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Automatic segmentation of plant point cloud from Multi-view stereo

机译:从多视图立体声自动分割植物点云的分割

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In this paper, a method for automatic segmentation of plant point cloud is proposed. We get the quasi-dense point cloud of plant from Multi-view stereo reconstruction based on surface expansion. The Adaptive Normalized Cross-Correlation algorithm is used as matching cost to match points of interest in two images, which is robust to radiometric factors and can reduce the fattening effect of boundaries. An efficient segmentation framework is proposed to segment plant from background. After oversegmenting the input point cloud, we extract the 3D feature for each segment and calculate conditional label probabilities using a Random Forest classifier. The out of the classifier is to initialize the unary potentials of a dense CRF whose optimization yields the final labeling. A highly efficient approximate inference algorithm based on mean field approximation is applied to the dense CRF models, in which the pairwise edge potentials are defined by Gaussian kernel. Experimental results show that our segmentation framework based on dense CRF can separate plant from background effectively.
机译:本文提出了一种用于植物点云的自动分割方法。基于表面膨胀,从多视图立体声重建获得拟密集点云。自适应归一化的互相关算法用作匹配的两种图像中匹配感兴趣点,这对于辐射尺寸是鲁棒性,并且可以降低边界的肥育效果。提出了一种高效的分割框架,从背景中分段。在覆盖输入点云之后,我们利用随机林分类器提取每个段的3D功能并计算条件标签概率。分类器中的超出了初始化了致密CRF的一元潜力,其优化产生了最终标记。基于平均场近似的高效近似推理算法应用于密集CRF模型,其中成对边缘电位由高斯内核定义。实验结果表明,我们基于密集CRF的分割框架可以有效地将植物分离。

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