Mine Gold in Your Data: Data-centric Learning in 3D Object Detection
ABSTRACT
In the era of data abundance, the challenge in 3D object detection is no longer just building deeper models but selecting the right data to train them. This talk will explore data-centric learning as a pivotal approach, addressing the critical question of which data to select to boost model performance and enhance generalization. We will present our recent works in this area, showcasing strategies for effective data selection and utilization in 3D object detection. The session will also highlight open questions and future directions, emphasizing the untapped potential in data-centric approaches for improving machine learning models.
SPEAKER BIO
Yadan LUO
Lecturer
University of Queensland
Yadan Luo is an ARC DECRA Fellow and Lecturer at the School of EECS, University of Queensland (UQ), Australia. Her research centers on improving the generalization capacity of machine learning models through domain adaptation, domain generalization, and active learning techniques. She has been an Area Chair for ACM MM and has contributed as a Program Committee member for major conferences such as CVPR, ICCV, ECCV, ICLR, and ICML. Yadan is a recipient of several accolades, including the Google PhD Fellowship, ICT Young Achiever, and Women in Technology (WiT) awards, alongside multiple research awards including the Best Student Paper from ACM Multimedia.
Date
22 November 2023
Time
13:30:00 - 14:30:00
Location
W1-1F-101, HKUST(GZ)
Join Link
Zoom Meeting ID: 815 7885 4797
Passcode: dsa2023
Event Organizer
Data Science and Analytics Thrust
dsarpg@hkust-gz.edu.cn