使用上下文感知照明恢复网络的肖像阴影去除

Jiangjian Yu;Ling Zhang;Qing Zhang;Qifei Zhang;Daiguo Zhou;Chao Liang;Chunxia Xiao
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引用次数: 0

摘要

由于脸部复杂的表面,人像阴影去除是一项具有挑战性的任务。虽然该领域的现有工作取得了实质性进展,但这些方法往往忽略了背景领域的信息。然而,这些背景信息不仅包含一些重要的照明线索,而且在消除阴影后实现面部与背景之间的照明和谐方面起着关键作用。在本文中,我们提出了一个上下文感知照明恢复网络(CIRNet)用于肖像阴影去除。我们的CIRNet由三个阶段组成。首先,粗糙阴影去除网络(CSRNet)减轻了阴影和非阴影区域之间的光照差异。其次,区域感知阴影恢复网络(ASRNet)利用背景环境和非阴影人像环境作为参考,预测阴影区域的照明特征。最后,我们引入了一个全局融合网络,自适应地融合来自不同区域的上下文信息,并生成最终的阴影去除结果。这种方法利用来自背景区域的照明信息,同时确保生成的图像中更一致的整体照明。我们的方法也可以扩展到高分辨率的肖像阴影去除和肖像镜面高光去除。此外,我们构建了第一个用于人像阴影去除的真实人脸阴影数据集,该数据集包含6200对人脸图像。定性和定量比较证明了我们提出的数据集以及我们的方法的优势。
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Portrait Shadow Removal Using Context-Aware Illumination Restoration Network
Portrait shadow removal is a challenging task due to the complex surface of the face. Although existing work in this field makes substantial progress, these methods tend to overlook information in the background areas. However, this background information not only contains some important illumination cues but also plays a pivotal role in achieving lighting harmony between the face and the background after shadow elimination. In this paper, we propose a Context-aware Illumination Restoration Network (CIRNet) for portrait shadow removal. Our CIRNet consists of three stages. First, the Coarse Shadow Removal Network (CSRNet) mitigates the illumination discrepancies between shadow and non-shadow areas. Next, the Area-aware Shadow Restoration Network (ASRNet) predicts the illumination characteristics of shadowed areas by utilizing background context and non-shadow portrait context as references. Lastly, we introduce a Global Fusion Network to adaptively merge contextual information from different areas and generate the final shadow removal result. This approach leverages the illumination information from the background region while ensuring a more consistent overall illumination in the generated images. Our approach can also be extended to high-resolution portrait shadow removal and portrait specular highlight removal. Besides, we construct the first real facial shadow dataset for portrait shadow removal, consisting of 6200 pairs of facial images. Qualitative and quantitative comparisons demonstrate the advantages of our proposed dataset as well as our method.
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