研究目的
Investigating the use of gradient distribution of natural-scene images as a prior for light-microscopy images to reconstruct latent ground truth from imperfect images without imposing assumptions about the geometry of the ground-truth signal.
研究成果
The natural-scene GDP is a versatile and well-founded prior for light-microscopy images that does not impose assumptions about the geometry of the ground-truth signal but only about its gradient spectrum. The provided parametric models for the GDP lead to efficiently solvable variational problems and have been successfully applied in various image-processing tasks. However, the resulting images are biased by the prior to look more like natural-scene images, which may not be desirable for quantitative fluorometry or single-molecule quantification.
研究不足
The GDP model is based on assumptions that may not hold for all types of images, such as the independence of gradients at neighboring pixels and the rotational symmetry of the gradient distribution. The model is also limited to 8-bit grayscale images and may not be directly applicable to other bit depths without re-estimating parameters.