3D Data Segmentation by Local Classification and Markov Random Fields

Federico Tombari, L. D. Stefano
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引用次数: 18

Abstract

Object segmentation in 3D data such as 3D meshes and range maps is an emerging topic attracting increasing research interest. This work proposes a novel method to perform segmentation relying on the use of 3D features. The deployment of a specific grouping algorithm based on a Markov Random Field model successively to classification allows at the same time yielding automatic segmentation of 3D data as well as deploying non-linear classifiers that can well adapt to the data characteristics. Moreover, we embed our approach in a framework that jointly exploits shape and texture information to improve the outcome of the segmentation stage. In addition to quantitative results on several 3D and 2.5D scenes, we also demonstrate the effectiveness of our approach on an online framework based on a stereo sensor.
基于局部分类和马尔可夫随机场的三维数据分割
三维网格和距离图等三维数据中的目标分割是一个新兴的研究课题。这项工作提出了一种新的方法来执行分割依赖于使用三维特征。将基于马尔可夫随机场模型的特定分组算法先后部署到分类中,可以同时对三维数据进行自动分割,并部署能够很好地适应数据特征的非线性分类器。此外,我们将我们的方法嵌入到一个框架中,该框架共同利用形状和纹理信息来改善分割阶段的结果。除了在几个3D和2.5D场景上的定量结果外,我们还证明了我们的方法在基于立体传感器的在线框架上的有效性。
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