Multi-beam Data Automatic Filtering Technology

Yu Yan, Linfeng Yuan, Longjiang Ran, Hui Yin, X. Xiao
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引用次数: 1

Abstract

Aiming at the characteristics of complex noise sources in multi-beam bathymetric data, this paper proposes a multi-beam automatic filtering method that combines filtering of optimal reference curved surface and trend surface. By implementing statistical filtering to pre-process the data, the optimal reference curved surface is constructed based on the filtered terrain data, the theoretical optimal depth value of each beam point is calculated. The optimal reference curved surface is filtered by combining the depth tolerance to determine whether the point is a noise point. Then the trend surface is constructed using the filtered non-noise data, and the trend surface is filtered on the original point cloud data. Through the verification of the measured data, this method can effectively remove most of the cluster noises in the multi-beam bathymetric data and is more efficient than manual processing.
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多波束数据自动滤波技术
针对多波束测深数据噪声源复杂的特点,提出了一种结合最优参考曲面和趋势面滤波的多波束自动滤波方法。通过统计滤波对数据进行预处理,基于滤波后的地形数据构造最优参考曲面,计算出各波束点的理论最优深度值。结合深度容差对最佳参考曲面进行滤波,判断该点是否为噪声点。然后利用滤波后的非噪声数据构造趋势面,并对原始点云数据进行趋势面滤波。通过实测数据的验证,该方法能够有效去除多波束测深数据中的大部分聚类噪声,比人工处理效率更高。
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