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Relevance Vector Machine based multi-feature integration for semantic place recogntion

机译:基于关联向量机的语义集成多特征集成

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In order to work in realistic scenarios, it is a desirable feature for autonomous robots to extract semantic concepts from environments. In this paper, A Relevance Vector Machine (RVM) based approach is presented for the task of visual semantic place recognition. The high sparsity and Bayesian property makes this approach capable of obtaining probabilistic confidence estimation, and computationally efficient during the online prediction stage. Meanwhile, in order to take advantage of discriminative powers of different feature descriptors, a multiple kernel technique is introduced in our system, resulting in a very flexible model where arbitrary feature descriptors can be integrated smoothly. In this paper we choose three popular descriptors for our implementation. Experiments carried out on real typical office environment datasets show the feasibility and robustness of our approach.
机译:为了在现实场景中工作,自主机器人从环境中提取语义概念是一个理想的功能。本文针对视觉语义位置识别的任务,提出了一种基于相关向量机的方法。高稀疏性和贝叶斯属性使该方法能够获得概率置信度估计,并且在在线预测阶段具有较高的计算效率。同时,为了利用不同特征描述符的判别能力,在我们的系统中引入了多核技术,从而形成了一个非常灵活的模型,可以任意集成任意特征描述符。在本文中,我们为实现选择了三个流行的描述符。在真实的典型办公环境数据集上进行的实验表明了我们方法的可行性和鲁棒性。

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