Treffer: Multi-prior guided depth map super-resolution based on a diffusion model.

Title:
Multi-prior guided depth map super-resolution based on a diffusion model.
Authors:
Zeng, Ying1 (AUTHOR) 2300432023@email.szu.edu.cn, Zhao, Pengfei1 (AUTHOR), Shi, Wuzhen1 (AUTHOR) wzhshi@szu.edu.cn, Ji, Jianhua1 (AUTHOR), Cao, Wenming1 (AUTHOR), He, Zhiquan1 (AUTHOR) hzhiquan@gmail.com, Wen, Yang1 (AUTHOR) wen_yang@szu.edu.cn
Source:
Visual Computer. Dec2025, Vol. 41 Issue 15, p12663-12678. 16p.
Database:
Academic Search Index

Weitere Informationen

Guided depth super-resolution (GDSR) aims to reconstruct high-resolution (HR) depth maps from low-resolution (LR) counterparts with the aid of aligned HR RGB images. However, existing methods exhibit limited capability in learning and representing prior knowledge and high-frequency components, often resulting in degraded structural accuracy and detail fidelity. Moreover, most current approaches lack effective integration of prior information and struggle to recover fine-grained details. To address these limitations, we propose a novel multi-prior guided depth super-resolution framework based on diffusion model. Specifically, a multi-prior guided information extraction block is designed to extract color and edge priors, providing complementary high-frequency guidance. We further introduce a multi-headed channel-wise self-attention (MCSA) module and a feature optimized selection module (FOSM) to enhance feature extraction and preserve critical information. Besides, reconstruction module based on diffusion model is employed to denoise and generate high-quality depth maps, ensuring spatial consistency and edge sharpness. Extensive experiments demonstrate that our proposed method outperforms existing state-of-the-art techniques in both accuracy and visual quality. [ABSTRACT FROM AUTHOR]