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Active Exploration for Unsupervised Object Categorization Based on Multimodal Hierarchical Dirichlet Process

机译:基于多模式分层Dirichlet过程的无监督对象分类主动探索

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This paper describes an effective active exploration method for multimodal object categorization using a multimodal hierarchical Dirichlet process (MHDP). MHDP is a type of multimodal latent variable models, e.g., multimodal latent Dirichlet allocation and multimodal variational autoencoder, that enables a robot to perform unsupervised multimodal object categorization on the basis of different types of sensor information. The goal of the active exploration is to reduce the number of actions executed to collect multimodal sensor information from a variety of objects to acquire knowledge on object categories. The active exploration method employing the information gain (IG) criterion for MHDP is described by extending the IG-based active perception method. Exploiting the submodular property of IG in MHDP, greedy and lazy greedy algorithms with a certain theoretical guarantee of performance are proposed. The effectiveness of the proposed method is evaluated in a robot experiment. Results show that the proposed active exploration method with the greedy algorithm works well, and it significantly reduces the step for exploration. Further, the performance of the lazy greedy algorithm is found to deteriorate at times, due to the estimation error in the IG, differently from that of active perception.
机译:本文介绍了使用多模式分层DireChlet过程(MHDP)的多模式对象分类的有效探索方法。 MHDP是一种类型的多模态潜变量模型,例如,多峰隐含狄利克雷分布和多峰变自动编码器,其使得机器人不同类型的传感器信息的基础上执行的无监督的多峰对象分类。主动探索的目标是减少执行以从各种对象收集多模式传感器信息以获取对象类别的知识的行动次数。通过扩展基于IG的有源感知方法来描述采用MHDP的信息增益(IG)标准的主动探测方法。提出了利用IG中IG的子模具特性,提出了某种理论保证性能的一定的理论保证.PHDP中的IG,贪婪和懒惰的贪婪算法。在机器人实验中评估了所提出的方法的有效性。结果表明,贪婪算法的建议主动探索方法运行良好,显着减少了勘探步骤。此外,由于IG中的估计误差不同,发现惰性贪婪算法的性能有时会劣化,而是与主动感知的估计误差不同。

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