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Generalized Online Sparse Gaussian Processes with Application to Persistent Mobile Robot Localization

机译:广义在线稀疏高斯过程及其在持久性移动机器人定位中的应用

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This paper presents a novel online sparse Gaussian process (GP) approximation method that is capable of achieving constant time and memory (i.e., independent of the size of the data) per time step. We theoretically guarantee its predictive performance to be equivalent to that of a sophisticated offline sparse GP approximation method. We empirically demonstrate the practical feasibility of using our online sparse GP approximation method through a real-world persistent mobile robot localization experiment.
机译:本文提出了一种新颖的在线稀疏高斯过程(GP)逼近方法,该方法能够实现每个时间步长的恒定时间和内存(即与数据大小无关)。从理论上讲,我们保证其预测性能与复杂的离线稀疏GP近似方法的预测性能相同。我们通过实际的持久性移动机器人本地化实验,通过经验证明了使用在线稀疏GP近似方法的实际可行性。

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