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A Bayesian, Exemplar-Based Approach to Hierarchical Shape Matching

机译:基于贝叶斯,基于示例的层次形状匹配方法

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摘要

This paper presents a novel probabilistic approach to hierarchical, exemplar-based shape matching. No feature correspondence is needed among exemplars, just a suitable pairwise similarity measure. The approach uses a template tree to efficiently represent and match the variety of shape exemplars. The tree is generated offline by a bottom-up clustering approach using stochastic optimization. Online matching involves a simultaneous coarse-to-fine approach over the template tree and over the transformation parameters. The main contribution of this paper is a Bayesian model to estimate the a posteriori probability of the object class, after a certain match at a node of the tree. This model takes into account object scale and saliency and allows for a principled setting of the matching thresholds such that unpromising paths in the tree traversal process are eliminated early on. The proposed approach was tested in a variety of application domains. Here, results are presented on one of the more challenging domains: real-time pedestrian detection from a moving vehicle. A significant speed-up is obtained when comparing the proposed probabilistic matching approach with a manually tuned nonprobabilistic variant, both utilizing the same template tree structure.
机译:本文提出了一种新的概率方法,用于基于示例的分层形状匹配。样本之间不需要特征对应,仅需要合适的成对相似度度量即可。该方法使用模板树来有效地表示和匹配各种形状示例。该树是使用随机优化通过自底向上的聚类方法脱机生成的。在线匹配涉及在模板树和转换参数上同时进行从粗到细的方法。本文的主要贡献是在树的某个节点进行一定匹配之后,估计对象类别的后验概率的贝叶斯模型。该模型考虑了对象的规模和显着性,并允许对匹配阈值进行原则性设置,以便在树的遍历过程中尽早消除无用的路径。所提出的方法已在各种应用领域中进行了测试。在这里,结果呈现在更具挑战性的领域之一上:来自行驶中车辆的实时行人检测。将提议的概率匹配方法与手动调整的非概率变量进行比较时,可以显着提高速度,这两种方法均使用相同的模板树结构。

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