单眼三维目标检测的高效主动学习策略

A. Hekimoglu, Michael Schmidt, Alvaro Marcos-Ramiro, G. Rigoll
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引用次数: 6

摘要

处理摄像头信息以感知周围的3D环境对于构建可扩展的自动驾驶汽车至关重要。对于这个任务,深度学习网络提供了有效的实时解决方案。然而,与激光雷达相比,为了弥补相机中缺失的深度信息,需要大量的标记数据进行训练。主动学习是一种训练框架,网络主动参与数据选择过程,以提高数据效率和性能。在这项工作中,我们提出了一个主动学习管道,用于从单眼图像中检测3D物体。该方法的主要组成部分是:(1)两种训练效率高的不确定性估计策略,(2)一种基于多样性的选择策略,用于选择包含最多样化对象集的图像,(3)一种更适合训练自动驾驶感知网络的新型主动学习策略。实验表明,结合我们提出的不确定性估计方法可以提供更好的数据节省率,并达到比基线更高的最终性能。此外,我们通过实证证明了所提出的基于多样性的选择策略的性能增益和所提出的主动学习策略的效率。
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Efficient Active Learning Strategies for Monocular 3D Object Detection
Processing camera information to perceive their 3D surrounding is essential for building scalable autonomous driving vehicles. For this task, deep learning networks provide effective real-time solutions. However, to compensate for missing depth information in cameras compared to LiDARs, a large amount of labeled data is required for training. Active learning is a training framework where the network actively participates in the data selection process to improve data efficiency and performance. In this work, we propose an active learning pipeline for 3D object detection from monocular images. The main components of our approach are (1) two training-efficient uncertainty estimation strategies, (2) a diversity-based selection strategy to select images that contain the most diverse set of objects, (3) a novel active learning strategy more suitable for training autonomous driving perception networks. Experiments show that combining our proposed uncertainty estimation methods provides a better data saving rate and reaches a higher final performance than baselines. Furthermore, we empirically show performance gains of the presented diversity-based selection strategy and the efficiency of the proposed active learning strategy.
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