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Self-learning classification of radar features for scene understanding

机译:雷达功能的自学习分类,以了解场景

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摘要

Autonomous driving is a challenging problem in mobile robotics, particularly when the domain is unstructured, as in an outdoor setting. In addition, field scenarios are often characterized by low visibility as well, due to changes in lighting conditions, weather phenomena including fog, rain, snow and hail, or the presence of dust clouds and smoke. Thus, advanced perception systems are primarily required for an off-road robot to sense and understand its environment recognizing artificial and natural structures, topology, vegetation and paths, while ensuring, at the same time, robustness under compromised visibility. In this paper the use of millimeter-wave radar is proposed as a possible solution for all-weather off-road perception. A self-learning approach is developed to train a classifier for radar image interpretation and autonomous navigation. The proposed classifier features two main stages: an adaptive training stage and a classification stage. During the training stage, the system automatically learns to associate the appearance of radar data with class labels. Then, it makes predictions based on past observations. The training set is continuously updated online using the latest radar readings, thus making it feasible to use the system for long range and long duration navigation, over changing environments. Experimental results, obtained with an unmanned ground vehicle operating in a rural environment, are presented to validate this approach. A quantitative comparison with laser data is also included showing good range accuracy and mapping ability as well. Finally, conclusions are drawn on the utility of millimeter-wave radar as a robotic sensor for persistent and accurate perception in natural scenarios.
机译:在移动机器人中,无人驾驶是一个具有挑战性的问题,尤其是在领域是非结构化的情况下,例如在室外环境中。另外,由于照明条件的变化,包括雾,雨,雪和冰雹的天气现象或尘埃云和烟雾的存在,野外场景通常也具有低能见度的特征。因此,越野机器人主要需要先进的感知系统来感知和理解其环境,以识别人造和自然结构,拓扑,植被和路径,同时确保在可见度受损的情况下的鲁棒性。在本文中,建议使用毫米波雷达作为全天候越野感知的可能解决方案。开发了一种自学习方法来训练用于雷达图像解释和自主导航的分类器。提出的分类器具有两个主要阶段:自适应训练阶段和分类阶段。在训练阶段,系统会自动学习将雷达数据的外观与类别标签相关联。然后,它基于过去的观察进行预测。使用最新的雷达读数可连续在线更新训练集,从而使该系统可在不断变化的环境中用于远距离和长时间导航。提出了使用在乡村环境中运行的无人地面车辆获得的实验结果,以验证这种方法。还包括与激光数据的定量比较,显示出良好的测距精度和测绘能力。最后,得出了关于毫米波雷达作为机器人传感器的效用的结论,该传感器可在自然场景中持续且准确地感知。

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