Point Cloud Color Constancy
About
In this paper, we present Point Cloud Color Constancy, in short PCCC, an illumination chromaticity estimation algorithm exploiting a point cloud. We leverage the depth information captured by the time-of-flight (ToF) sensor mounted rigidly with the RGB sensor, and form a 6D cloud where each point contains the coordinates and RGB intensities, noted as (x,y,z,r,g,b). PCCC applies the PointNet architecture to the color constancy problem, deriving the illumination vector point-wise and then making a global decision about the global illumination chromaticity. On two popular RGB-D datasets, which we extend with illumination information, as well as on a novel benchmark, PCCC obtains lower error than the state-of-the-art algorithms. Our method is simple and fast, requiring merely 16*16-size input and reaching speed over 500 fps, including the cost of building the point cloud and net inference.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Color Constancy | NYU-v2 & Diode | Mean Angular Error2.18 | 19 | |
| Color Constancy | ETH3D RAW | Mean Error0.78 | 19 | |
| Color Constancy | DepthAWB | Mean Error0.99 | 19 |