自动驾驶中运动启发的无监督感知和预测

Mahyar Najibi, Jingwei Ji, Yin Zhou, C. Qi, Xinchen Yan, S. Ettinger, Drago Anguelov
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引用次数: 17

摘要

现代自动驾驶系统中基于学习的感知和预测模块通常依赖于昂贵的人工注释,并且只能感知少数预定义的对象类别。这种闭集范式不足以满足安全关键型自动驾驶任务,因为自动驾驶车辆需要在高度动态的世界中处理任意多种类型的交通参与者及其运动行为。为了解决这一困难,本文开创了一个新颖而具有挑战性的方向,即训练感知和预测模型来理解开放集运动物体,而无需人工监督。我们提出的框架使用自学习流来触发自动元标记管道,以实现自动监督。在Waymo开放数据集上的3D检测实验表明,我们的方法明显优于经典的无监督方法,甚至可以与有监督的场景流相媲美。我们进一步表明,我们的方法在开放集3D检测和轨迹预测方面产生了非常有希望的结果,证实了它在缩小完全监督系统的安全差距方面的潜力。
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Motion Inspired Unsupervised Perception and Prediction in Autonomous Driving
Learning-based perception and prediction modules in modern autonomous driving systems typically rely on expensive human annotation and are designed to perceive only a handful of predefined object categories. This closed-set paradigm is insufficient for the safety-critical autonomous driving task, where the autonomous vehicle needs to process arbitrarily many types of traffic participants and their motion behaviors in a highly dynamic world. To address this difficulty, this paper pioneers a novel and challenging direction, i.e., training perception and prediction models to understand open-set moving objects, with no human supervision. Our proposed framework uses self-learned flow to trigger an automated meta labeling pipeline to achieve automatic supervision. 3D detection experiments on the Waymo Open Dataset show that our method significantly outperforms classical unsupervised approaches and is even competitive to the counterpart with supervised scene flow. We further show that our approach generates highly promising results in open-set 3D detection and trajectory prediction, confirming its potential in closing the safety gap of fully supervised systems.
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