Paper ID: 2310.00289

Pubic Symphysis-Fetal Head Segmentation Using Pure Transformer with Bi-level Routing Attention

Pengzhou Cai, Jiang Lu, Yanxin Li, Libin Lan

In this paper, we propose a method, named BRAU-Net, to solve the pubic symphysis-fetal head segmentation task. The method adopts a U-Net-like pure Transformer architecture with bi-level routing attention and skip connections, which effectively learns local-global semantic information. The proposed BRAU-Net was evaluated on transperineal Ultrasound images dataset from the pubic symphysis-fetal head segmentation and angle of progression (FH-PS-AOP) challenge. The results demonstrate that the proposed BRAU-Net achieves comparable a final score. The codes will be available at https://github.com/Caipengzhou/BRAU-Net.

Submitted: Sep 30, 2023