Robust View Based Navigation through View Classification

Amany Azevedo Amin, Efstathios Kagioulis, Norbert Domcsek, P. Graham, T. Nowotny, A. Philippides
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Abstract

—Current implementations of view-based navigation on robots have shown success, but are limited to routes of < 10m [1] [2]. This is in part because current strategies do not take into account whether a view has been correctly recognised, moving in the most familiar direction given by the rotational familiarity function (RFF) regardless of prediction confidence. We demonstrate that it is possible to use the shape of the RFF to classify if the current view is from a known position, and thus likely to provide valid navigational information, or from a position which is unknown , aliased or occluded and therefore likely to result in erroneous movement. Our model could classify these four view types with accuracies of 1.00, 0.91, 0.97 and 0.87 respectively. We hope to use these results to extend online view-based navigation and prevent robot loss in complex environments.
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通过视图分类实现基于视图的鲁棒导航
-目前在机器人上实现的基于视图的导航已经取得了成功,但仅限于< 10m的路线[1][2]。这在一定程度上是因为当前的策略没有考虑到一个视图是否被正确识别,在旋转熟悉度函数(RFF)给出的最熟悉的方向上移动,而不管预测置信度如何。我们证明,可以使用RFF的形状来分类当前视图是来自已知位置,从而可能提供有效的导航信息,还是来自未知、混叠或遮挡的位置,因此可能导致错误的运动。我们的模型可以对这四种视图类型进行分类,准确率分别为1.00、0.91、0.97和0.87。我们希望利用这些结果来扩展基于在线视图的导航,防止机器人在复杂环境中丢失。
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