首页> 外文会议>Asian Conference on Computer Vision(ACCV 2006) pt.2; 20060113-16; Hyderabad(IN) >Aspects of Optimal Viewpoint Selection and Viewpoint Fusion
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Aspects of Optimal Viewpoint Selection and Viewpoint Fusion

机译:最佳视点选择和视点融合的方面

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摘要

In the past decades, most object recognition systems were based on passive approaches. But in the last few years a lot of research was done in the field of active object recognition. In this context, there are several unique problems to be solved, such as the fusion of views and the selection of an optimal next viewpoint. In this paper we present an approach to solve the problem of choosing optimal views (viewpoint selection) and the fusion of these for an optimal 3D object recognition (viewpoint fusion). We formally define the selection of additional views as an optimization problem and we show how to use reinforcement learning for viewpoint training and selection in continuous state spaces without user interaction. In this context we focus on the modeling of the reinforcement learning reward. We also present an approach for the fusion of multiple views based on density propagation, and discuss the advantages and disadvantages of two approaches for the practical evaluation of these densities, namely Parzen estimation and density trees.
机译:在过去的几十年中,大多数对象识别系统都是基于被动方法的。但是在最近几年中,在主动对象识别领域进行了大量研究。在这种情况下,有几个独特的问题需要解决,例如视图融合和最佳下一个视点的选择。在本文中,我们提出一种方法来解决选择最佳视图(视点选择)以及将其融合以实现最佳3D对象识别(视点融合)的问题。我们正式将其他视图的选择定义为一个优化问题,并且展示了如何在没有用户交互的情况下,将强化学习用于连续状态空间中的视点训练和选择。在这种情况下,我们专注于强化学习奖励的建模。我们还提出了一种基于密度传播的多视图融合方法,并讨论了实际评估这些密度的两种方法的优缺点,即Parzen估计和密度树。

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