AI Article Synopsis

  • Surgical instrument segmentation is crucial for robot-assisted surgery, but challenges like noise from reflections and motion blur complicate the process.
  • A new technique called Branch Aggregation Attention network (BAANet) has been developed, featuring a lightweight encoder and two key modules (BBA and BAF) for better feature localization and noise reduction.
  • Experimental results show BAANet is both efficient and effective, outperforming the previous top method by notable margins in mIoU scores across multiple challenging datasets.

Article Abstract

Surgical instrument segmentation is of great significance to robot-assisted surgery, but the noise caused by reflection, water mist, and motion blur during the surgery as well as the different forms of surgical instruments would greatly increase the difficulty of precise segmentation. A novel method called Branch Aggregation Attention network (BAANet) is proposed to address these challenges, which adopts a lightweight encoder and two designed modules, named Branch Balance Aggregation module (BBA) and Block Attention Fusion module (BAF), for efficient feature localization and denoising. By introducing the unique BBA module, features from multiple branches are balanced and optimized through a combination of addition and multiplication to complement strengths and effectively suppress noise. Furthermore, to fully integrate the contextual information and capture the region of interest, the BAF module is proposed in the decoder, which receives adjacent feature maps from the BBA module and localizes the surgical instruments from both global and local perspectives by utilizing a dual branch attention mechanism. According to the experimental results, the proposed method has the advantage of being lightweight while outperforming the second-best method by 4.03%, 1.53%, and 1.34% in mIoU scores on three challenging surgical instrument datasets, respectively, compared to the existing state-of-the-art methods. Code is available at https://github.com/SWT-1014/BAANet.

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Source
http://dx.doi.org/10.1109/TMI.2023.3288127DOI Listing

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