发现驾驶模式的轨迹注释

Sobhan Moosavi, Behrooz Omidvar-Tehrani, R. Ramnath
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引用次数: 10

摘要

无处不在、种类繁多的传感器使得收集大量的汽车轨迹数据集成为可能,使分析人员能够理解驾驶模式和行为。获得驾驶行为的一种方法是将轨迹分解为其潜在模式,然后分析这些模式(也称为分割)。为了验证和改进自动轨迹分割算法,至关重要的是需要一个基本事实来比较算法的结果。据我们所知,目前还没有这种公开的汽车轨迹注释的基本事实。在本文中,我们引入了一个轨迹标注框架,并使用它来标注一个真实的个人汽车轨迹数据集。我们的注释方法包括一个众包步骤,然后是一个精确的专家聚集过程。我们的注释识别段边界,然后用它的类型标记段(例如加速,转弯,合并等)。我们项目的输出是一个带注释的汽车轨迹数据集(DACT),并在https://goo.gl/XgsxyJ上公开供时空研究界使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory Annotation by Discovering Driving Patterns
The ubiquity and variety of available sensors has enabled the collection of voluminous datasets of car trajectories that enable analysts to make sense of driving patterns and behaviors. One approach to obtain driving behaviors is to break a trajectory into its underlying patterns and then analyze these patterns (aka segmentation). To validate and improve automated trajectory segmentation algorithms, there is a crucial need for a ground-truth against which to compare the results of the algorithms. To the best of our knowledge, no such publicly available ground-truth of car trajectory annotations exists. In this paper, we introduce a trajectory annotation framework and use it to annotate a real-world dataset of personal car trajectories. Our annotation methodology consists of a crowd-sourcing step followed by a precise process of expert aggregation. Our annotation identifies segment borders, and then labels the segment with its type (e.g. speed-up, turn, merge, etc.). The output of our project is a dataset of annotated car trajectories (DACT), and is publicly available for use by the spatiotemporal research community at https://goo.gl/XgsxyJ.
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