Objective, Absolute and Hue-aware Metrics for Intrinsic Image Decomposition on Real-World Scenes: A Proof of Concept
By: Shogo Sato , Masaru Tsuchida , Mariko Yamaguchi and more
Potential Business Impact:
Makes computer pictures show true colors and light.
Intrinsic image decomposition (IID) is the task of separating an image into albedo and shade. In real-world scenes, it is difficult to quantitatively assess IID quality due to the unavailability of ground truth. The existing method provides the relative reflection intensities based on human-judged annotations. However, these annotations have challenges in subjectivity, relative evaluation, and hue non-assessment. To address these, we propose a concept of quantitative evaluation with a calculated albedo from a hyperspectral imaging and light detection and ranging (LiDAR) intensity. Additionally, we introduce an optional albedo densification approach based on spectral similarity. This paper conducted a concept verification in a laboratory environment, and suggested the feasibility of an objective, absolute, and hue-aware assessment. (This paper is accepted by IEEE ICIP 2025. )
Similar Papers
Ordinality of Visible-Thermal Image Intensities for Intrinsic Image Decomposition
CV and Pattern Recognition
Shows objects' true colors and shadows using heat.
Evaluation of Objective Image Quality Metrics for High-Fidelity Image Compression
Multimedia
Makes sure pictures stay clear even when squeezed.
Spectral Compressive Imaging via Chromaticity-Intensity Decomposition
CV and Pattern Recognition
Lets cameras see true colors, not just light.