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Arena-Web -- A Web-based Development and Benchmarking Platform for Autonomous Navigation Approaches

Linh Kästner, Reyk Carstens, Christopher Liebig, Volodymyr Shcherbyna, Lena Nahrworld, Subhin Lee, Jens Lambrecht

发表年份
2023
访问权限
开放获取

摘要

In recent years, mobile robot navigation approaches have become increasingly important due to various application areas ranging from healthcare to warehouse logistics. In particular, Deep Reinforcement Learning approaches have gained popularity for robot navigation but are not easily accessible to non-experts and complex to develop. In recent years, efforts have been made to make these sophisticated approaches accessible to a wider audience. In this paper, we present Arena-Web, a web-based development and evaluation suite for developing, training, and testing DRL-based navigation planners for various robotic platforms and scenarios. The interface is designed to be intuitive and engaging to appeal to non-experts and make the technology accessible to a wider audience. With Arena-Web and its interface, training and developing Deep Reinforcement Learning agents is simplified and made easy without a single line of code. The web-app is free to use and openly available under the link stated in the supplementary materials.

关键词

cs.ROcs.AIcs.HCcs.LG

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