We introduce a new type of autonomous vehicle - an autonomous dozer that is expected to complete construction site tasks in an efficient, robust, and safe manner. To better handle the path planning for the dozer and ensure construction site safety, object detection plays one of the most critical components among perception tasks. In this work, we first collect the construction site data by driving around our dozers. Then we analyze the data thoroughly to understand its distribution. Finally, two well-known object detection models are trained, and their performances are benchmarked with a wide range of training strategies and hyperparameters.
翻译:我们引入了新型的自主车辆,即一个自主的多泽,预计它将以高效、稳健和安全的方式完成建筑工地任务。为了更好地处理多泽的路径规划并确保建筑工地的安全,物体探测是感知任务中最重要的组成部分之一。在这项工作中,我们首先通过驾驶我们的多泽来收集建筑工地数据。然后我们透彻分析数据以了解其分布情况。最后,对两个众所周知的物体探测模型进行了培训,其性能以广泛的培训战略和超参数作为基准。