核心概念
UCM-Net introduces a novel, efficient model for skin lesion segmentation using MLP and CNN, offering robust performance with minimal parameters and computational requirements.
要約
The content discusses the challenges of skin lesion segmentation in medical imaging due to diverse lesion characteristics and image quality issues. It introduces UCM-Net, highlighting its innovative approach that combines MLP and CNN to reduce parameters while maintaining efficiency. The model's performance is rigorously evaluated on various datasets, showcasing its effectiveness in skin lesion segmentation. Additionally, ablation experiments demonstrate the superiority of UCM-Net over traditional U-Net variants. The paper concludes by emphasizing the potential impact of UCM-Net in advancing early skin cancer diagnosis and treatment.
Abstract:
- Skin cancer poses a significant health challenge.
- Early diagnosis crucial for effective treatment.
- Computer-aided systems vital for detection.
Introduction:
- Skin cancer statistics highlight the severity of the issue.
- Manual interpretation of images time-consuming.
UCM-Net Model:
- Combines MLP and CNN for efficient segmentation.
- Reduces parameters while enhancing learning efficiency.
Experiments and Results:
- Evaluation on PH2, ISIC 2017, and ISIC 2018 datasets.
- Outperforms state-of-the-art models with fewer parameters.
Ablation results:
- Demonstrates superior performance compared to U-Net variants.
Conclusion:
- UCM-Net offers an efficient solution for skin lesion segmentation.
統計
UCM-NET demonstrates effectiveness with fewer than 50KB parameters and less than 0.05 Giga-Ops Per Second (GLOPs).
引用
"Early diagnosis is vital for effective treatment."
"UCM-NET outperforms EGE-Unet on various datasets."