CENet: Context Enhancement Network for Medical Image Segmentation
By: Afshin Bozorgpour , Sina Ghorbani Kolahi , Reza Azad and more
Potential Business Impact:
Improves medical scans to see body parts better.
Medical image segmentation, particularly in multi-domain scenarios, requires precise preservation of anatomical structures across diverse representations. While deep learning has advanced this field, existing models often struggle with accurate boundary representation, variability in organ morphology, and information loss during downsampling, limiting their accuracy and robustness. To address these challenges, we propose the Context Enhancement Network (CENet), a novel segmentation framework featuring two key innovations. First, the Dual Selective Enhancement Block (DSEB) integrated into skip connections enhances boundary details and improves the detection of smaller organs in a context-aware manner. Second, the Context Feature Attention Module (CFAM) in the decoder employs a multi-scale design to maintain spatial integrity, reduce feature redundancy, and mitigate overly enhanced representations. Extensive evaluations on both radiology and dermoscopic datasets demonstrate that CENet outperforms state-of-the-art (SOTA) methods in multi-organ segmentation and boundary detail preservation, offering a robust and accurate solution for complex medical image analysis tasks. The code is publicly available at https://github.com/xmindflow/cenet.
Similar Papers
DFEN: Dual Feature Equalization Network for Medical Image Segmentation
CV and Pattern Recognition
Makes medical pictures clearer for doctors to see.
Rethinking Boundary Detection in Deep Learning-Based Medical Image Segmentation
Image and Video Processing
Makes medical scans show tiny details better.
Semi-Supervised Medical Image Segmentation via Dual Networks
CV and Pattern Recognition
Helps doctors find sickness in scans with less work.