This article presents a synthetic distracted driving (SynDD1) dataset for machine learning models to detect and analyze drivers' various distracted behavior and different gaze zones. We collected the data in a stationary vehicle using three in-vehicle cameras positioned at locations: on the dashboard, near the rearview mirror, and on the top right-side window corner. The dataset contains two activity types: distracted activities, and gaze zones for each participant and each activity type has two sets: without appearance blocks and with appearance blocks such as wearing a hat or sunglasses. The order and duration of each activity for each participant are random. In addition, the dataset contains manual annotations for each activity, having its start and end time annotated. Researchers could use this dataset to evaluate the performance of machine learning algorithms for the classification of various distracting activities and gaze zones of drivers.
翻译:本篇文章为机器学习模型提供了一个合成分心驱动(SynDD1)数据集,用于检测和分析司机的各种分心行为和不同的凝视区。我们用固定车辆中的数据收集工作使用了设在地点的三个车辆内摄像头:仪表板上、后视镜附近和右上侧窗口角。该数据集包含两种活动类型:分散活动,每个参与者和每个活动类型的凝视区有两套:没有外观区块,外观区块,如戴帽子或太阳眼镜。每个参与者的每项活动的顺序和持续时间是随机的。此外,数据集包含每项活动的手工说明,并附有开始和结束时间说明。研究人员可以使用这一数据集评估各种分散活动分类和司机凝视区的机器学习算法的性能。