GS-TransUNet: Integrated 2D Gaussian Splatting and Transformer UNet for Accurate Skin Lesion Analysis
Journal:
arXiv
Published Date:
Feb 23, 2025
Abstract
We can achieve fast and consistent early skin cancer detection with recent
developments in computer vision and deep learning techniques. However, the
existing skin lesion segmentation and classification prediction models run
independently, thus missing potential efficiencies from their integrated
execution. To unify skin lesion analysis, our paper presents the Gaussian
Splatting - Transformer UNet (GS-TransUNet), a novel approach that
synergistically combines 2D Gaussian splatting with the Transformer UNet
architecture for automated skin cancer diagnosis. Our unified deep learning
model efficiently delivers dual-function skin lesion classification and
segmentation for clinical diagnosis. Evaluated on ISIC-2017 and PH2 datasets,
our network demonstrates superior performance compared to existing
state-of-the-art models across multiple metrics through 5-fold
cross-validation. Our findings illustrate significant advancements in the
precision of segmentation and classification. This integration sets new
benchmarks in the field and highlights the potential for further research into
multi-task medical image analysis methodologies, promising enhancements in
automated diagnostic systems.