FLIC: Fast Lidar Image Clustering

Frederik Hasecke, Lukas Hahn, A. Kummert
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引用次数: 9

Abstract

Lidar sensors are widely used in various applications, ranging from scientific fields over industrial use to integration in consumer products. With an ever growing number of different driver assistance systems, they have been introduced to automotive series production in recent years and are considered an important building block for the practical realisation of autonomous driving. However, due to the potentially large amount of Lidar points per scan, tailored algorithms are required to identify objects (e.g. pedestrians or vehicles) with high precision in a very short time. In this work, we propose an algorithmic approach for real-time instance segmentation of Lidar sensor data. We show how our method leverages the properties of the Euclidean distance to retain three-dimensional measurement information, while being narrowed down to a two-dimensional representation for fast computation. We further introduce what we call "skip connections", to make our approach robust against over-segmentation and improve assignment in cases of partial occlusion. Through detailed evaluation on public data and comparison with established methods, we show how these aspects enable state-of-the-art performance and runtime on a single CPU core.
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快速激光雷达图像聚类
激光雷达传感器广泛应用于各种应用,从科学领域的工业应用到消费产品的集成。随着不同驾驶辅助系统的数量不断增加,近年来它们已被引入汽车批量生产,并被认为是实际实现自动驾驶的重要组成部分。然而,由于每次扫描可能需要大量的激光雷达点,因此需要定制算法来在很短的时间内高精度地识别物体(例如行人或车辆)。在这项工作中,我们提出了一种激光雷达传感器数据的实时实例分割算法。我们展示了我们的方法如何利用欧几里得距离的属性来保留三维测量信息,同时被缩小到二维表示以进行快速计算。我们进一步引入了我们所谓的“跳过连接”,使我们的方法对过度分割具有鲁棒性,并改善了部分遮挡情况下的分配。通过对公开数据的详细评估以及与现有方法的比较,我们展示了这些方面如何在单个CPU核心上实现最先进的性能和运行时。
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