Polynomial expansion for range image segmentation and classification of the environment

Brian Okorn, Josh Harguess
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Abstract

In this paper we introduce a method that utilizes a high-order polynomial expansion of range imagery for the purposes of image segmentation and classification. The use of polynomial expansion has been quite successful in segmenting and estimating optical flow in 2D imagery, but has not been used extensively in 3D or range imagery. We derive features using the coefficients of the high-order polynomial expansion and use those features for local and global segmentation of the range image. Finally, we classify the segments based on the features within each segment. Promising results are shown on range images from the Odetic lidar database.
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基于多项式展开的距离图像分割与环境分类
本文介绍了一种利用距离图像的高阶多项式展开进行图像分割和分类的方法。多项式展开在二维图像的光流分割和估计中已经取得了相当大的成功,但在三维图像和距离图像中还没有得到广泛应用。我们利用高阶多项式展开的系数导出特征,并利用这些特征对距离图像进行局部和全局分割。最后,我们根据每个片段内的特征对片段进行分类。Odetic激光雷达数据库的距离图像显示了有希望的结果。
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