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高动态范围成像研究进展及展望OA

Advances and prospects in high dynamic range imaging

中文摘要英文摘要

高动态范围成像技术旨在还原真实场景的亮度与色彩信息,克服传统传感器成像中普遍存在的高光过曝与暗部细节丢失问题,已拓展至自动驾驶、虚拟现实/增强现实等领域.然而,动态场景下的伪影去除仍是其核心挑战.围绕上述关键问题,系统回顾了相关数据集与评价指标,全面梳理了重要研究进展,并深入剖析了成像模型缺陷及当前技术瓶颈的内在成因.从模型泛化能力、计算复杂度及推理时间等维度,比较分析了现有先进方法的性能差异.进一步结合前沿发展趋势,给出核心基础挑战、关键性能优化与前沿技术探索三个层面的关键研究方向,以期为相关学术研究与工程实践提供参考.

High dynamic range imaging aims to recover the luminance and color information of real-world scenes,thereby overcoming the common problems of highlight saturation and shadow detail loss in conventional sensor imaging.It has been extended to applications such as autonomous driving and virtual reality/augmented reality.However,artifact removal in dynamic scenes remains a central challenge.To address this issue,the related datasets and evaluation metrics were systematically reviewed,the major research advances were comprehensively summarized,and the inherent causes of imaging model deficiencies and the current technical bottlenecks were further analyzed.It also compared and analyzed the performance differences among existing state-of-the-art methods from the perspectives of model generalization ability,computational complexity,and inference time.Building on recent development trends,three levels of important research directions were further identified,namely fundamental core challenges,key performance optimization,and frontier technology exploration,with the aim of providing a useful reference for both academic research and engineering practice.

刘晓宁;张乐;朱策

电子科技大学信息与通信工程学院,四川 成都 611731电子科技大学信息与通信工程学院,四川 成都 611731电子科技大学信息与通信工程学院,四川 成都 611731

信息技术与安全科学

高动态范围成像曝光融合运动估计Transformer扩散模型

high dynamic range imagingexposure fusionmotion estimationTransformerdiffusion model

《国防科技大学学报》 2026 (3)

52-73,22

国家自然科学基金-重点国际(地区)合作研究基金资助项目(62020106011)四川省自然科学基金重大基金资助项目(2025ZNSFSC0002)

10.11887/j.issn.1001-2486.25120043

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