Supervised Learning of Image Restoration with Convolutional Networks
- 1 January 2007
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- No. 15505499,p. 1-8
- https://doi.org/10.1109/iccv.2007.4408909
Abstract
Convolutional networks have achieved a great deal of success in high-level vision problems such as object recognition. Here we show that they can also be used as a general method for low-level image processing. As an example of our approach, convolutional networks are trained using gradient learning to solve the problem of restoring noisy or degraded images. For our training data, we have used electron microscopic images of neural circuitry with ground truth restorations provided by human experts. On this dataset, Markov random field (MRF), conditional random field (CRF), and anisotropic diffusion algorithms perform about the same as simple thresholding, but superior performance is obtained with a convolutional network containing over 34,000 adjustable parameters. When restored by this convolutional network, the images are clean enough to be used for segmentation, whereas the other approaches fail in this respect. We do not believe that convolutional networks are fundamentally superior to MRFs as a representation for image processing algorithms. On the contrary, the two approaches are closely related. But in practice, it is possible to train complex convolutional networks, while even simple MRF models are hindered by problems with Bayesian learning and inference procedures. Our results suggest that high model complexity is the single most important factor for good performance, and this is possible with convolutional networks.Keywords
This publication has 20 references indexed in Scilit:
- Visual Recognition and Inference Using Dynamic Overcomplete Sparse LearningNeural Computation, 2007
- Towards neural circuit reconstruction with volume electron microscopy techniquesCurrent Opinion in Neurobiology, 2006
- Reducing the Dimensionality of Data with Neural NetworksScience, 2006
- Serial Block-Face Scanning Electron Microscopy to Reconstruct Three-Dimensional Tissue NanostructurePLoS Biology, 2004
- An experimental comparison of min-cut/max- flow algorithms for energy minimization in visionPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2004
- Combining belief networks and neural networks for scene segmentationPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2002
- Image processing with neural networks—a reviewPattern Recognition, 2002
- Fast approximate energy minimization via graph cutsPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2001
- Gradient-based learning applied to document recognitionProceedings of the IEEE, 1998
- Efficiency of pseudolikelihood estimation for simple Gaussian fieldsBiometrika, 1977