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Intrinsic Image Decomposition

Intrinsic Image Decomposition is the process of separating an image into its formation components such as reflectance (albedo) and shading (illumination). Reflectance is the color of the object, invariant to camera viewpoint and illumination conditions, whereas shading, dependent on camera viewpoint and object geometry, consists of different illumination effects, such as shadows, shading and inter-reflections. Using intrinsic images, instead of the original images, can be beneficial for many computer vision algorithms. For instance, for shape-from-shading algorithms, the shading images contain important visual cues to recover geometry, while for segmentation and detection algorithms, reflectance images can be beneficial as they are independent of confounding illumination effects. Furthermore, intrinsic images are used in a wide range of computational photography applications, such as material recoloring, relighting, retexturing and stylization.

Source: CNN based Learning using Reflection and Retinex Models for Intrinsic Image Decomposition

Papers

Showing 2130 of 85 papers

TitleStatusHype
Unsupervised Intrinsic Image Decomposition with LiDAR IntensityCode0
Light Source Separation and Intrinsic Image Decomposition Under AC Illumination0
Complementary Intrinsics From Neural Radiance Fields and CNNs for Outdoor Scene Relighting0
Seeing a Rose in Five Thousand WaysCode1
Estimating Reflectance Layer from A Single Image: Integrating Reflectance Guidance and Shadow/Specular Aware LearningCode1
Discriminative feature encoding for intrinsic image decomposition0
SIGNet: Intrinsic Image Decomposition by a Semantic and Invariant Gradient Driven Network for Indoor ScenesCode0
Creating a Forensic Database of Shoeprints from Online Shoe Tread PhotosCode1
A Novel Intrinsic Image Decomposition Method to Recover Albedo for Aerial Images in Photogrammetry Processing0
Invariant Descriptors for Intrinsic Reflectance Optimization0
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