在包含169835个建筑实例的24556张图像的基于英国的大型数据集上评估了这些方法。这是通过训练几个Mask / Faster R-CNN和RetinaNet深卷积神经网络来实现的。网络同时提供RGB和融合的RGB激光雷达数据。我们提供定量分析,包括将深度数据用于建筑物分割的好处。通过使用这两种方法,在从城市到乡村场景的4911张测试图像上,我们实现了0.92(mAP@0.5)的检测精度和0.94的分割f1分数。

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