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Multiscale Laplacian Operators for Feature Extraction on Irregularly Distributed 3-D Range Data

机译:多尺度拉普拉斯算子用于不规则分布3D范围数据的特征提取

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Multiscale feature extraction in image data has been investigated for many years. More recently the problem of processing images containing irregularly distribution data has became prominent. We present a multiscale Laplacian approach that can be applied directly to irregularly distributed data and in particular we focus on irregularly distributed 3D range data. Our results illustrate that the approach works well over a range of irregular distributed and that the use of Laplacian operators on range data is much less susceptive to noise than the equivalent operators used on intensity data.
机译:图像数据的多尺度特征提取已经研究了很多年。最近,处理包含不规则分布数据的图像的问题变得突出。我们提出了一种多尺度拉普拉斯方法,该方法可以直接应用于不规则分布的数据,尤其是我们专注于不规则分布的3D范围数据。我们的结果表明,该方法在一定范围的不规则分布上效果很好,并且与强度数据上使用的等效算符相比,在距离数据上使用拉普拉斯算子对噪声的敏感性要低得多。

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