<p>➀ The reliability of AI-based image recognition is ensured through a smart validation environment, even under adverse conditions such as strong vibrations.</p><p>➁ Components and sub-systems can be efficiently characterized under various mechanical boundary conditions, for example, to easily generate AI training data.</p><p>➂ The transfer of developed technologies into the economy is demonstrated through various development steps along the Technology Readiness Levels (TRL).</p>
Related Articles
- High-tech Innovator Launches ISTA Professorship | Machine-Learning Expert Alex Bronstein Explores Boundaries of AI Research7 months ago
- Human-Centered, Resource-Efficient, Resilient – R&D Solutions for Future-Proof Production6 months ago
- Hochschule Koblenz: First KickStart Team Files Patent for Innovative Payment Solution BEZLADabout 2 months ago
- Institute for Digitalization and Electric Drives (IDA) Achieves Record Revenues2 months ago
- Imec and ASML sign five year R&D agreement3 months ago
- Hannover Messe: Pumps and valves made from ultrathin elastomeric films are lightweight and energy efficient3 months ago
- Exploration of Hidden Atomic Movements Through Machine Learning3 months ago
- An Extraordinary Employee: Humanoid Robot TALOS at TU Darmstadt for Research into Human-like Learning3 months ago
- Further Education: Vocational Schools Drive Vocational Training for Electric Vehicles3 months ago
- Ernst-Abbe-Hochschule Jena Establishes Endowed Professorship for 'Explainable Artificial Intelligence (XAI)'3 months ago