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A Novel Artificial Organic Control System for Mobile Robot Navigation in Assisted Living Using Vision- and Neural-Based Strategies

机译:使用视野和神经基础策略辅助生活中的移动机器人导航新的人工有机控制系统

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摘要

Robots in assisted living (RAL) are an alternative to support families and professional caregivers with a wide range of possibilities to take care of elderly people. Navigation of mobile robots is a challenging problem due to the uncertainty and dynamics of environments found in the context of places for elderly. To accomplish this goal, the navigation system tries to replicate such a complicated process inspired on the perception and judgment of human beings. In this work, we propose a novel nature-inspired control system for mobile RAL navigation using an artificial organic controller enhanced with vision-based strategies such as Hermite optical flow (OF) and convolutional neural networks (CNNs). Particularly, the Hermite OF is employed for obstacle motion detection while CNNs are occupied for obstacle distance estimation. We train the CNN using OF visual features guided by ultrasonic sensor-based measures in a 3D scenario. Our application is oriented to avoid mobile and fixed obstacles using a monocular camera in a simulated environment. For the experiments, we use the robot simulator V-REP, which is an integrated development environment into a distributed control architecture. Security and smoothness metrics as well as quantitative evaluation are computed and analyzed. Results showed that the proposed method works successfully in simulation conditions.
机译:辅助生活(RAL)的机器人是支持家庭和专业护理人员的替代方案,具有广泛的可能性来照顾老年人。由于在老年人地区的环境中发现的环境的不确定性和动态,移动机器人的导航是一个具有挑战性的问题。为实现这一目标,导航系统试图复制这种复杂的过程,这是对人类的感知和判断的启发。在这项工作中,我们提出了一种新颖的自然启发控制系统,用于使用人工有机控制器增强了基于视觉的策略,如Hermite光学流量和卷积神经网络(CNNS)。特别地,用于障碍物运动检测的Hermite,而CNN被占用用于障碍物距离估计。我们在3D场景中培训基于超声波传感器的测量指导的视觉功能的CNN使用。我们的申请旨在避免在模拟环境中使用单眼摄像机的移动和固定障碍物。对于实验,我们使用机器人模拟器V-rep,它是一个集成的开发环境到分布式控制架构中。计算和分析安全性和平滑度量以及定量评估。结果表明,该方法在仿真条件下成功工作。

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