For autonomous navigation and robotic applications, sensing the environment correctly is crucial. Many sensing modalities for this purpose exist. In recent years, one such modality that is being used is in-air imaging sonar. It is ideal in complex environments with rough conditions such as dust or fog. However, like with most sensing modalities, to sense the full environment around the mobile platform, multiple such sensors are needed to capture the full 360-degree range. Currently the processing algorithms used to create this data are insufficient to do so for multiple sensors at a reasonably fast update rate. Furthermore, a flexible and robust framework is needed to easily implement multiple imaging sonar sensors into any setup and serve multiple application types for the data. In this paper we present a sensor network framework designed for this novel sensing modality. Furthermore, an implementation of the processing algorithm on a Graphics Processing Unit is proposed to potentially decrease the computing time to allow for real-time processing of one or more imaging sonar sensors at a sufficiently high update rate.
翻译:对于自主导航和机器人应用来说,正确感测环境是关键。为此目的,存在许多感测方式。近年来,正在使用的这种方式之一是空气成像声纳。在灰尘或雾等恶劣条件下的复杂环境中,这是理想的。然而,与大多数感测方式一样,为了感知移动平台周围的整个环境,需要多种感应器来捕捉整个360度范围。目前,用于生成这些数据的处理算法不足以以合理的快速更新速度对多个感应器进行实时处理。此外,还需要一个灵活而有力的框架,以便于在任何设置中安装多个成像声纳传感器,并为数据提供多种应用类型。在本文件中,我们提出了一个为这种新式感测模式设计的传感器网络框架。此外,建议采用图形处理股的处理算法,以可能减少实时处理一个或多个成像声纳传感器的时间,以足够高的更新速度进行实时处理。