Multimodal Learning 相关度: 9/10

CliPPER: Contextual Video-Language Pretraining on Long-form Intraoperative Surgical Procedures for Event Recognition

Florian Stilz, Vinkle Srivastav, Nassir Navab, Nicolas Padoy
arXiv: 2603.24539v1 发布: 2026-03-25 更新: 2026-03-25

AI 摘要

CliPPER通过上下文视频语言预训练,提升手术视频事件识别的准确率。

主要贡献

  • 提出Contextual Video-Text Contrastive Learning (VTC_CTX) 和 Clip Order Prediction (COP) 预训练目标
  • 引入循环一致性对齐(Cycle-Consistency Alignment)增强视频文本匹配
  • 提出Frame-Text Matching (FTM)损失函数优化视频帧与文本的对齐

方法论

利用手术视频讲座进行预训练,设计新的预训练目标和对齐方法,提高长视频理解和多模态对齐能力。

原文摘要

Video-language foundation models have proven to be highly effective in zero-shot applications across a wide range of tasks. A particularly challenging area is the intraoperative surgical procedure domain, where labeled data is scarce, and precise temporal understanding is often required for complex downstream tasks. To address this challenge, we introduce CliPPER (Contextual Video-Language Pretraining on Long-form Intraoperative Surgical Procedures for Event Recognition), a novel video-language pretraining framework trained on surgical lecture videos. Our method is designed for fine-grained temporal video-text recognition and introduces several novel pretraining strategies to improve multimodal alignment in long-form surgical videos. Specifically, we propose Contextual Video-Text Contrastive Learning (VTC_CTX) and Clip Order Prediction (COP) pretraining objectives, both of which leverage temporal and contextual dependencies to enhance local video understanding. In addition, we incorporate a Cycle-Consistency Alignment over video-text matches within the same surgical video to enforce bidirectional consistency and improve overall representation coherence. Moreover, we introduce a more refined alignment loss, Frame-Text Matching (FTM), to improve the alignment between video frames and text. As a result, our model establishes a new state-of-the-art across multiple public surgical benchmarks, including zero-shot recognition of phases, steps, instruments, and triplets. The source code and pretraining captions can be found at https://github.com/CAMMA-public/CliPPER.

标签

视频语言预训练 手术视频 事件识别

arXiv 分类

cs.CV cs.AI