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An Adaptive Exposure Fusion Method Using Fuzzy Logic and Multivariate Normal Conditional Random Fields

机译:基于模糊逻辑和多元正态条件随机场的自适应曝光融合方法

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摘要

High dynamic range (HDR) has wide applications involving intelligent vision sensing which includes enhanced electronic imaging, smart surveillance, self-driving cars, intelligent medical diagnosis, etc. Exposure fusion is an essential HDR technique which fuses different exposures of the same scene into an HDR-like image. However, determining the appropriate fusion weights is difficult because each differently exposed image only contains a subset of the scene’s details. When blending, the problem of local color inconsistency is more challenging; thus, it often requires manual tuning to avoid image artifacts. To address this problem, we present an adaptive coarse-to-fine searching approach to find the optimal fusion weights. In the coarse-tuning stage, fuzzy logic is used to efficiently decide the initial weights. In the fine-tuning stage, the multivariate normal conditional random field model is used to adjust the fuzzy-based initial weights which allows us to consider both intra- and inter-image information in the data. Moreover, a multiscale enhanced fusion scheme is proposed to blend input images when maintaining the details in each scale-level. The proposed fuzzy-based MNCRF (Multivariate Normal Conditional Random Fields) fusion method provided a smoother blending result and a more natural look. Meanwhile, the details in the highlighted and dark regions were preserved simultaneously. The experimental results demonstrated that our work outperformed the state-of-the-art methods not only in several objective quality measures but also in a user study analysis.
机译:高动态范围(HDR)具有涉及智能视觉传感的广泛应用,包括增强的电子成像,智能监控,自动驾驶汽车,智能医疗诊断等。曝光融合是一项必不可少的HDR技术,可将同一场景的不同曝光融合到一个场景中。类似于HDR的图像。但是,确定合适的融合权重很困难,因为每个曝光不同的图像仅包含场景细节的一个子集。混合时,局部颜色不一致的问题更具挑战性。因此,通常需要手动调整以避免图像伪影。为了解决这个问题,我们提出了一种自适应的从粗到细的搜索方法来找到最佳的融合权重。在粗调阶段,使用模糊逻辑有效地确定初始权重。在微调阶段,使用多元正常条件随机场模型来调整基于模糊的初始权重,这使我们能够考虑数据中的图像内和图像间信息。此外,提出了一种多尺度增强融合方案,以在保持每个尺度级别的细节时混合输入图像。所提出的基于模糊的MNCRF(多元正态条件随机场)融合方法提供了更平滑的融合结果和更自然的外观。同时,突出显示和黑暗区域中的细节被同时保留。实验结果表明,我们的工作不仅在几种客观的质量指标上而且在用户研究分析方面都优于最新方法。

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