人工智能自主爬楼梯机器人的设计与研究

Montaser RAMADAN, Shadi M S HİLLES, Mohammad ALKHEDHER
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引用次数: 0

摘要

移动机器人经常用于工业和军事目的的监视部门。在城市搜索和救援行动等监视工作中,行走楼梯的能力至关重要。研究表明,根据机器人的规格、运动学限制、上下楼梯所需的最大高度和最低步长,提出了能够适应各种楼梯并保持其稳定性的六轮漫游机器人的设计方法。基于树莓派、摄像头和激光雷达距离传感器,建议的机器人有能力在开始攀登之前测量楼梯的高度。提出了一种基于卷积神经网络(CNN)深度学习的楼梯识别模型。此外,使用图像和激光雷达距离读取的统计滤波来估计楼梯对齐。然后机器人可以根据它的运动学限制和我们系统测量的楼梯高度来决定它是否可以爬楼梯。结果表明,该算法的台阶检测准确率为99.46%,平均精度为99.64%。根据最终结果,提出的基于人工智能机器人的楼梯识别系统可以有效地爬上高度在13到23厘米之间的楼梯。
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Design and Study of an AI-Powered Autonomous Stair Climbing Robot
Mobile robots are frequently utilized in the surveillance sector for both industrial and military purposes. The ability to navigate stairs is crucial for carrying out surveillance jobs like urban search and rescue operations. The research paper shows that the design methodology for a six-wheeled rover robot that can adapt to various stairs and maintain its stability based on the robot's specifications, kinematics restrictions, the maximum height, and the lowest step length needed to climb up and down the stairs is proposed. Based on a Raspberry Pi, camera, and LIDAR distance sensor, the suggested robot has the capacity to measure the stair height before starting to climb. A Convolutional Neural Networks (CNN) deep learning model is developed for the purpose of stair recognition. Additionally, stair alignment was estimated using statistical filtering on pictures and LIDAR distance reading. The robot can then decide whether it can climb the stairs or not based on its kinematics limitations and the height of the stairs as measured by our system. Result shows that our stair detection algorithm achieved an accuracy of 99.46% and a mean average precision of 99.64%. The proposed AI-Powered Robot-based stair recognition system, according to final results, effectively climbed stairs with a height range between 13 and 23 cm.
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来源期刊
El-Cezeri Journal of Science and Engineering
El-Cezeri Journal of Science and Engineering Chemical Engineering-Chemical Engineering (all)
CiteScore
1.00
自引率
0.00%
发文量
49
审稿时长
5 weeks
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