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Improving the robustness of naive physics airflow mapping, using Bayesian reasoning on a multiple hypothesis tree

机译:使用多重假设树上的贝叶斯推理提高天真物理学气流映射的鲁棒性

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Previous work on robotic odour localisation in enclosed environments, relying on an airflow model, has faced significant limitations due to the fact that large differences between airflow topologies are predicted for only small variations in a physical map. This is due to uncertainties in the map and approximations in the modelling process. Furthermore, there are uncertainties regarding the flow direction through inlet/outlet ducts. We present a method for dealing with these uncertainties through the generation of multiple airflow hypotheses. As the robot performs odour localisation, airflow in the environment is measured and used to adjust the confidences of the hypotheses using Bayesian inference. The best hypothesis is then selected, which allows the completion of the localisation task. Experimental results show that this method is capable of improving the robustness of odour localisation in the presence of uncertainties, where previously it was incapable. The results further demonstrate the usefulness of naive physics for practical robotics applications.
机译:先前关于封闭环境中机器人气味定位的工作,依赖于气流模型,由于在物理图谱中仅针对很小的变化就可以预测气流拓扑之间的巨大差异,因此面临着重大的局限性。这是由于地图中的不确定性以及建模过程中的近似值所致。此外,关于通过入口/出口管道的流动方向存在不确定性。我们提出了一种通过产生多个气流假设来处理这些不确定性的方法。当机器人执行气味定位时,将测量环境中的气流,并使用贝叶斯推理将其用于调整假设的置信度。然后选择最佳假设,从而可以完成定位任务。实验结果表明,该方法在存在不确定性的情况下能够提高气味定位的鲁棒性,而以前是无法做到的。结果进一步证明了朴素物理学对于实际机器人应用的有用性。

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