论文标题

基于2D激光传感器观察的想象力的导航

Imagination-augmented Navigation Based on 2D Laser Sensor Observations

论文作者

Shen, Zhengcheng, Kästner, Linh, Yordanova, Magdalena, Lambrecht, Jens

论文摘要

移动机器人的自主导航是各个行业的重要任务。传感器数据对于确保安全可靠的导航至关重要。但是,传感器观察通常受到不同因素的限制。想象力可以帮助在只有有限的传感器观察的危险或未知情况下增强视图和帮助导航。在本文中,我们提出了基于2D语义激光扫描数据的想象增强导航。该系统包含一个想象模块,该模块可以预测对象的整个占用区域。使用2D模拟器收集的训练数据集以监督方式训练想象模块。训练了四个不同的想象模型,并评估了想象结果。随后,将想象结果集成到本地和全球成本图中,以使导航程序受益。该方法在三个不同的测试图上进行了验证,每个地图都有七个不同的路径。质量和数字结果表明,具有想象力模块的试剂可以生成更可靠的路径,而无需经过对象下方,其成本更长,速度较慢。

Autonomous navigation of mobile robots is an essential task for various industries. Sensor data is crucial to ensure safe and reliable navigation. However, sensor observations are often limited by different factors. Imagination can assist to enhance the view and aid navigation in dangerous or unknown situations where only limited sensor observation is available. In this paper, we propose an imagination-enhanced navigation based on 2D semantic laser scan data. The system contains an imagination module, which can predict the entire occupied area of the object. The imagination module is trained in a supervised manner using a collected training dataset from a 2D simulator. Four different imagination models are trained, and the imagination results are evaluated. Subsequently, the imagination results are integrated into the local and global cost map to benefit the navigation procedure. The approach is validated on three different test maps, with seven different paths for each map. The quality and numeric results showed that the agent with the imagination module could generate more reliable paths without passing beneath the object, with the cost of a longer path and slower velocity.

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