自底向上的,使用原始草图特征和图形模型的自上而下的对象检测

Iasonas Kokkinos, P. Maragos, A. Yuille
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引用次数: 44

摘要

越来越流行的技术组合是使用兴趣点检测器的输出构建基于部件的对象表示。我们在本文中的贡献是双重的:首先,我们提出了一组基于原始草图的图像令牌,用于对象表示和检测。其次,引入了基于有效方法的自顶向下信息,用于评估假设零件位置的可能性。这允许我们使用图形模型技术来补充自下而上的检测,通过提出和找到被前端特征检测阶段遗漏的对象部分。四类目标的检测结果验证了自顶向下和自底向上联合方法的优点。
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Bottom-Up & Top-down Object Detection using Primal Sketch Features and Graphical Models
A combination of techniques that is becoming increasingly popular is the construction of part-based object representations using the outputs of interest-point detectors. Our contributions in this paper are twofold: first, we propose a primal-sketch-based set of image tokens that are used for object representation and detection. Second, top-down information is introduced based on an efficient method for the evaluation of the likelihood of hypothesized part locations. This allows us to use graphical model techniques to complement bottom-up detection, by proposing and finding the parts of the object that were missed by the front-end feature detection stage. Detection results for four object categories validate the merits of this joint top-down and bottom-up approach.
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