ROCVSep 6, 2021

Intelligent Motion Planning for a Cost-effective Object Follower Mobile Robotic System with Obstacle Avoidance

arXiv:2109.02700v1
Originality Incremental advance
AI Analysis

This addresses the need for cost-effective, autonomous object-following robots in industries that currently rely on manual control, though it appears incremental as it builds on existing vision and control techniques.

The paper tackles the problem of enabling a mobile robot to follow a human by tracking a unique colored object while avoiding obstacles, using robot vision and deep learning to predict linear and angular velocities with low error and achieving impressive results that outperform other methods.

There are few industries which use manually controlled robots for carrying material and this cannot be used all the time in all the places. So, it is very tranquil to have robots which can follow a specific human by following the unique coloured object held by that person. So, we propose a robotic system which uses robot vision and deep learning to get the required linear and angular velocities which are ν and ω, respectively. Which in turn makes the robot to avoid obstacles when following the unique coloured object held by the human. The novel methodology that we are proposing is accurate in detecting the position of the unique coloured object in any kind of lighting and tells us the horizontal pixel value where the robot is present and also tells if the object is close to or far from the robot. Moreover, the artificial neural networks that we have used in this problem gave us a meagre error in linear and angular velocity prediction and the PI controller which was used to control the linear and angular velocities, which in turn controls the position of the robot gave us impressive results and this methodology outperforms all other methodologies.

Foundations

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