Activity recognition in surgical videos is a key research area for developing next-generation devices and workflow monitoring systems. Since surgeries are long processes with highly-variable lengths, deep learning models used for surgical videos often consist of a two-stage setup using a backbone and temporal sequence model. In this paper, we investigate many state-of-the-art backbones and temporal models to find architectures that yield the strongest performance for surgical activity recognition. We first benchmark the models performance on a large-scale activity recognition dataset containing over 800 surgery videos captured in multiple clinical operating rooms. We further evaluate the models on the two smaller public datasets, the Cholec...
Fine-grained activity recognition enables explainable analysis of procedures for skill assessment, a...
Although the amount of raw surgical videos, namely videos captured during surgical interventions, i...
International audiencePurpose - Annotation of surgical videos is a time-consuming task which require...
Automatic surgical activity recognition enables more intelligent surgical devices and a more efficie...
International audiencePurpose: Automatic recognition of surgical activities from intraoperative surg...
Automated recognition of surgical phases is a prerequisite for computer-assisted analysis of surgeri...
Automatically recognizing surgical activities plays an important role in providing feedback to surge...
Phase recognition plays an essential role for surgical workflow analysis in computer assisted interv...
Recent advancements in deep learning methods bring computer-assistance a step closer to fulfilling p...
Most benchmarks for studying surgical interventions focus on a specific challenge instead of leverag...
Automated methods for analyzing human activities from video or sensor data are critical for enabling...
In temporal action localization, given an input video, the goal is to predict which actions it conta...
International audienceBACKGROUND AND OBJECTIVE: Automatic surgical workflow recognition is an essent...
Background: Operating room planning is a complex task as pre-operative estimations of procedure dura...
Abstract Background The growing interest in analys...
Fine-grained activity recognition enables explainable analysis of procedures for skill assessment, a...
Although the amount of raw surgical videos, namely videos captured during surgical interventions, i...
International audiencePurpose - Annotation of surgical videos is a time-consuming task which require...
Automatic surgical activity recognition enables more intelligent surgical devices and a more efficie...
International audiencePurpose: Automatic recognition of surgical activities from intraoperative surg...
Automated recognition of surgical phases is a prerequisite for computer-assisted analysis of surgeri...
Automatically recognizing surgical activities plays an important role in providing feedback to surge...
Phase recognition plays an essential role for surgical workflow analysis in computer assisted interv...
Recent advancements in deep learning methods bring computer-assistance a step closer to fulfilling p...
Most benchmarks for studying surgical interventions focus on a specific challenge instead of leverag...
Automated methods for analyzing human activities from video or sensor data are critical for enabling...
In temporal action localization, given an input video, the goal is to predict which actions it conta...
International audienceBACKGROUND AND OBJECTIVE: Automatic surgical workflow recognition is an essent...
Background: Operating room planning is a complex task as pre-operative estimations of procedure dura...
Abstract Background The growing interest in analys...
Fine-grained activity recognition enables explainable analysis of procedures for skill assessment, a...
Although the amount of raw surgical videos, namely videos captured during surgical interventions, i...
International audiencePurpose - Annotation of surgical videos is a time-consuming task which require...