CVJul 1, 2021

Intrinsic Image Transfer for Illumination Manipulation

arXiv:2107.00704v24 citations
Originality Highly original
AI Analysis

This work addresses illumination-related problems in computer vision, such as image enhancement and HDR compression, offering a new paradigm for implicit per-pixel illumination handling.

The paper tackles illumination manipulation by proposing an intrinsic image transfer algorithm that creates local image translation between illumination surfaces, achieving high-quality results on natural image datasets for tasks like illumination compensation and image enhancement.

This paper presents a novel intrinsic image transfer (IIT) algorithm for illumination manipulation, which creates a local image translation between two illumination surfaces. This model is built on an optimization-based framework consisting of three photo-realistic losses defined on the sub-layers factorized by an intrinsic image decomposition. We illustrate that all losses can be reduced without the necessity of taking an intrinsic image decomposition under the well-known spatial-varying illumination illumination-invariant reflectance prior knowledge. Moreover, with a series of relaxations, all of them can be directly defined on images, giving a closed-form solution for image illumination manipulation. This new paradigm differs from the prevailing Retinex-based algorithms, as it provides an implicit way to deal with the per-pixel image illumination. We finally demonstrate its versatility and benefits to the illumination-related tasks such as illumination compensation, image enhancement, and high dynamic range (HDR) image compression, and show the high-quality results on natural image datasets.

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