English

Mitigating Surgical Data Imbalance with Dual-Prediction Video Diffusion Model

Quantitative Methods 2025-10-10 v1 Artificial Intelligence Image and Video Processing

Abstract

Surgical video datasets are essential for scene understanding, enabling procedural modeling and intra-operative support. However, these datasets are often heavily imbalanced, with rare actions and tools under-represented, which limits the robustness of downstream models. We address this challenge with SurgiFlowVidSurgiFlowVid, a sparse and controllable video diffusion framework for generating surgical videos of under-represented classes. Our approach introduces a dual-prediction diffusion module that jointly denoises RGB frames and optical flow, providing temporal inductive biases to improve motion modeling from limited samples. In addition, a sparse visual encoder conditions the generation process on lightweight signals (e.g., sparse segmentation masks or RGB frames), enabling controllability without dense annotations. We validate our approach on three surgical datasets across tasks including action recognition, tool presence detection, and laparoscope motion prediction. Synthetic data generated by our method yields consistent gains of 10-20% over competitive baselines, establishing SurgiFlowVidSurgiFlowVid as a promising strategy to mitigate data imbalance and advance surgical video understanding methods.

Keywords

Cite

@article{arxiv.2510.07345,
  title  = {Mitigating Surgical Data Imbalance with Dual-Prediction Video Diffusion Model},
  author = {Danush Kumar Venkatesh and Adam Schmidt and Muhammad Abdullah Jamal and Omid Mohareri},
  journal= {arXiv preprint arXiv:2510.07345},
  year   = {2025}
}

Comments

29 pages, 16 figures

R2 v1 2026-07-01T06:24:45.067Z