Data is key for advances in machine learning, including mobile applications like robots and autonomous cars. To ensure reliable operation, occurring scenarios must be reflected by the underlying dataset. Since the open-world environments can contain unknown scenarios and novel objects, active learning from online data collection and handling of unknowns is required. In this talk we discuss different approach to address this real world requirements.
talk-data.com
S
Speaker
Sebastian Schmidt
1
talks
PhD student, Data Analytics and Machine Learning group
TU Munich; BMW Industrial PhD Program
PhD student at the Data Analytics and Machine Learning group at TU Munich and part of an Industrial PhD Program with the BMW research group. His work is mainly focused on Open-world active learning and perception for autonomous vehicles.
Bio from: Dec 11 - Visual AI for Physical AI Use Cases
Filtering by:
Dec 11 - Visual AI for Physical AI Use Cases
×
Filter by Event / Source
Dec 11 - Visual AI for Physical AI Use Cases
1
Dec 11 - Visual AI for Physical AI Use Cases
1
Dec 11 - Visual AI for Physical AI Use Cases
1
Dec 11 - Visual AI for Physical AI Use Cases
1
Dec 11 - Visual AI for Physical AI Use Cases
1
Dec 11 - Visual AI for Physical AI Use Cases
1
Dec 11 - Visual AI for Physical AI Use Cases
1
Google Cloud Next '24
1
Talks & appearances
Showing 1 of 8 activities