Autonomous Vehicle (AV) perception systems have advanced rapidly in recent years, providing vehicles with the ability to accurately interpret their environment. Perception systems remain susceptible to errors caused by overly-confident predictions in the case of rare events or out-of-sample data. This study equips an autonomous vehicle with the ability to 'know when it is uncertain', using an uncertainty-aware image classifier as part of the AV software stack. Specifically, the study exploits the ability of Random-Set Neural Networks (RS-NNs) to explicitly quantify prediction uncertainty. Unlike traditional CNNs or Bayesian methods, RS-NNs predict belief functions over sets of classes, allowing the system to identify and signal uncertainty clearly in novel or ambiguous scenarios. The system is tested in a real-world autonomous racing vehicle software stack, with the RS-NN classifying the layout of the road ahead and providing the associated uncertainty of the prediction. Performance of the RS-NN under a range of road conditions is compared against traditional CNN and Bayesian neural networks, with the RS-NN achieving significantly higher accuracy and superior uncertainty calibration. This integration of RS-NNs into Robot Operating System (ROS)-based vehicle control pipeline demonstrates that predictive uncertainty can dynamically modulate vehicle speed, maintaining high-speed performance under confident predictions while proactively improving safety through speed reductions in uncertain scenarios. These results demonstrate the potential of uncertainty-aware neural networks - in particular RS-NNs - as a practical solution for safer and more robust autonomous driving.
翻译:近年来,自动驾驶车辆(AV)感知系统发展迅速,使车辆能够准确解读周围环境。然而,在罕见事件或样本外数据情况下,感知系统仍容易因过度自信的预测而产生错误。本研究通过将不确定性感知图像分类器作为自动驾驶软件栈的一部分,赋予自动驾驶车辆“知晓自身不确定性”的能力。具体而言,该研究利用随机集神经网络(RS-NNs)显式量化预测不确定性的能力。与传统CNN或贝叶斯方法不同,RS-NNs预测类别集合上的置信函数,使系统能够在新颖或模糊场景中清晰识别并标示不确定性。该系统在真实世界自动驾驶赛车软件栈中进行了测试,RS-NN负责对前方道路布局进行分类并提供预测的关联不确定性。研究比较了RS-NN在不同道路条件下的性能与传统CNN及贝叶斯神经网络的差异,结果显示RS-NN实现了显著更高的准确率和更优的不确定性校准。将RS-NNs集成至基于机器人操作系统(ROS)的车辆控制流程表明,预测不确定性可以动态调节车速:在置信预测下保持高速性能,同时在不确定场景中通过主动降速提升安全性。这些结果证明了不确定性感知神经网络——特别是RS-NNs——作为实现更安全、更鲁棒的自动驾驶的实用解决方案的潜力。