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Building beliefs: Unsupervised generation of observation likelihoods for probabilistic localization in changing environments

机译:建立信念:在不断变化的环境中无监督地观察概率的概率定位

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This paper is concerned with the interpretation of visual information for robot localization. It presents a probabilistic localization system that generates an appropriate observation model online, unlike existing systems which require pre-determined belief models. This paper proposes that probabilistic visual localization requires two major operating modes - one to match locations under similar conditions and the other to match locations under different conditions. We develop dual observation likelihood models to suit these two different states, along with a similarity measure-based method that identifies the current conditions and switches between the models. The system is experimentally tested against different types of ongoing appearance change. The results demonstrate that the system is compatible with a wide range of visual front-ends, and the dual-model system outperforms a single-model or pre-trained approach and state-of-the-art localization techniques.
机译:本文涉及用于机器人定位的视觉信息的解释。它提出了一个概率本地化系统,该系统可以在线生成适当的观察模型,这与需要预定信念模型的现有系统不同。本文提出概率视觉定位需要两种主要的操作模式-一种是在相似条件下匹配位置,另一种是在不同条件下匹配位置。我们开发了适用于这两种不同状态的双重观测似然模型,以及一种基于相似性度量的方法,该方法可识别当前状况并在模型之间进行切换。该系统针对不同类型的持续外观变化进行了实验测试。结果表明,该系统与广泛的视觉前端兼容,并且双模型系统的性能优于单模型或预先训练的方法和最新的定位技术。

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