High Dynamic Range (HDR) imaging via multi-exposure fusion is an important task for most modern imaging platforms. In spite of recent developments in both hardware and algorithm innovations, challenges remain over content association ambiguities caused by saturation, motion, and various artifacts introduced during multi-exposure fusion such as ghosting, noise, and blur. In this work, we propose an Attention-guided Progressive Neural Texture Fusion (APNT-Fusion) HDR restoration model which aims to address these issues within one framework. An efficient two-stream structure is proposed which separately focuses on texture feature transfer over saturated regions and multi-exposure tonal and texture feature fusion. A neural feature transfer mechanism is proposed which establishes spatial correspondence between different exposures based on multi-scale VGG features in the masked saturated HDR domain for discriminative contextual clues over the ambiguous image areas. A progressive texture blending module is designed to blend the encoded two-stream features in a multi-scale and progressive manner. In addition, we introduce several novel attention mechanisms, i.e., the motion attention module detects and suppresses the content discrepancies among the reference images; the saturation attention module facilitates differentiating the misalignment caused by saturation from those caused by motion; and the scale attention module ensures texture blending consistency between different coder/decoder scales. We carry out comprehensive qualitative and quantitative evaluations and ablation studies, which validate that these novel modules work coherently under the same framework and outperform state-of-the-art methods.
翻译:尽管硬件和算法创新方面最近有所发展,但是由于饱和、运动和在多接触融合过程中引入的各种艺术品,例如幽灵、噪音和模糊,在内容关联的模糊性方面仍然存在挑战。在这项工作中,我们提议了一个关注引导进步神经质质变(APNT-Fusion)的《人类发展报告》恢复模型,目的是在一个框架内解决这些问题。提出了一个高效的双流结构,分别侧重于饱和地区和多感化和质和质化特征融合的质化特征转移。提议了一个神经质变机制,在以遮蔽、噪声和模糊等多感化聚合聚合聚合融合过程中引入不同曝光的VGG特性,从而建立空间对应关系。一个进步的文本混合模块旨在以多度和渐进的方式将编码的二流特征混合在一起。此外,我们还提出了几个新的关注机制,即:在饱和量化的质化和质化特征融合中,运动力关注模块通过测量和抑制不同程度的文本化模块,从而推进了这些一致性;我们通过这些运动关注模块,通过不同程度的稳定性分析,从而测量和抑制了这些图像的力度变化。