Redirecting to original paper in 30 seconds...
Click below to go immediately or wait for automatic redirect
📄 Abstract
Abstract: The image enhancement methods based on 3D lookup tables (3D LUTs) efficiently
reduce both model size and runtime by interpolating pre-calculated values at
the vertices. However, the 3D LUT methods have a limitation due to their lack
of spatial information, as they convert color values on a point-by-point basis.
Although spatial-aware 3D LUT methods address this limitation, they introduce
additional modules that require a substantial number of parameters, leading to
increased runtime as image resolution increases. To address this issue, we
propose a method for generating image-adaptive LUTs by focusing on the
redundant parts of the tables. Our efficient framework decomposes a 3D LUT into
a linear sum of low-dimensional LUTs and employs singular value decomposition
(SVD). Furthermore, we enhance the modules for spatial feature fusion to be
more cache-efficient. Extensive experimental results demonstrate that our model
effectively decreases both the number of parameters and runtime while
maintaining spatial awareness and performance.