Prompt Group-Aware Training for Robust Text-Guided Nuclei Segmentation

This paper introduces a prompt group-aware training framework that enhances the robustness and generalization of text-guided nuclei segmentation by enforcing consistency among semantically related prompts through quality-guided regularization and logit-level constraints, achieving significant performance gains without altering model architecture or inference.

Yonghuang Wu, Zhenyang Liang, Wenwen Zeng, Xuan Xie, Jinhua Yu2026-03-09🤖 cs.AI

Solving Jigsaw Puzzles in the Wild: Human-Guided Reconstruction of Cultural Heritage Fragments

This paper proposes a human-in-the-loop framework that combines an automatic relaxation-labeling solver with interactive guidance strategies to effectively and efficiently reassemble large-scale, fragmented cultural heritage artifacts in real-world conditions where traditional methods fail.

Omidreza Safaei, Sinem Aslan, Sebastiano Vascon, Luca Palmieri, Marina Khoroshiltseva, Marcello Pelillo2026-03-09💻 cs

CLoPA: Continual Low Parameter Adaptation of Interactive Segmentation for Medical Image Annotation

The paper proposes CLoPA, a continual low-parameter adaptation strategy that efficiently tunes a small fraction of the nnInteractive model on incoming annotation data, rapidly achieving expert-level performance across diverse medical imaging tasks without requiring new parameters or altering the inference pipeline.

Parhom Esmaeili, Chayanin Tangwiriyasakul, Eli Gibson, Sebastien Ourselin, M. Jorge Cardoso2026-03-09🤖 cs.AI

What if? Emulative Simulation with World Models for Situated Reasoning

This paper introduces WanderDream, the first large-scale dataset comprising panoramic videos and question-answer pairs that enables agents to perform situated reasoning through emulative mental simulation of future trajectories, thereby overcoming the physical and safety constraints of active real-world exploration.

Ruiping Liu, Yufan Chen, Yuheng Zhang, Junwei Zheng, Kunyu Peng, Chengzhi Wu, Chenguang Huang, Di Wen, Jiaming Zhang, Kailun Yang, Rainer Stiefelhagen2026-03-09💻 cs

Do Foundation Models Know Geometry? Probing Frozen Features for Continuous Physical Measurement

This paper demonstrates that frozen vision-language model features contain rich, continuous geometric information that outperforms text-based outputs by 3.3x, revealing that the accuracy bottleneck stems from training objectives and autoregressive generation rather than representational limitations, as evidenced by high-precision linear probes and consistent performance across diverse encoder architectures.

Yakov Pyotr Shkolnikov2026-03-09🤖 cs.AI

Match4Annotate: Propagating Sparse Video Annotations via Implicit Neural Feature Matching

Match4Annotate is a lightweight framework that enables efficient, high-quality propagation of sparse point and mask annotations across and within video sequences by fitting test-time implicit neural representations to DINOv3 features, offering a scalable solution for annotation bottlenecks in specialized domains like medical imaging.

Zhuorui Zhang, Roger Pallarès-López, Praneeth Namburi, Brian W. Anthony2026-03-09💻 cs

Self-Supervised Flow Matching for Scalable Multi-Modal Synthesis

This paper introduces Self-Flow, a self-supervised flow matching paradigm that utilizes a Dual-Timestep Scheduling mechanism to integrate representation learning directly into the generative framework, thereby eliminating the need for external models and achieving superior, scalable multi-modal synthesis across image, video, and audio.

Hila Chefer, Patrick Esser, Dominik Lorenz, Dustin Podell, Vikash Raja, Vinh Tong, Antonio Torralba, Robin Rombach2026-03-09✓ Author reviewed 💻 cs

Artificial Intelligence for Detecting Fetal Orofacial Clefts and Advancing Medical Education

This paper presents an artificial intelligence system trained on over 45,000 ultrasound images that achieves diagnostic accuracy comparable to senior radiologists for fetal orofacial clefts, significantly enhances junior radiologists' performance when used as a copilot, and accelerates clinical expertise development for rare conditions.

Yuanji Zhang, Yuhao Huang, Haoran Dou, Xiliang Zhu, Chen Ling, Zhong Yang, Lianying Liang, Jiuping Li, Siying Liang, Rui Li, Yan Cao, Yuhan Zhang, Jiewei Lai, Yongsong Zhou, Hongyu Zheng, Xinru Gao, Cheng Yu, Liling Shi, Mengqin Yuan, Honglong Li, Xiaoqiong Huang, Chaoyu Chen, Jialin Zhang, Wenxiong Pan, Alejandro F. Frangi, Guangzhi He, Xin Yang, Yi Xiong, Linliang Yin, Xuedong Deng, Dong Ni2026-03-09🤖 cs.AI