基于机器学习的非结构化环境中导航3D目标检测

G. Nikolovski, Michael Reke, I. Elsen, S. Schiffer
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引用次数: 2

摘要

在本文中,我们研究了在不常见的非结构化环境(如露天矿)中使用深度神经网络进行三维目标检测。虽然神经网络经常用于常规自动驾驶应用中的目标检测,但除了街道交通之外,更不寻常的驾驶场景带来了额外的挑战。首先,收集合适的数据集来训练网络是一个问题。另一方面,测试经过训练的网络的性能通常还需要与特定领域进行量身定制的集成。虽然在常规自动驾驶中存在不同的解决方案,但只有很少的方法适用于特殊领域。我们在这项工作中解决了上述两个挑战。首先,我们讨论了两种可能的获取训练和评估数据的方法。也就是说,我们评估记录的激光雷达数据的半自动注释,并检查合成数据的生成。利用这些数据集,我们训练和测试了不同的深度神经网络来完成目标检测任务。其次,我们提出了一种可能集成ROS2检测器模块的自动驾驶平台。最后,我们展示了三个最先进的深度神经网络在三维物体检测领域的性能,其中一个是合成数据集,另一个是包含露天矿特征物体的较小的数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning based 3D object detection for navigation in unstructured environments
In this paper we investigate the use of deep neural networks for 3D object detection in uncommon, unstructured environments such as in an open-pit mine. While neural nets are frequently used for object detection in regular autonomous driving applications, more unusual driving scenarios aside street traffic pose additional challenges. For one, the collection of appropriate data sets to train the networks is an issue. For another, testing the performance of trained networks often requires tailored integration with the particular domain as well. While there exist different solutions for these problems in regular autonomous driving, there are only very few approaches that work for special domains just as well. We address both the challenges above in this work. First, we discuss two possible ways of acquiring data for training and evaluation. That is, we evaluate a semi-automated annotation of recorded LIDAR data and we examine synthetic data generation. Using these datasets we train and test different deep neural network for the task of object detection. Second, we propose a possible integration of a ROS2 detector module for an autonomous driving platform. Finally, we present the performance of three state-of-the-art deep neural networks in the domain of 3D object detection on a synthetic dataset and a smaller one containing a characteristic object from an open-pit mine.
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