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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >BUILDING CHANGE DETECTION FROM BITEMPORAL AERIAL IMAGES USING DEEP LEARNING
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BUILDING CHANGE DETECTION FROM BITEMPORAL AERIAL IMAGES USING DEEP LEARNING

机译:利用深度学习建立衡量标识空中图像的变化检测

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Automatic building change detection has become a topical issue owing to its wide range of applications, such as updating building maps. However, accurate building change detection remains challenging, particularly in urban areas. Thus far, there has been limited research on the use of the outdated building map (the building map before the update, referred to herein as the old-map) to increase the accuracy of building change detection. This paper presents a novel deep-learning-based method for building change detection using bitemporal aerial images containing RGB bands, bitemporal digital surface models (DSMs), and an old-map. The aerial images have two types of spatial resolutions, 12.5 cm or 16 cm, and the cell size of the DSMs is 50 cm × 50 cm. The bitemporal aerial images, the height variations calculated using the differences between the bitemporal DSMs, and the old-map were fed into a network architecture to build an automatic building change detection model. The performance of the model was quantitatively and qualitatively evaluated for an urban area that covered approximately 10 km2 and contained over 21,000 buildings. The results indicate that it can detect the building changes with optimum accuracy as compared to other methods that use inputs such as i) bitemporal aerial images only, ii) bitemporal aerial images and bitemporal DSMs, and iii) bitemporal aerial images and an old-map. The proposed method achieved recall rates of 89.3%, 88.8%, and 99.5% for new, demolished, and other buildings, respectively. The results also demonstrate that the old-map is an effective data source for increasing building change detection accuracy.
机译:由于其广泛的应用,自动建筑变更检测已成为一个局部问题,例如更新的建筑地图。然而,准确的建筑变革检测仍然具有挑战性,特别是在城市地区。到目前为止,对使用过时的建筑物地图(在更新之前的建筑物地图,在此作为旧地图之前的建筑物地图)的研究有限,以提高构建改变检测的准确性。本文介绍了一种使用含有RGB频带,磅扑式数字表面模型(DSMS)和旧地图的比特空中空中图像来构建基于深度学习的改变检测方法。空中图像具有两种类型的空间分辨率,12.5cm或16厘米,DSM的电池尺寸为50cm×50cm。使用比特DSMS之间的差异计算的比特仪空中图像,并将旧地图馈送到网络架构中以构建自动构建变化检测模型。该模型的性能是定量和定性地评估了约10公里12的城市地区,并包含超过21,000个建筑物。结果表明,与使用诸如i)贝斯梅尔航空图像(II)贝斯腾腾的空中图像和磅扑式DSMS和III)的贝斯普朗航空图像和旧地图相比,它可以以最佳精度检测建筑物的变化。 。拟议的方法分别取得了89.3%,88.8%和99.5%的召回率,分别用于新的,被拆除和其他建筑物。结果还表明,旧地图是增加建筑变化检测精度的有效数据源。

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