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16 - 20 February 2025
San Diego, California, US
Conference 13407 > Paper 13407-122
Paper 13407-122

GS-TransUNet: integrated 2D Gaussian splatting and transformer UNet for accurate skin lesion analysis

19 February 2025 • 5:30 PM - 7:00 PM PST | Golden State Ballroom

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.

Presenter

Anand Kumar
Univ. of California, San Diego (United States)
We are a group of master's students specializing in Machine Learning and Data Science. As the speaker, my academic background includes a Bachelor's in Electrical Engg at NIT, Trichy, India. I am currently pursuing a Master's degree in Electrical and Computer engineering at UCSD and working on style attribution using diffusion models at SVCL. My research experience includes 3D reconstruction and deep learning-based video compression models. Additionally, I conducted thesis research on predicting sleep stages utilizing Inter-Beat-Interval data from a medical ring, which has further enhanced my expertise in applying machine learning to healthcare challenges. Our current project, which we will present at this conference, focuses on skin lesion classification and segmentation. This work, undertaken as part of our course curriculum, has yielded promising initial results. We are enthusiastic about sharing our findings and methodologies with the conference attendees.
Application tracks: AI/ML
Presenter/Author
Anand Kumar
Univ. of California, San Diego (United States)
Author
Kavinder Roghit Kanthen
Univ. of California, San Diego (United States)
Author
Josna John
Univ. of California, San Diego (United States)