A cluster-based morphological filter for geospatial data analysis

Zheng Cui, Keqi Zhang, Chengcui Zhang, Shu‐Ching Chen
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引用次数: 5

Abstract

LIDAR (Light Detection and Ranging) is a widely used technology to measure terrain properties and topographic mapping nowadays. Many filtering methods have been developed to process the geospatial data generated by LIDAR to generate bare earth digital terrain models. Among these methods, mathematical morphological filtering is a very effective and efficient method to separate ground and non-ground objects from LIDAR data. This method can achieve ideal results in the flat terrain, while it is not working very well in the undulating and complex terrain with large non-ground objects. The reason is that it would remove ground terrain objects along with filtering large size non-ground objects when using a large filtering window size. Especially in the mountainous terrain, it would cause the hill cut-off problem, which is a common problem for morphological filters. In this paper, a cluster-based morphological filter is proposed to improve the progressive morphological filter and make it work better on more undulating and complex terrain types. The filtering results demonstrate that the proposed method is able to effectively preserve terrain ground objects and remove large non-ground objects.
地理空间数据分析的聚类形态学滤波器
激光雷达(LIDAR, Light Detection and Ranging)是目前广泛应用于地形测量和地形测绘的一种技术。为了处理激光雷达生成的地理空间数据以生成裸地数字地形模型,已经开发了许多滤波方法。在这些方法中,数学形态滤波是一种非常有效的从激光雷达数据中分离地面和非地面目标的方法。该方法在平坦地形中可以达到理想的效果,但在起伏复杂的地形中,非地面物体较多,效果不佳。原因是当使用大的过滤窗口大小时,它会去除地面地形物体,同时过滤大尺寸的非地面物体。特别是在山地地形中,它会造成山地截断问题,这是形态滤波器的一个常见问题。本文提出了一种基于聚类的形态滤波器,对渐进式形态滤波器进行了改进,使其能够更好地适应更起伏、更复杂的地形类型。滤波结果表明,该方法能够有效地保留地形地物和去除大型非地物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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