Rethinking Surgical Captioning: End-to-End Window-Based MLP Transformer Using Patches
This work addresses the challenge of real-time deployment in robotic surgery by reducing computational overhead and annotation costs, though it is incremental as it adapts existing techniques to a specific domain.
The paper tackles the problem of surgical captioning by proposing an end-to-end model that eliminates the need for object detectors or feature extractors, using a patch-based shifted window technique to achieve faster inference speed and less computation while maintaining performance on two surgical datasets.
Surgical captioning plays an important role in surgical instruction prediction and report generation. However, the majority of captioning models still rely on the heavy computational object detector or feature extractor to extract regional features. In addition, the detection model requires additional bounding box annotation which is costly and needs skilled annotators. These lead to inference delay and limit the captioning model to deploy in real-time robotic surgery. For this purpose, we design an end-to-end detector and feature extractor-free captioning model by utilizing the patch-based shifted window technique. We propose Shifted Window-Based Multi-Layer Perceptrons Transformer Captioning model (SwinMLP-TranCAP) with faster inference speed and less computation. SwinMLP-TranCAP replaces the multi-head attention module with window-based multi-head MLP. Such deployments primarily focus on image understanding tasks, but very few works investigate the caption generation task. SwinMLP-TranCAP is also extended into a video version for video captioning tasks using 3D patches and windows. Compared with previous detector-based or feature extractor-based models, our models greatly simplify the architecture design while maintaining performance on two surgical datasets. The code is publicly available at https://github.com/XuMengyaAmy/SwinMLP_TranCAP.