Application of Deep Learning in the Deployment of an Industrial SCARA Machine for Real-Time Object Detection

Author:

Kapusi Tibor PéterORCID,Erdei Timotei István,Husi GézaORCID,Hajdu AndrásORCID

Abstract

In the spirit of innovation, the development of an intelligent robot system incorporating the basic principles of Industry 4.0 was one of the objectives of this study. With this aim, an experimental application of an industrial robot unit in its own isolated environment was carried out using neural networks. In this paper, we describe one possible application of deep learning in an Industry 4.0 environment for robotic units. The image datasets required for learning were generated using data synthesis. There are significant benefits to the incorporation of this technology, as old machines can be smartened and made more efficient without additional costs. As an area of application, we present the preparation of a robot unit which at the time it was originally produced and commissioned was not capable of using machine learning technology for object-detection purposes. The results for different scenarios are presented and an overview of similar research topics on neural networks is provided. A method for synthetizing datasets of any size is described in detail. Specifically, the working domain of a given robot unit, a possible solution to compatibility issues and the learning of neural networks from 3D CAD models with rendered images will be discussed.

Publisher

MDPI AG

Subject

Artificial Intelligence,Control and Optimization,Mechanical Engineering

Reference44 articles.

1. A Novel Design of an Augmented Reality Based Navigation System & its Industrial Applications;Erdei;Proceedings of the 15th IMEKO TC10—Technical Diagnostics in Cyber-Physical Era,2017

2. Modeling the Social Consequences of Industrial Robotization;Tikhonova;Proceedings of the 2nd International Scientific and Practical Conference on Digital Economy (ISCDE 2020),2020

3. Deep Recurrent Neural Networks Based Obstacle Avoidance Control for Redundant Manipulators

4. Simultaneous Obstacle Avoidance and Target Tracking of Multiple Wheeled Mobile Robots With Certified Safety

5. Motion Planning of Manipulators for Simultaneous Obstacle Avoidance and Target Tracking: An RNN Approach With Guaranteed Performance

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