Industrial Deep Learning
In the field of "Industrial Deep Learning", we research deep learning technologies for industrial applications in order to realise innovative solutions in production, logistics and the environment. We combine basic AI research with industrial practice and focus on three main areas
Image-based methods for the automation of quality controls and the precise localisation of anomalies and damage.
Sensor-based situation and condition assessment
Processing and utilisation of transient and seasonal sensor data for condition monitoring, anomaly detection and forecasting.
Intelligent planning and process design
Learning methods for solving complex planning and optimisation problems and for evaluating and parameterising processes.
Our research addresses a broad spectrum of deep learning technologies, including different learning paradigms such as supervised and reinforcement learning, learning scenarios such as transfer learning, representation learning and explainable AI, as well as model architectures such as transformer networks, autoencoders and generative adversarial networks.
We work closely with industry partners, whether as part of publicly funded projects or direct R&D contracts. In doing so, we deal intensively with real challenges and always take the needs of end users and technical experts into account. This practical orientation ensures that our research results are not only theoretically sound, but also directly applicable in industrial practice and improve value creation.
Selected publications
- 2021
- Steiniger, Y., Stoppe, J., Kraus, D., & Meisen, T. (2021). "Erzeugung von synthetischen Seitensichtsonar-Bildern mittels Generative Adversarial Networks" , Hydrographische Nachrichten , 30—34.
- Scheiderer, C., Dorndorf, N., & Meisen, T. (2021). "Effects of Domain Randomization on Simulation-to-Reality Transfer of Reinforcement Learning Policies for Industrial Robots" in Advances in Artificial Intelligence and Applied Cognitive Computing , Arabnia, Hamid R. and Ferens, Ken and de {La Fuente}, David and Kozerenko, Elena B. and {Olivas Varela}, José Angel and Tinetti, Fernando G., Eds. Cham : Springer International Publishing and Imprint Springer , 157—169.
ISBN: 978-3-030-70295-3
- Tercan, H., Bitter, C., Bodnar, T., Meisen, P., & Meisen, T. (2021). "Evaluating a Session-based Recommender System using Prod2vec in a Commercial Application" in Proceedings of the 23rd International Conference on Enterprise Information Systems , SciTePress 610—617.
ISBN: 978-989-758-509-8
- 2020
- Scheiderer, C., Mosbach, M., Posada-Moreno, A. F., & Meisen, T. (2020). "Transfer of Hierarchical Reinforcement Learning Structures for Robotic Manipulation Tasks" in 2020 International Conference on Computational Science and Computational Intelligence (CSCI) , IEEE 504—509.
ISBN: 978-1-7281-7624-6
- Meyes, R., Waubert-de-Puiseau, C., Posada-Moreno, A., & Meisen, T. (2020). "Under the Hood of Neural Networks: Characterizing Learned Representations by Functional Neuron Populations and Network Ablations" .