Skip to yearly menu bar Skip to main content


Poster

High-Resolution Image Harmonization with Adaptive-Interval Color Transformation

Quanling Meng · Liu Qinglin · Zonglin Li · Xiangyuan Lan · Shengping Zhang · Liqiang Nie


Abstract:

Existing high-resolution image harmonization methods typically rely on global color adjustment or the upsampling of parameter maps. However, these methods ignore local variations, leading to inharmonious appearances. To address this problem, we propose an Adaptive-Interval Color Transformation method (AICT), which predicts pixel-wise color transformation and adaptively adjusts the sampling interval to model local non-linearities of the color transformation at high resolution. Specifically, a parameter network is first designed to generate multiple curves as 3-dimensional lookup tables (3D LUTs), which use the color and position of each pixel to perform pixel-wise color transformation. Then, to adaptively enhance local variations, we separate a color transform into a cascade of sub-transformations using two 3D LUTs to achieve the non-uniform sampling intervals of the color transform. Finally, a global consistent weight learning method is proposed to predict an image-level weight for each color transform, utilizing global information to enhance the overall harmony. Extensive experiments demonstrate that our AICT achieves state-of-the-art performance with a lightweight architecture.

Live content is unavailable. Log in and register to view live content