基于形态学梯度的机载激光扫描数据滤波方法
Filtering Airborne LIDAR Data Based on Morphological Gradient
- 2008年第4期 页码:633-639
纸质出版日期: 2008
DOI: 10.11834/jrs.20080483
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纸质出版日期: 2008 ,
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[1]李勇,吴华意.基于形态学梯度的机载激光扫描数据滤波方法[J].遥感学报,2008(04):633-639.
LI Yong, WU Hua-yi. Filtering Airborne LIDAR Data Based on Morphological Gradient[J]. Journal of Remote Sensing, 2008,(4):633-639.
机载激光扫描技术能实时获取大范围、高精度的三维空间信息
从而受到日益广泛的重视和应用。然而由于地理环境的复杂性
其数据滤波一直是一个研究难点。针对数据点云的特点和滤波所面临的问题
提出了一种基于形态学梯度的机载激光扫描数据滤波方法。使用改进的形态学梯度计算方法得到每个点的梯度
再基于梯度选择特定的点进行迭代开运算
并根据梯度直方图减少迭代的次数
通过判断每次开运算后点的高程与原高程的差值是否小于一定的阈值
逐步滤除非地面点。使用国际摄影测量与遥感学会(ISPRS)提供的测试数据对算法进行实验
并与国际上8种滤波算法进行对比
结果表明该算法对各种复杂环境的适应性强
基于形态学梯度的滤波既能减少不必要的计算
又能降低误差产生的可能
从而在有效地去除非地面点的同时
也能很好地保留地面点
故具有良好的可靠性与实用性。
The technology of airborne Light Detection And Ranging(LIDAR) receives wider attention and broader application for the ability of rapid acquiring three-dimensional topographic measurements of large-scale areas.These measurements are three-dimensional point clouds with irregular spacing.The points include bare ground
buildings
vehicles
vegetation and so on.It is important to identify and classify ground and non-ground points for generating DEM and extracting objects.Removing non-ground points from LIDAR datasets is called as filtering.In the last few years
a number of filtering algorithms have been explored.But most algorithms have more or less drawbacks and limitation in adaptability and correctness.Filtering is still a challenging task that is difficult to resolve for scene complexity.The topographic theory that filtering lies on are generally two aspects: one is that the natural terrain has continuity;the other is that the size of objects often has a range.Filtering based on mathematical morphology is considered as a promising strategy because it combines the two above aspects.But most of researchers carry on erosion or opening operation using every point
which is time-consuming and often cause errors.In order to overcome the weakness mentioned above
a new method of filtering based on morphological gradient is proposed in this paper.The method mainly analyzes the distribution characteristic of LIDAR points according to morphological gradients
so as to choose the specific points to carry on the morphological operation
which mainly include following steps.Firstly
point clouds are divided by an index mesh
which can organize points effectively and maintain the high resolution potential of raw data.Then
the morphological gradient of each point is calculated using the method suitable for filtering
and the low outliers are removed.Finally
some points are chosen based on gradients to carry on an improved opening operation iteratively.The iterative times are controlled through analyzing the gradient histogram.During each time of iteration
a point is classified as an object point if its difference of the height after opening operation and the original height is more than a threshold.15 sample data sets are released by ISPRS especially for testing of filtering algorithms
mainly including situations when difficulties are encountered in different geographical environments
such as outliers
object complexity
attached objects
vegetation and discontinuities in the bare ground.The semi-automatic filtering and manual editing of sample data have been done by ISPRS
whose results are used to evaluate result of automatic algorithms.ISPRS also publish the test results and analysis of eight typical filtering algorithms.The method proposed in this paper is tested with the sample data and compared with other filtering methods qualitatively and quantitatively.Qualitative assessment is done by visual representation of filtering results.Quantitative assessment is done by evaluating Type Ⅰ error(rejection of bare ground points)
Type Ⅱ error(acceptance of object points as bare ground) and Total error.The experimental results show that the method has high robustness in all kinds of complex scenes.The filter based on morphological gradient can reduce the nonessential computation as well as the possibility that errors happen.All types of error are controlled simultaneously in a relatively small range.The topographic features are well preserved while object points are removed effectively.So the method has good reliability and practicability.
机载激光扫描滤波数学形态学梯度
LIDARfilteringairborne laser scanningmorphological gradient
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