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Vision-Based Autonomous Navigation System Using ANN and FSM Control

Daniel Oliva Sales, Patrick Y. Shinzato, Gustavo Pessin, Denis F. Wolf, Fernando Santos Osório

发表年份
2010
引用次数
15

摘要

Autonomous mobile robot navigation is a very relevant problem in robotics research. This paper proposes a vision-based autonomous navigation system using artificial neural networks (ANN) and finite state machines (FSM). In the first step, ANNs are used to process the image frames taken from the robot's camera, classifying the space, resulting in navigable or non-navigable areas (image road segmentation). Then, the ANN output is processed and used by a FSM, which identifies the robot's current state, and define which action the robot should take according to the processed image frame. Different experiments were performed in order to validate and evaluate this approach, using a small mobile robot with integrated camera, in a structured indoor environment. The integration of ANN vision-based algorithms and robot's action control based on a FSM, as proposed in this paper, demonstrated to be a promising approach to autonomous mobile robot navigation.

关键词

Mobile robotArtificial intelligenceMobile robot navigationComputer visionComputer scienceRobotMachine visionRobot controlFinite-state machineRobotics

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