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FPGA Implementation of a Sequential Extended Kalman Filter Algorithm Applied to Mobile Robotics Localization Problem

机译:用于移动机器人本地化问题的顺序扩展卡尔曼滤波器算法的FPGA实现

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This work describes a hardware architecture for implementing a sequential approach of the Extended Kalman Filter (EKF) that is suitable for mobile robotics tasks, such as self-localization, mapping, and navigation problems. As such algorithm is computationally intensive, commonly it is implemented in Personal Computer (PC)-based platform to be employed on larger robots. In order to allow the development of small robotic platforms, as those required in many current state of the art research (for instance microrobotics area), small size, low-power and high floating-point computing capability targets are required, as well as specific architectures designed for them. Thus, the proposed architecture has been achieved, for self-localization task, using floating-point arithmetic operators (in simple precision), allowing the fusion of data coming from different sensors such as ultrasonic (Sonar) and Laser Range Finder (LRF). The system has been adapted for achieving a reconfigurable platform, and applied to a Pioneer 3-AT mobile robot.
机译:这项工作描述了一种用于实现适用于移动机器人任务的扩展卡尔曼滤波器(EKF)的顺序方法的硬件架构,例如自定位,映射和导航问题。由于这种算法是计算密集的,通常它是在基于个人计算机(PC)的平台中实现,以便在较大的机器人上使用。为了允许小型机器人平台的发展,因为许多现有技术所需的技术(例如微型机构),需要小尺寸,低功耗和高浮点计算能力目标,以及具体为他们设计的建筑。因此,使用浮点算术运算符(简单精度)来实现所提出的架构,允许来自不同传感器的数据融合,例如超声波(声明)和激光测距仪(LRF)。该系统已经适用于实现可重新配置的平台,并应用于在移动机器人处的先驱3-掌握。

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