MM-OR

Dataset Information
Modalities
Images, Videos, Texts, Graphs, 3D, Audio, Point cloud, Medical, Time series, Speech, RGB-D
Languages
English, German
Introduced
2025
License
Homepage

Overview

Operating rooms (ORs) are complex, high-stakes environments requiring precise understanding of interactions among medical staff, tools, and equipment for enhancing surgical assistance, situational awareness, and patient safety. Current datasets fall short in scale, realism and do not capture the multimodal nature of OR scenes, limiting progress in OR modeling. To this end, we introduce MM-OR, a realistic and large-scale multimodal spatiotemporal OR dataset, and the first dataset to enable multimodal scene graph generation. MM-OR captures comprehensive OR scenes containing RGB-D data, detail views, audio, speech transcripts, robotic logs, and tracking data and is annotated with panoptic segmentations, semantic scene graphs, and downstream task labels. Further, we propose MM2SG, the first multimodal large vision-language model for scene graph generation, and through extensive experiments, demonstrate its ability to effectively leverage multimodal inputs. Together, MM-OR and MM2SG establish a new benchmark for holistic OR understanding, and open the path towards multimodal scene analysis in complex, high-stakes environments.

Paper: https://arxiv.org/abs/2503.02579

Variants: MM-OR

Associated Benchmarks

This dataset is used in 2 benchmarks:

Recent Benchmark Submissions

Task Model Paper Date
Scene Graph Generation MM2SG MM-OR: A Large Multimodal Operating … 2025-03-04
2D Panoptic Segmentation MM-OR MM-OR: A Large Multimodal Operating … 2025-03-04

Research Papers

Recent papers with results on this dataset: