户外障碍物检测的主动学习

C. Dima, M. Hebert
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引用次数: 23

摘要

移动机器人的实际应用需要更多的自主性,需要可靠的感知系统。由于手动调整感知算法难以适应新的操作环境,因此基于监督学习的系统对于自主导航的未来发展是必要的。当监督学习应用于现实机器人应用中的大规模问题时,数据标记是一个主要问题。我们认为自动选择重要数据进行标记的算法是必要的,并建议采用主动学习技术来减少从数据集中学习所需的标记量。在本文中,我们展示了几种标准的主动学习算法可以适应我们领域的特定约束特征,例如需要从具有严重不平衡类先验的数据中学习。我们通过在机器人车辆捕获的多个真实数据集上进行广泛的实验来验证我们提出的解决方案。基于我们对障碍物检测任务的研究结果,我们得出结论,主动学习技术适用于我们的领域,它们可以显著减少在户外感知中使用监督学习所需的标记工作。
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Active Learning For Outdoor Obstacle Detection
Real-world applications of mobile robotics call for increased autonomy, requiring reliable perception systems. Since manually tuned perception algorithms are difficult to adapt to new operating environments, systems based on supervised learning are necessary for future progress in autonomous navigation. Data labeling is a major concern when supervised learning is applied to the large-scale problems occuring in realistic robotics applications. We believe that algorithms for automatically selecting important data for labeling are necessary, and propose to employ active learning techniques to reduce the amount of labeling required to learn from a data set. In this paper we show that several standard active learning algorithms can be adapted to meet specific constraints characteristic to our domain, such as the need to learn from data with severely unbalanced class priors. We validate the solutions we propose by extensive experimentation on multiple realistic data sets captured with a robotic vehicle. Based on our results for the task of obstacle detection, we conclude that active learning techniques are applicable to our domain, and they can lead to significant reductions in the labeling effort required to use supervised learning in outdoor perception.
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