David Schneider
Research Assistant at CV:HCI. PhD Student. Computer Vision. Machine Learning.
My research focuses on developing computer vision systems for accurate human activity recognition and motion analysis across diverse real-world environments like different variations of homes or workplaces. I leverage synthetic data from simulations to overcome limitations in real-world data collection such as sparse datasets or privacy concerns in data collection. A key challenge is bridging the “domain gap” between synthetic and real-world imagery, which I address through special algorithms and training techniques. As part of the JuBot project I make use of such systems to recognize human behaviour in order to improve robotic assistance systems for activities of daily living.
In this field of research I am less interested in the performance within individual datasets, but rather the performance across datasets: How much worse is the recognition accuracy in real-world settings when training on synthetic data, under different lighting conditions, background sceneries or even slightly changing semantics of certain labels.
I finished my M.Sc. in Computer Science in 2021 and started my PhD at the CV:HCI Lab afterwards, both at the Karlsruhe Institute of Technology (KIT). As a member of the JuBot project, my PhD candidate position is partially funded by the Carl-Zeiss-Stiftung.