2023
DOI: 10.3390/bdcc7010043
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An Obstacle-Finding Approach for Autonomous Mobile Robots Using 2D LiDAR Data

Abstract: Obstacle detection is crucial for the navigation of autonomous mobile robots: it is necessary to ensure their presence as accurately as possible and find their position relative to the robot. Autonomous mobile robots for indoor navigation purposes use several special sensors for various tasks. One such study is localizing the robot in space. In most cases, the LiDAR sensor is employed to solve this problem. In addition, the data from this sensor are critical, as the sensor is directly related to the distance o… Show more

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Cited by 9 publications
(2 citation statements)
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“…It obtains the relative position and attitude of the robot by combining the chassis kinematics equation. However, if the robot's wheels are prone to slipping while driving in the wild, the wheel mileage data obtained from the encoder data will be inaccurate [23]. Therefore, we chose a high-precision dual antenna GNSS receiver (CGI210, Huace Navigation, Shanghai, China) to obtain the robot's position and direction in real time.…”
Section: Hardware Setupmentioning
confidence: 99%
“…It obtains the relative position and attitude of the robot by combining the chassis kinematics equation. However, if the robot's wheels are prone to slipping while driving in the wild, the wheel mileage data obtained from the encoder data will be inaccurate [23]. Therefore, we chose a high-precision dual antenna GNSS receiver (CGI210, Huace Navigation, Shanghai, China) to obtain the robot's position and direction in real time.…”
Section: Hardware Setupmentioning
confidence: 99%
“…As noted by Nai-Hsiang Chang et al [5], obstacle avoidance has always been a very important research topic in the field of robotics. The most important thing is to find out the obstacle location in relation to the robot as accurately as possible [17]. For obstacle avoidance in autonomous vehicles, some basic requirements for image processing include the following features.…”
Section: Related Workmentioning
confidence: 99%