Intrinsic Image Harmonization

Zonghui Guo, Haiyong Zheng, Yufeng Jiang, Zhaorui Gu, Bing Zheng
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引用次数: 47

Abstract

Compositing an image usually inevitably suffers from inharmony problem that is mainly caused by incompatibility of foreground and background from two different images with distinct surfaces and lights, corresponding to material-dependent and light-dependent characteristics, namely, reflectance and illumination intrinsic images, respectively. Therefore, we seek to solve image harmonization via separable harmonization of reflectance and illumination, i.e., intrinsic image harmonization. Our method is based on an autoencoder that disentangles composite image into reflectance and illumination for further separate harmonization. Specifically, we harmonize reflectance through material-consistency penalty, while harmonize illumination by learning and transferring light from background to foreground, moreover, we model patch relations between foreground and background of composite images in an inharmony-free learning way, to adaptively guide our intrinsic image harmonization. Both extensive experiments and ablation studies demonstrate the power of our method as well as the efficacy of each component. We also contribute a new challenging dataset for benchmarking illumination harmonization. Code and dataset are at https://github.com/zhenglab/IntrinsicHarmony.
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内禀图像协调
合成图像通常不可避免地会遇到不和谐问题,这主要是由于两幅不同图像的前景和背景不相容,这两幅图像具有不同的表面和光线,分别对应于依赖材料和依赖光线的特征,即反射和照明的内在图像。因此,我们寻求通过反射率和照度的可分离协调来解决图像协调问题,即固有图像协调。我们的方法是基于一个自动编码器,它将合成图像分解成反射和照明,进一步分离协调。具体来说,我们通过材料一致性惩罚来协调反射率,通过学习和将光从背景转移到前景来协调照明,并且我们以无不和谐的学习方式建模复合图像的前景和背景之间的斑块关系,以自适应地指导我们的图像内在协调。广泛的实验和消融研究都证明了我们的方法的力量以及每个组件的功效。我们还提供了一个新的具有挑战性的数据集来对标照明协调。代码和数据集在https://github.com/zhenglab/IntrinsicHarmony。
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