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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Local-LDA: Open-Ended Learning of Latent Topics for 3D Object Recognition
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Local-LDA: Open-Ended Learning of Latent Topics for 3D Object Recognition

机译:Local-LDA:3D对象识别的潜在主题的开放式学习

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摘要

Service robots are expected to be more autonomous and work effectively in human-centric environments. This implies that robots should have special capabilities, such as learning from past experiences and real-time object category recognition. This paper proposes an open-ended 3D object recognition system which concurrently learns both the object categories and the statistical features for encoding objects. In particular, we propose an extension of Latent Dirichlet Allocation to learn structural semantic features (i.e., visual topics), from low-level feature co-occurrences, for each category independently. Moreover, topics in each category are discovered in an unsupervised fashion and are updated incrementally using new object views. In this way, the advantages of both the (hand-crafted) local features and the (learned) structural semantic features have been considered and combined in an efficient way. An extensive set of experiments has been performed to assess the performance of the proposed Local-LDA in terms of descriptiveness, scalability, and computation time. Experimental results show that the overall classification performance obtained with Local-LDA is clearly better than the best performances obtained with the state-of-the-art approaches. Moreover, the best scalability, in terms of number of learned categories, was obtained with the proposed Local-LDA approach, closely followed by a Bag-of-Words (BoW) approach. Concerning computation time, the best result was obtained with BoW, immediately followed by the Local-LDA approach.
机译:预计服务机器人将更加自主,在以人为本的环境中有效地工作。这意味着机器人应该具有特殊能力,例如从过去的经验和实时对象类别识别中学习。本文提出了一个开放式3D对象识别系统,其同时学习对象类别和用于编码对象的统计功能。特别是,我们提出了潜在的Dirichlet分配的扩展,以便从低级特征共同发生,从低级功能共同发生,从而为每个类别学习结构语义特征(即视觉主题)。此外,每个类别中的主题以无监督的方式发现,并使用新的对象视图逐步更新。以这种方式,已经考虑了(手工制作)局部特征和(学习)结构语义特征的优点并以有效的方式组合。已经进行了广泛的实验,以评估所提出的本地LDA在描述性,可扩展性和计算时间方面的性能。实验结果表明,当地LDA获得的整体分类性能明显优于使用最先进的方法获得的最佳表现。此外,通过所提出的本地-LDA方法获得最佳可扩展性,就拟议的本地LDA方法而获得,紧随其后的袋式(弓)方法。关于计算时间,用弓获得最佳结果,然后立即接下来是本地-LDA方法。

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