语义环境感知、定位与映射

Bjoern Sondermann, J. Rossmann
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引用次数: 1

摘要

对环境的感官获取是移动机器人最重要的任务,因为它是机器人将来具备的任何能力的基础。复杂的任务通常需要一个环境模型来进行路径规划、避障等。此外,机器人需要知道自己在环境中的位置,以便建立、补充和更新模型。因此,除了环境感知之外,定位是移动机器人系统最重要的任务。大多数实现自我定位和绘图的方法都非常具体,要么针对一种传感器类型,要么针对一组严格预定义的传感器,禁止在许多不同的移动系统(机器人、汽车或其他配备传感器的移动平台)上使用所提供的技术。我们提出了一种支持同时使用任意数量和类型的传感器的一般方法。这允许在不改变硬件设置的情况下与各种已经存在的系统一起操作。此外,由我们的解决方案生成的语义环境模型可以直接用于复杂和自动化的环境分析。
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Semantic Environment Perception, Localization and Mapping
The sensory acquisition of the environment is the most important task of mobile robotics, as it is the foundation for any ability that the robot shall have, later on. Sophisticated tasks often require an environment model for path planning,obstacle avoidance and many more. Furthermore, the robot needs to know where it is located within the environment to build-up, complement and update the model. Thus, besides environment perception, localization belongs to the most important tasks of mobile robot systems. Most approaches towards self-localization and mapping are very specific, either to one sensor type, or a strictly predefined set of sensors, prohibiting the use of the provided techniques on many different mobile systems (robots, cars or other moving platforms equipped with sensors). We present a general approach supporting the use of arbitrary numbers and types of sensors simultaneously. This allows to operate with a large variety of already existing systems without changing the hardware setup. Furthermore, the semantic environment model, generated by our solution, can directly be used for sophisticated and automated environment analyses.
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