000 01506nam a22001577a 4500
082 _a629.8
100 _aZabeeh Ullah Noor
_9129049
245 _aENHANCED NOVEL VIEW SYTHESIS VIA DEEP LEARNING-BASED 3D GAUSSIAN SPLATTING /
264 _aIslamabad:
_bSMME- NUST.
_c2024.
300 _a83p. ;
_bSoft Copy,
_c30cm.
500 _a3D Gaussian Splatting (3DGS) has emerged as a breakthrough in explicit radiance fields and computer graphics which has enabled precise scene representation, real time rendering, and efficient novel view synthesis. This paper explores the evolution of 3D rendering and recent advancements in 3DGS, with a particular focus on different techniques for synthesizing novel views with the incorporation of deep learning architectures especially transformers. To enhance scene quality, this research investigates the integration of monocular depth information during rendering and refines the loss function to improve reconstruction accuracy. By incorporating depth information our method enhances geometric details by capturing intricate details and reduction of artifacts. The findings contribute to the reconstruction of 3D scene with high fidelity, offering insights to optimize Gaussian Splatting technique for more efficient and realistic 3D rendering applications.
650 _aMS Robotics and Intelligent Machine Engineering
_9119486
700 _aDr Sara Baber
_9129050
856 _uhttp://10.250.8.41:8080/xmlui/handle/123456789/52946
942 _2ddc
_cTHE
999 _c613799
_d613799