Many image processing methods, such as techniques for people re-identification, assume photometric constancy between different images. This study addresses the correction of photometric variations based upon changes in background areas to correct foreground areas. The authors assume a multiple light source model where all light sources can have different colours and will change over time. In training mode, the authors learn per-location relations between foreground and background colour intensities. In correction mode, the authors apply a double linear correction model based on learned relations. This double linear correction includes a dynamic local illumination correction mapping as well as an inter-camera mapping. The authors evaluate their illumination correction by computing the similarity between two images based on the earth mover's distance. The authors compare the results to a representative auto-exposure algorithm found in the recent literature plus a colour correction one based on the inverse-intensity chromaticity. Especially in complex scenarios the authors' method outperforms these state-of-the-art algorithms.
CITATION STYLE
Torres, J., Schutte, K., Bouma, H., & Menéndez, J. M. (2015). Linear colour correction for multiple illumination changes and non-overlapping cameras. IET Image Processing, 9(4), 280–289. https://doi.org/10.1049/iet-ipr.2014.0149
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