Jieneng Chen
pronounce Jieneng: jee-eh-nung
email: jienengc [at] stanford.edu

I am a postdoctoral researcher at Stanford SVL. I received my PhD in Computer Science at Johns Hopkins University in 2026, advised by Alan Yuille.

I study intelligence in the physical world by structuring raw observations into spatial code. My works laid the foundation, spanning vision encoders and world models. I am best known for TransUNet, which unifies local and global context and has over 10,000 citations.

I am honored as a Young American Scientists by the pretigious magazine Scientific American, a Siebel Scholar for contributions to bioengineering, a Kempner fellow to study AI and natural intelligence, and a recipient of a few Young Investigator and Best Paper Awards.

profile photo
News
Awards and Honors
Recent Projects

Publications from the past two years. Full list on Google Scholar.

Image World-in-World: World Models in a Closed-Loop World
Jiahan Zhang*, Muqing Jiang*, Nanru Dai, TaiMing Lu, Arda Uzunoglu, Shunchi Zhang, Yana Wei, Jiahao Wang, Vishal Patel, Paul Liang, Daniel Khashabi, Cheng Peng, Rama Chellappa, Tianmin Shu, Alan Yuille, Yilun Du, Jieneng Chen.

ICLR, 2026. Oral (top 1%).

World models live and die by their closed-loop success, not flawless generated visuals.

Paper | OpenReview | Project | Leaderboard | Demo | Code
Image Fast Generative DeOcclusion for Visual Geometry and Robotics
Jieneng Chen*, Tiezheng Zhang*, Xiwei Xuan, Ju He, Yifan Yin, Haojun Shi, Suyu Ye, Xinyi Li, Ruisheng Yuan, Tianmin Shu, Alan Yuille.

CVPR, Findings, 2026

GenEx: Generating an Explorable World
TaiMing Lu, Tianmin Shu, Alan Yuille, Daniel Khashabi, Jieneng Chen.

ICLR, 2025.

Turn a single image into a 3D world adventure. Embodied agents refine beliefs by predicting unseen parts of the physical world.

JHU News | Paper | Blog | Project | Code
Medical World Model: Generative Simulation of Tumor Evolution for Treatment Planning
Yijun Yang, Zhao-Yang Wang, Qiuping Liu, Shuwen Sun, Kang Wang, Rama Chellappa, Zongwei Zhou, Alan Yuille, Lei Zhu, Yu-Dong Zhang, Jieneng Chen.

ICCV, 2025.

Precision medicine via generative world modeling.

Paper | Code | Project
Image Spatial457: A Diagnostic Benchmark for 6D Spatial Reasoning of Large Multimodal Models
Xingrui Wang, Wufei Ma, Tiezheng Zhang, Celso Miguel de Melo, Jieneng Chen†, Alan Yuille†.

CVPR, 2025. Highlight.

Paper | Code | HuggingFace
Image SpatialLLM: A Compound 3D-Informed Design towards Spatially-Intelligent Large Multimodal Models
Wufei Ma, Luoxin Ye, Nessa McWeeney, Celso Miguel de Melo, Alan Yuille, Jieneng Chen.

CVPR, 2025. Highlight.

Paper
4D-Animal: Freely Reconstructing Animatable 3D Animals from Videos
Shanshan Zhong, Jiawei Peng, Zehan Zheng, Zhongzhan Huang, Wufei Ma, Guofeng Zhang, Qihao Liu, Alan Yuille, Jieneng Chen.

WACV, 2026.

Paper | Code
Image ViTamin: Designing Scalable Vision Models in the Vision-Language Era
Jieneng Chen, Qihang Yu, Xiaohui Shen, Alan Yuille, Liang-Chieh Chen.

CVPR, 2024.

First vision-centric encoder design for LMMs; SoTA on 60+ benchmarks in 2024.

Paper | Code | HuggingFace | timm | open_clip
Image LLaVolta: Efficient Large Multi-modal Models via Visual Context Compression
Jieneng Chen, Luoxin Ye, Ju He, Zhaoyang Wang, Daniel Khashabi, Alan Yuille.

NeurIPS, 2024.

Paper | Code | Project
Image TransUNet: Rethinking the U-Net Architecture Design for Medical Image Segmentation through the Lens of Transformers
Jieneng Chen, Jieru Mei, Xianhang Li, Yongyi Lu, Qihang Yu, Qingyue Wei, Xiangde Luo, Yutong Xie, Ehsan Adeli, Yan Wang, Matthew P Lungren, Shaoting Zhang, Lei Xing, Le Lu, Alan Yuille, Yuyin Zhou.

Medical Image Analysis, Oct 2024.

Top-15 cited 2021 paper in all AI fields. Most downloaded on ScienceDirect. Most cited in MedIA.

ICML-W 2021 | Journal | Code Stars
Talks and Interviews
Scientific American — Young American Scientists 2026

Feature interview, Scientific American — Young American Scientists 2026

Teaching
  • Instructor: Machine Imagination (EN.601.208), JHU, 2025 & 2026.
Service
  • Reviewer: CVPR, ICCV, ECCV, WACV, NeurIPS, ICML, ICLR, AAAI, IJCV, TPAMI, TMI, MICCAI, CogSci.
  • Workshop co-organizer: ICCV, CVPR, MICCAI.
  • JHU CS mentor hours.
  • Lecture for JHU WSE Pre-College Program 2025.
Mentoring

I am fortunate to have collaborated with talented students at JHU.

Acknowledgement

My doctoral research was made possible through the generous support of ARL, IARPA, NSF, NIH, ONR, Lambda, NVIDIA, Google Cloud, JHU, Stanford, Harvard, the Siebel Foundation, the Patrick J. McGovern Foundation, and the Lustgarten Foundation.