基于RGBD图像和机器人方向的深度学习避障算法

A. Saleem, Khadija Al Jabri, A. A. Maashri, Waleed Al Maawali, Mostafa Mesbah
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引用次数: 3

摘要

受深度学习分层特征提取优势的启发,本文研究了卷积神经网络(CNN)算法的发展,以解决室内环境下移动机器人的避障问题。该算法以原始图像和机器人姿态为输入,生成控制命令作为网络输出。控制命令包括直行、左转弯、左转弯一半、右转弯一半和右转弯一半。使用深度图像(RGBD)和由惯性测量单元(IMU)获得的机器人方向数据编译的数据集。此外,从训练选项、超参数和输出精度方面对算法的性能进行了评估,并给出了相应的建议。最终的结果表明,通过在数据集中加入机器人的方向、增加数据的大小和调整网络的超参数,可以提高准确率。CNN算法在移动机器人避障中获得较高的路径分类精度方面显示出巨大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Obstacle-Avoidance Algorithm Using Deep Learning Based on RGBD Images and Robot Orientation
Inspired by the advantages of the hierarchical feature extraction of deep learning, this work investigates the development of a Convolutional Neural Network (CNN) algorithm to solve the problem of the mobile robot obstacle avoidance in an indoor environment. The algorithm takes raw images and robot orientation as input and generates control commands as network output. Control commands include go-straight-forward, turn-full-left, turn-half-left, turn-full-right, and turn-half-right. A dataset compiled using depth images (RGBD) and robot orientation data obtained by an Inertial Measurement Unit (IMU). In addition, the performance of the algorithm in terms of training options, hyperparameters, and output precision is evaluated and recommendations are provided accordingly. The final results show that the accuracy can be improved by including the robot orientation in the dataset, increasing the size of data, and tuning the network's hyperparameters. The CNN algorithm has shown great potential to get high path classification accuracy for obstacle avoidance for mobile robots.
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