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Main Authors: Li, Bohan, Yang, Shuojue, Peng, Baorui, Guo, Xianda, Zhang, Erli, Tao, Youqi, Duan, Junfeng, Xu, Daguang, Dou, Qi, Jin, Xin, Zeng, Wenjun, Zhao, Hao, Jin, Yueming
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.08712
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author Li, Bohan
Yang, Shuojue
Peng, Baorui
Guo, Xianda
Zhang, Erli
Tao, Youqi
Duan, Junfeng
Xu, Daguang
Dou, Qi
Jin, Xin
Zeng, Wenjun
Zhao, Hao
Jin, Yueming
author_facet Li, Bohan
Yang, Shuojue
Peng, Baorui
Guo, Xianda
Zhang, Erli
Tao, Youqi
Duan, Junfeng
Xu, Daguang
Dou, Qi
Jin, Xin
Zeng, Wenjun
Zhao, Hao
Jin, Yueming
contents Action-conditioned surgical video generation is a critical yet highly challenging problem for robotic surgery. The core difficulty is that low-dimensional control vectors must precisely govern complex image-space evolution. In this work, we propose a kinematic-to-visual lifting paradigm that converts articulated kinematics into a unified set of five image-aligned control modalities. Building on this representation, we introduce a hierarchically routed visual control framework that selectively activates the most relevant control modalities and motion scales. Instead of uniformly applying all control signals, our model performs hierarchical routing to dynamically allocate conditioning capacity. We further design kinematic-prior-guided routing loss functions to ensure physically meaningful, temporally stable, and efficient expert utilization. To improve efficiency, we propose a budgeted training and inference scheme that leverages routing-induced sparsity. By selectively discarding low-significance control pathways during training and execution, our approach enables adaptive computation that is complementary to standard distillation. We additionally construct a new benchmark with curated articulated annotations, obtained through human-in-the-loop semantic labeling and differentiable pose tracking, providing realistic supervision for action-conditioned surgical video generation. Extensive experiments demonstrate that our method consistently improves action faithfulness, visual fidelity, and cross-domain generalization over diverse baselines. Moreover, our efficient variant achieves substantial reductions in latency while maintaining strong control accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2605_08712
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Articulated Kinematics to Routed Visual Control for Action-Conditioned Surgical Video Generation
Li, Bohan
Yang, Shuojue
Peng, Baorui
Guo, Xianda
Zhang, Erli
Tao, Youqi
Duan, Junfeng
Xu, Daguang
Dou, Qi
Jin, Xin
Zeng, Wenjun
Zhao, Hao
Jin, Yueming
Computer Vision and Pattern Recognition
Action-conditioned surgical video generation is a critical yet highly challenging problem for robotic surgery. The core difficulty is that low-dimensional control vectors must precisely govern complex image-space evolution. In this work, we propose a kinematic-to-visual lifting paradigm that converts articulated kinematics into a unified set of five image-aligned control modalities. Building on this representation, we introduce a hierarchically routed visual control framework that selectively activates the most relevant control modalities and motion scales. Instead of uniformly applying all control signals, our model performs hierarchical routing to dynamically allocate conditioning capacity. We further design kinematic-prior-guided routing loss functions to ensure physically meaningful, temporally stable, and efficient expert utilization. To improve efficiency, we propose a budgeted training and inference scheme that leverages routing-induced sparsity. By selectively discarding low-significance control pathways during training and execution, our approach enables adaptive computation that is complementary to standard distillation. We additionally construct a new benchmark with curated articulated annotations, obtained through human-in-the-loop semantic labeling and differentiable pose tracking, providing realistic supervision for action-conditioned surgical video generation. Extensive experiments demonstrate that our method consistently improves action faithfulness, visual fidelity, and cross-domain generalization over diverse baselines. Moreover, our efficient variant achieves substantial reductions in latency while maintaining strong control accuracy.
title From Articulated Kinematics to Routed Visual Control for Action-Conditioned Surgical Video Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.08712