A dataset for audio-video based vehicle speed estimation

Slobodan Djukanovic, Nikola Bulatovic, Ivana Cavor
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引用次数: 4

Abstract

Accurate speed estimation of road vehicles is important for several reasons. One is speed limit enforcement, which represents a crucial tool in decreasing traffic accidents and fatalities. Compared with other research areas and domains, the number of available datasets for vehicle speed estimation is still very limited. We present a dataset of on-road audio-video recordings of single vehicles passing by a camera at known speeds, maintained stable by the on-board cruise control. The dataset contains thirteen vehicles, selected to be as diverse as possible in terms of manufacturer, production year, engine type, power and transmission, resulting in a total of 400 annotated audio-video recordings. The dataset is fully available and intended as a public benchmark to facilitate research in audio-video vehicle speed estimation. In addition to the dataset, we propose a cross-validation strategy which can be used in a machine learning model for vehicle speed estimation. Two approaches to training-validation split of the dataset are proposed.
基于音频视频的车速估算数据集
出于几个原因,对道路车辆进行准确的速度估算非常重要。其一是限速执法,它是减少交通事故和死亡人数的重要工具。与其他研究领域和领域相比,用于车辆速度估计的可用数据集数量仍然非常有限。我们介绍的数据集是单个车辆以已知速度通过摄像头时的路面音频视频记录,车载巡航控制系统保持车速稳定。数据集包含 13 辆车,这些车辆在制造商、生产年份、发动机类型、功率和变速箱方面尽可能多样化,因此总共有 400 条带注释的音频视频记录。该数据集完全可用,旨在作为公共基准,促进音频视频车辆速度估算方面的研究。除了数据集之外,我们还提出了一种交叉验证策略,可用于车速估算的机器学习模型。我们提出了两种对数据集进行训练-验证分割的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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