Affiliation:
1. Institute of Industrial Automation and Software Engineering , 9149 University of Stuttgart , Pfaffenwaldring 47 , Stuttgart , Germany
Abstract
Abstract
The utilization of deep learning in the field of industrial automation is hindered by two factors: The amount and diversity of training data needed as well as the need to continuously retrain as the use case changes over time. Both problems can be addressed by industrial deep transfer learning allowing for the performant, continuous and potentially distributed training on small, dispersed datasets. As a specific example, a dual memory algorithm for computer vision problems is developed and evaluated. It shows the potential for state-of-the-art performance while being trained only on fractions of the complete ImageNet dataset at multiple locations at once.
Subject
Electrical and Electronic Engineering,Computer Science Applications,Control and Systems Engineering
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