4.7 Article

Color Alignment for Relative Color Constancy via Non-Standard References

Journal

IEEE TRANSACTIONS ON IMAGE PROCESSING
Volume 31, Issue -, Pages 6591-6604

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TIP.2022.3214107

Keywords

Image color analysis; Cameras; Lighting; Calibration; Standards; Imaging; Reflectivity; Relative colour constancy; colour correction; colour alignment; camera colour calibration

Funding

  1. European Union's Horizon 2020 Research and Innovation Program under the Marie-Sklodowska-Curie Grant [720325]
  2. Key Laboratory of Intelligent Preventive Medicine of Zhejiang Province [2020E10004]

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Relative colour constancy is crucial in scientific imaging applications, but achieving consistent colour assessment across different devices is challenging. We propose a colour alignment model that treats camera image formation as a black-box and formulates colour alignment as a three-step process: camera response calibration, response linearisation, and colour matching. The model utilizes a novel balance-of-linear-distances feature and works with non-standard colour references.
Relative colour constancy is an essential requirement for many scientific imaging applications. However, most digital cameras differ in their image formations and native sensor output is usually inaccessible, e.g., in smartphone camera applications. This makes it hard to achieve consistent colour assessment across a range of devices, and that undermines the performance of computer vision algorithms. To resolve this issue, we propose a colour alignment model that considers the camera image formation as a black-box and formulates colour alignment as a three-step process: camera response calibration, response linearisation, and colour matching. The proposed model works with non-standard colour references, i.e., colour patches without knowing the true colour values, by utilising a novel balance-of-linear-distances feature. It is equivalent to determining the camera parameters through an unsupervised process. It also works with a minimum number of corresponding colour patches across the images to be colour aligned to deliver the applicable processing. Three challenging image datasets collected by multiple cameras under various illumination and exposure conditions, including one that imitates uncommon scenes such as scientific imaging, were used to evaluate the model. Performance benchmarks demonstrated that our model achieved superior performance compared to other popular and state-of-the-art methods.

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