Convolutional Mean: A Simple Convolutional Neural Network for Illuminant Estimation
About
We present Convolutional Mean (CM) - a simple and fast convolutional neural network for illuminant estimation. Our proposed method only requires a small neural network model (1.1K parameters) and a 48 x 32 thumbnail input image. Our unoptimized Python implementation takes 1 ms/image, which is arguably 3-3750x faster than the current leading solutions with similar accuracy. Using two public datasets, we show that our proposed light-weight method offers accuracy comparable to the current leading methods' (which consist of thousands/millions of parameters) across several measures.
Han Gong• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Color Correction | Proposed dataset aligned Mirrorless sensors 1.0 (test) | dE00 Mean3.17 | 15 | |
| Color Correction | Proposed dataset aligned Mobile sensors 1.0 (test) | Delta E00 Mean3.16 | 15 |
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