DBF-Net is a novel deep learning architecture that improves the accuracy of ultrasound image segmentation, particularly at lesion boundaries, by fusing information from both body and boundary features.
This paper introduces BRAU-Net, a novel deep learning architecture that leverages a dynamic sparse attention mechanism and an inverted bottleneck patch expanding module to achieve state-of-the-art results in pubic symphysis-fetal head segmentation on transperineal ultrasound images.