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Semantic Segmentation to Develop an Indoor Navigation System for an Autonomous Mobile Robot

机译:语义分割,为自主移动机器人开发室内导航系统

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In this study, a semantic segmentation network is presented to develop an indoor navigation system for a mobile robot. Semantic segmentation can be applied by adopting different techniques, such as a convolutional neural network (CNN). However, in the present work, a residual neural network is implemented by engaging in ResNet-18 transfer learning to distinguish between the floor, which is the navigation free space, and the walls, which are the obstacles. After the learning process, the semantic segmentation floor mask is used to implement indoor navigation and motion calculations for the autonomous mobile robot. This motion calculations are based on how much the estimated path differs from the center vertical line. The highest point is used to move the motors toward that direction. In this way, the robot can move in a real scenario by avoiding different obstacles. Finally, the results are collected by analyzing the motor duty cycle and the neural network execution time to review the robot’s performance. Moreover, a different net comparison is made to determine other architectures’ reaction times and accuracy values.
机译:在该研究中,提出了一种语义分割网络以开发用于移动机器人的室内导航系统。可以通过采用不同的技术来应用语义分割,例如卷积神经网络(CNN)。然而,在本作工作中,通过参与Reset-18转移学习来实现剩余神经网络以区分地板,这是障碍物的墙壁,墙壁和墙壁。在学习过程之后,语义分割楼层掩模用于实现自主移动机器人的室内导航和运动计算。该运动计算基于估计的路径与中心垂直线的不同程度。最高点用于将电机向该方向移动。以这种方式,机器人可以通过避免不同的障碍物来在真实场景中移动。最后,通过分析电动机占空比和神经网络执行时间来收集结果以查看机器人的性能。此外,使不同的网络比较确定为其他架构的反应时间和精度值。

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