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基于深度学习分割方法的差速驱动移动机器人室内导航可行驶路径检测

Drivable path detection for a mobile robot with differential drive using a deep Learning based segmentation method for indoor navigation.

作者信息

Mısır Oğuz

机构信息

Department of Mechatronics Engineering, Bursa Technical University, Bursa, Türkiye.

出版信息

PeerJ Comput Sci. 2024 Nov 19;10:e2514. doi: 10.7717/peerj-cs.2514. eCollection 2024.

Abstract

The integration of artificial intelligence into the field of robotics enables robots to perform their tasks more meaningfully. In particular, deep-learning methods contribute significantly to robots becoming intelligent cybernetic systems. The effective use of deep-learning mobile cyber-physical systems has enabled mobile robots to become more intelligent. This effective use of deep learning can also help mobile robots determine a safe path. The drivable pathfinding problem involves a mobile robot finding the path to a target in a challenging environment with obstacles. In this paper, a semantic-segmentation-based drivable path detection method is presented for use in the indoor navigation of mobile robots. The proposed method uses a perspective transformation strategy based on transforming high-accuracy segmented images into real-world space. This transformation enables the motion space to be divided into grids, based on the image perceived in a real-world space. A grid-based RRT* navigation strategy was developed that uses images divided into grids to enable the mobile robot to avoid obstacles and meet the optimal path requirements. Smoothing was performed to improve the path planning of the grid-based RRT* and avoid unnecessary turning angles of the mobile robot. Thus, the mobile robot could reach the target in an optimum manner in the drivable area determined by segmentation. Deeplabv3+ and ResNet50 backbone architecture with superior segmentation ability are proposed for accurate determination of drivable path. Gaussian filter was used to reduce the noise caused by segmentation. In addition, multi-otsu thresholding was used to improve the masked images in multiple classes. The segmentation model and backbone architecture were compared in terms of their performance using different methods. DeepLabv3+ and ResNet50 backbone architectures outperformed the other compared methods by 0.21%-4.18% on many metrics. In addition, a mobile robot design is presented to test the proposed drivable path determination method. This design validates the proposed method by using different scenarios in an indoor environment.

摘要

将人工智能集成到机器人技术领域,能使机器人更有意义地执行任务。特别是,深度学习方法对机器人成为智能控制论系统有显著贡献。深度学习移动网络物理系统的有效应用,使移动机器人变得更加智能。这种深度学习的有效应用还能帮助移动机器人确定安全路径。可行驶路径寻找问题涉及移动机器人在有障碍物的具有挑战性的环境中找到通往目标的路径。本文提出了一种基于语义分割的可行驶路径检测方法,用于移动机器人的室内导航。所提出的方法使用一种基于将高精度分割图像转换到现实世界空间的透视变换策略。这种变换能够基于在现实世界空间中感知到的图像,将运动空间划分为网格。开发了一种基于网格的RRT导航策略,该策略使用划分为网格的图像,使移动机器人能够避开障碍物并满足最优路径要求。进行了平滑处理,以改进基于网格的RRT的路径规划,并避免移动机器人不必要的转弯角度。这样,移动机器人就能在由分割确定的可行驶区域内以最优方式到达目标。提出了具有卓越分割能力的Deeplabv3+和ResNet50骨干架构,用于精确确定可行驶路径。使用高斯滤波器来减少由分割引起的噪声。此外,使用多阈值法来改善多类别的掩膜图像。使用不同方法比较了分割模型和骨干架构的性能。在许多指标上,Deeplabv3+和ResNet50骨干架构比其他比较方法高出0.21%-4.18%。此外,还展示了一种移动机器人设计,以测试所提出的可行驶路径确定方法。该设计通过在室内环境中使用不同场景来验证所提出的方法。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3a91/11639217/b78e79356091/peerj-cs-10-2514-g001.jpg

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