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Sang-Hyun Lee

Sang-Hyun Lee contributes to research discovery and scholarly infrastructure.

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Published work

2 published item(s)

preprint2026arXiv

Sparse-View 3D Gaussian Splatting in the Wild

We propose a 3D novel sparse-view synthesis framework for unconstrained real-world scenarios that contain distractors. Unlike existing methods that primarily perform novel-view synthesis from a sparse set of constrained images without transient elements or leverage unconstrained dense image collections to enhance 3D representation in real-world scenarios, our method not only effectively tackles sparse unconstrained image collections, but also shows high-quality 3D rendering results. To do this, we introduce reference-guided view refinement with a diffusion model using a transient mask and a reference image to enhance the 3D representation and mitigate artifacts in rendered views. Furthermore, we address sparse regions in the Gaussian field via pseudo-view generation along with a sparsity-aware Gaussian replication strategy to amplify Gaussians in the sparse regions. Extensive experiments on publicly available datasets demonstrate that our methodology consistently outperforms existing methods (e.g., PSNR - 17.2%, SSIM - 10.8%, LPIPS - 4.0%) and provides high-fidelity 3D rendering results. This advancement paves the way for realizing unconstrained real-world scenarios without labor-intensive data acquisition. Our project page is available at $\href{https://robotic-vision-lab.github.io/SaveWildGS/}{here}$

preprint2020arXiv

Determination of strain rate in modelling belt-flesh-pelvis interaction during frontal crashes

Obesity is associated with higher fatality risk and altered distribution of occupant injuries in motor vehicle crashes partially because of the increased depth of abdominal soft tissue, which results in limited and delayed engagement of the lap belt with the pelvis and increases the risk of pelvis submarining under the lap belt exposing occupant abdomen to belt loading.