CVNov 17, 2025

Semi-Supervised High Dynamic Range Image Reconstructing via Bi-Level Uncertain Area Masking

arXiv:2511.12939v1h-index: 7
Originality Incremental advance
AI Analysis

This addresses the challenge of annotation-efficient HDR image reconstruction for computational photography, offering a semi-supervised approach that reduces data requirements.

The paper tackles the problem of reconstructing high dynamic range (HDR) images from low dynamic range (LDR) bursts with limited HDR ground truths, achieving comparable performance to fully-supervised methods using only 6.7% of HDR ground truths.

Reconstructing high dynamic range (HDR) images from low dynamic range (LDR) bursts plays an essential role in the computational photography. Impressive progress has been achieved by learning-based algorithms which require LDR-HDR image pairs. However, these pairs are hard to obtain, which motivates researchers to delve into the problem of annotation-efficient HDR image reconstructing: how to achieve comparable performance with limited HDR ground truths (GTs). This work attempts to address this problem from the view of semi-supervised learning where a teacher model generates pseudo HDR GTs for the LDR samples without GTs and a student model learns from pseudo GTs. Nevertheless, the confirmation bias, i.e., the student may learn from the artifacts in pseudo HDR GTs, presents an impediment. To remove this impediment, an uncertainty-based masking process is proposed to discard unreliable parts of pseudo GTs at both pixel and patch levels, then the trusted areas can be learned from by the student. With this novel masking process, our semi-supervised HDR reconstructing method not only outperforms previous annotation-efficient algorithms, but also achieves comparable performance with up-to-date fully-supervised methods by using only 6.7% HDR GTs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes