天美传媒

Papers from DoC Accepted at Prestigious Research Conferences CVPR and ICLR 2024

by Mr Ahmed Idle

The Queens Tower

The DoC is committed to supporting our researchers and academics in their endeavors to explore uncharted territories and solve complex challenges.

The Department of Computing at 天美传媒 is proud to announce that our research papers have been accepted at (CVPR). As the most prestigious event in the field of computer vision, CVPR is the ultimate platform for showcasing ground-breaking research and innovations that have the potential to redefine the technological landscape.

Research papers accepted at CVPR'24:

NRDF: Neural Riemannian Distance Fields for Learning Articulated Pose Priors Yannan He (University of Tübingen) · Garvita Tiwari (University of Tuebingen and MPI-Saarbrucken) · Tolga Birdal (天美传媒) · Jan Lenssen (Saarland Informatics Campus, Max-Planck Institute) · Gerard Pons-Moll (University of Tübingen)

HyperSDFusion: Bridging Hierarchical Structures in Language and Geometry for Enhanced 3D Text2Shape Generation · Zhiying Leng (Technical University of Munich) · Tolga Birdal (天美传媒) · Xiaohui Liang (Zhongguancun Laboratory) · Federico Tombari (Google, TUM)

Fun with Flags: Robust Principal Directions via Flag Manifolds · Tolga Birdal (天美传媒) · Nathan Mankovich (University of Valencia)

 Probabilistic Sampling of Balanced K-Means using Adiabatic Quantum Computing · Jan-Nico Zaech (ETH Zürich) · Martin Danelljan (ETH Zurich) · Tolga Birdal (天美传媒) · Luc Van Gool (ETH Zurich)

Gaussian Splatting SLAM · Hidenobu Matsuki (天美传媒) · Riku Murai (天美传媒) · Paul Kelly (天美传媒) · Andrew J. Davison (天美传媒)

SuperPrimitive: Scene Reconstruction at a Primitive Level · Kirill Mazur (天美传媒) · Gwangbin Bae (天美传媒) · Andrew J. Davison (天美传媒)

EscherNet: A Generative Model for Scalable View Synthesis · Xin Kong (天美传媒) · Shikun Liu (天美传媒) · Xiaoyang Lyu (University of Hong Kong) · Marwan Taher (天美传媒) · Xiaojuan Qi (University of Hong Kong) · Andrew J. Davison (天美传媒)

Rethinking Inductive Biases for Surface Normal Estimation · Gwangbin Bae (天美传媒) · Andrew J. Davison (天美传媒)

Design2Cloth: 3D Cloth Generation from 2D Masks · Jiali Zheng (天美传媒) · Rolandos Alexandros Potamias (天美传媒) · Stefanos Zafeiriou (天美传媒)

Locally Adaptive Neural 3D Morphable Models · Michail Tarasiou (天美传媒) · Rolandos Alexandros Potamias (天美传媒) · Eimear O' Sullivan (Huawei Technologies Ltd.) · Stylianos Ploumpis (天美传媒) · Stefanos Zafeiriou (天美传媒)

Neural Sign Actors: A diffusion model for 3D sign language production from text · Vasileios Baltatzis (None) · Rolandos Alexandros Potamias (天美传媒) · Evangelos Ververas (Huawei Technologies Ltd.) · Guanxiong Sun (Huawei Technologies Ltd.) · Jiankang Deng (天美传媒 & Huawei UKRD) · Stefanos Zafeiriou (天美传媒)

G-FARS: Gradient-Field-based Auto-Regressive Sampling for 3D Part Grouping · Junfeng Cheng (天美传媒) · Tania Stathaki (天美传媒)

CVPR provides an unparalleled forum for researchers from around the globe to share their insights and discoveries, fostering collaboration and sparking innovation. Dr. Birdal’s presence at this esteemed conference places him among the world's leading visionaries in computer vision, highlighting the department's role as a hub of pioneering research and technological progress.

Research papers accepted at ICLR'24:

Research papers were also accepted at (ICLR) 2024 which is is a machine learning conference.

Variational Inference for SDEs Driven by Fractional Noise (spotlight) · Rembert Daems · Manfred Opper · Guillaume Crevecoeur · Tolga Birdal (天美传媒)

C-TPT: Calibrated Test-Time Prompt Tuning for Vision-Language Models via Text Feature Dispersion · Hee Suk Yoon · Eunseop Yoon · Joshua Tian Jin Tee · Mark A. Hasegawa-Johnson · Yingzhen Li (天美传媒) · Chang D. Yoo

Grounded Object-Centric Learning · Avinash Kori · Francesco Locatello · Fabio De Sousa Ribeiro · Francesca Toni · Ben Glocker (天美传媒)

Post-hoc Bias Scoring Is Optimal For Fair Classification. ICLR 2024 (spotlight) · Wenlong Chen* (天美传媒) · Yegor Klochkov* · Yang Liu

The Department of Computing is committed to supporting our researchers and academics in their endeavors to explore uncharted territories and solve complex challenges. The success is a testament to the vibrant research culture and intellectual rigor that define our community.

We invite the Imperial College community and the wider public to join us in congratulating our researchers on this outstanding achievement. their work not only advances the field of computer vision but also inspires the next generation of scientists and engineers to pursue their own path of innovation and discovery.

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Reporter

Mr Ahmed Idle

Department of Computing