CVPR 2024 Reveals Workshop Challenge Awardees

Workshop competitions address challenges and maximize results. Abhinav Shrivastava, Workshop Chair
Published 07/02/2024
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LOS ALAMITOS, Calif., 2 July 2024 – More than 120 workshops canvassing 29 thematic tracks took place during the Computer Vision and Pattern Recognition (CVPR) Conference, 17-21 June, with nearly one-quarter hosting challenges or competitions among participants. Today, the Conference Program Committee is announcing this year’s workshop challenge/competition winners, spotlighting those individuals and teams achieving top marks in their individual programs. More than 25 workshop challenges and their awardees now are highlighted on the CVPR website.

“Workshop competitions help advance computer vision research by assembling specialists to address common challenges in defined thematic areas,” said Abhinav Shrivastava, University of Maryland, College Park, M.D., U.S.A., on behalf of the CVPR 2024 Workshop Chairs. “The winners of each challenge not only receive peer recognition, but their work goes on to fuel the next generation of research in their field.”

Functioning as half-day or full-day events within the context of CVPR, workshops provide a deeper investigation of some of the biggest obstacles facing the field, evaluating the next generation of AI technologies and their applications. Some workshops open challenge periods in advance of the event to enable results reporting and continued collaboration onsite at CVPR.

“The unique model CVPR employs for workshops maximizes the opportunities for both reported results and ongoing collaboration. I’m looking forward to seeing how these research areas continue to evolve,” concluded Shrivastava.

Many workshops are featured on an annual basis, allowing experts to build upon the work of the previous year. Watch for future announcements on CVPR 2025 workshops, taking place 10-17 June 2025, in Nashville, Tenn., U.S.A.

About the CVPR 2024
The Computer Vision and Pattern Recognition Conference (CVPR) is the preeminent computer vision event for new research in support of artificial intelligence (AI), machine learning (ML), augmented, virtual and mixed reality (AR/VR/MR), deep learning, and much more. Sponsored by the IEEE Computer Society (CS) and the Computer Vision Foundation (CVF), CVPR delivers the important advances in all areas of computer vision and pattern recognition and the various fields and industries they impact. With a first-in-class technical program, including tutorials and workshops, a leading-edge expo, and robust networking opportunities, CVPR, which is annually attended by more than 10,000 scientists and engineers, creates a one-of-a-kind opportunity for networking, recruiting, inspiration, and motivation.

CVPR 2024 took place 17-21 June at the Seattle Convention Center in Seattle, Wash., U.S.A., and virtually. For more information about CVPR 2024 and the program, visit https://cvpr2023.thecvf.com/Conferences/2024.

About the Computer Vision Foundation
The Computer Vision Foundation is a non-profit organization whose purpose is to foster and support research on all aspects of computer vision. Together with the IEEE Computer Society, it co-sponsors the two largest computer vision conferences, CVPR and the International Conference on Computer Vision (ICCV). Visit https://www.thecvf.com/ for more information.

About the IEEE Computer Society
Engaging computer engineers, scientists, academia, and industry professionals from all areas and levels of computing, the IEEE Computer Society (CS) serves as the world’s largest and most established professional organization of its type. IEEE CS sets the standard for the education and engagement that fuels continued global technological advancement. Through conferences, publications, and programs that inspire dialogue, debate, and collaboration, IEEE CS empowers, shapes, and guides the future of not only its 375,000+ community members, but the greater industry, enabling new opportunities to better serve our world. Visit computer.org for more information.