EM-Net: An Efficient M-Net for segmentation of surgical instruments in colonoscopy frames

Authors

  • Debapriya Banik Jadavpur University
  • Kaushiki Roy Jadavpur University
  • Debotosh Bhattacharjee Jadavpur University

DOI:

https://doi.org/10.5617/nmi.9122

Keywords:

Deep learning; Segmentation; Colonoscopy; Surgical instruments

Abstract

This paper addresses the Instrument Segmentation Task, a subtask for the “MedAI: Transparency in Medical Image Segmentation” challenge. To accomplish the subtask, our team “Med_Seg_JU” has proposed a deep learning-based framework, namely “EM-Net: An Efficient M-Net for segmentation of surgical instruments in colonoscopy frames”. The proposed framework is inspired by the M-Net architecture. In this architecture, we have incorporated the EfficientNet B3 module with U-Net as the backbone. Our proposed method obtained a JC of 0.8205, DSC of 0.8632, PRE of 0.8464, REC of 0.9005, F1 of 0.8632, and ACC of 0.9799 as evaluated by the challenge organizers on a separate test dataset. These results justify the efficacy of our proposed method in the segmentation of the surgical instruments.

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Published

2021-11-01