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Model-based segmentation and estimation of 3D surfaces from two or more intensity images using Markov random fields

机译:使用马尔可夫随机场从两个或多个强度图像进行基于模型的分割和3D表面估计

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An approach and algorithm for 3D primitive model recognition, parameter estimation, and segmentation from a sequence of images taken by one or more calibrated cameras are presented. Though the approach and algorithm are applicable to more general models, the experiments described are for primitive objects that are 3D planes. Given two or more images taken by one or more calibrated cameras, the algorithm simultaneously segments the images and 3D space into regions, each region associated with a single planar patch, and estimates the parameters of the 3D plane associated with each segmented region. The algorithm is suitable for parallel processing and should function at close to the best possible accuracy. Markov random fields are used to provide very coarse prior knowledge of the regions occupied by the planar patches, resulting in markedly enhanced accuracy.
机译:提出了一种方法和算法,用于从一个或多个已校准相机拍摄的一系列图像中进行3D基本模型识别,参数估计和分割。尽管该方法和算法适用于更通用的模型,但所描述的实验是针对3D平面的原始对象的。给定一个或多个校准相机拍摄的两个或更多图像,该算法将图像和3D空间同时分割为多个区域,每个区域与一个平面斑块相关联,并估计与每个分割区域相关联的3D平面的参数。该算法适用于并行处理,并且应以接近最佳可能精度的方式运行。马尔可夫随机场用于提供有关平面斑块占据的区域的非常粗略的先验知识,从而显着提高了准确性。

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