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Weakly Supervised Temporal Convolutional Networks for Fine-Grained Surgical Activity Recognition.

Sanat Ramesh, Diego Dall'Alba, Cristians Gonzalez

    IEEE Transactions on Medical Imaging
    |April 8, 2023
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    Summary
    This summary is machine-generated.

    This study introduces a novel method for surgical activity recognition using phase-level annotations as weak supervision. This approach reduces the need for extensive step-level data, improving efficiency in developing intelligent surgical assistance systems.

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    Area of Science:

    • Computer Vision
    • Medical Informatics
    • Surgical Robotics

    Background:

    • Automated recognition of surgical activities (steps) is vital for intra-operative computer assistance.
    • Current vision-based methods require large amounts of manually annotated data, which is costly and time-consuming to produce.
    • Domain-specific expertise is needed for accurate annotation, posing a significant bottleneck.

    Purpose of the Study:

    • To develop a method for surgical step recognition using coarser, easier-to-annotate phase labels as weak supervision.
    • To reduce the dependency on extensively annotated videos for training activity recognition models.
    • To enable more efficient development of intelligent surgical assistance tools.

    Main Methods:

    • Proposed a novel approach using phase-level activity labels as weak supervision for step recognition.
    • Introduced a step-phase dependency loss function to leverage the weak supervision signal effectively.
    • Employed a Single-Stage Temporal Convolutional Network (SS-TCN) with a ResNet-50 backbone for end-to-end training.
    • Utilized weakly annotated videos for temporal activity segmentation and recognition.

    Main Results:

    • Demonstrated the effectiveness of the proposed weakly supervised method on a large dataset of laparoscopic gastric bypass procedures (40 videos).
    • Validated the approach on the public CATARACTS benchmark dataset (50 cataract surgeries).
    • Achieved accurate temporal activity segmentation and recognition with reduced annotation effort.

    Conclusions:

    • Weak supervision using coarser phase labels is a viable and efficient strategy for surgical step recognition.
    • The proposed SS-TCN model with step-phase dependency loss effectively learns from weakly annotated data.
    • This method significantly lowers the annotation burden, facilitating the development of intelligent intra-operative assistance.