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Fast planar clustering and polygon extraction from noisy range images acquired in indoor environments

机译:从室内环境中获取的噪声范围图像进行快速平面聚类和多边形提取

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This paper presents a novel algorithm to cluster planar points and extract polygons from 3D range images acquired in an indoor environment. The algorithm replaces large number of data points in the range image with polygons that fits the planar regions of the indoor environment resulting in high data compression. The 3D range image is acquired by panning a laser scanner and the data is stored in a 2D array. The elements in the array are stored as spherical coordinates and the indices of the array retain neighborhood information. The array is segmented into small patches and Hessian plane parameters are computed for each planar patch. We propose a Breadth First Search (BFS) graph-search algorithm to compare the plane parameters of neighboring patches and cluster the coplanar patches into respective planes. Experimental result shows 94.67% average compression rate for indoor scans. In addition, the algorithm shows a vast improvement in speed when compared to an improvised region-growing algorithm that extracts polygons from range images.
机译:本文提出了一种新颖的算法,可以聚类平面点并从在室内环境中获取的3D距离图像中提取多边形。该算法用适合室内环境平面区域的多边形替换了距离图像中的大量数据点,从而导致了高数据压缩率。通过平移激光扫描仪来获取3D范围图像,并将数据存储在2D阵列中。数组中的元素存储为球坐标,并且数组的索引保留邻域信息。将该数组分割成小块,并为每个平面块计算Hessian平面参数。我们提出了一种广度优先搜索(BFS)图搜索算法,以比较相邻面片的平面参数并将共面面片聚类到各个平面中。实验结果表明,室内扫描的平均压缩率为94.67%。此外,与从范围图像中提取多边形的简易区域生长算法相比,该算法在速度上有很大提高。

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