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04.10.2024

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Teaser image to Angela Dai receives ECVA Young Researcher Award 2024

Angela Dai Receives ECVA Young Researcher Award 2024

Awarded for Pioneering Work in Advancing Visual Perception and AI

The European Computer Vision Association (ECVA) has honored our PI Angela Dai with the Young Researcher Award 2024, recognizing her outstanding contributions to the field of computer vision:

Angela stands out as a pioneering researcher in 3D scene reconstruction and semantic scene understanding. Angela’s research has played a pivotal role in establishing modern 3D deep learning as a prominent and influential area of study. Her efforts have significantly broadened the scope of visual perception, transforming the landscape of research in the digitization and understanding of 3D environments.

Congrats from us!

#award #research #dai

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