Publication | Closed Access
Efficient convolutional sparse coding
129
Citations
13
References
2014
Year
Unknown Venue
Sparse RepresentationImage AnalysisMachine VisionEngineeringPattern RecognitionSparse Neural NetworkMedical Image ComputingCompressive SensingImage PatchesComputational ImagingInverse ProblemsSparse Representation TechniquesAtomic DecompositionImage RestorationDeep LearningImage DenoisingComputer Vision
When applying sparse representation techniques to images, the standard approach is to independently compute the representations for a set of overlapping image patches. This method performs very well in a variety of applications, but the independent sparse coding of each patch results in a representation that is not optimal for the image as a whole. A recent development is convolutional sparse coding, in which a sparse representation for an entire image is computed by replacing the linear combination of a set of dictionary vectors by the sum of a set of convolutions with dictionary filters. A disadvantage of this formulation is its computational expense, but the development of efficient algorithms has received some attention in the literature, with the current leading method exploiting a Fourier domain approach. The present paper introduces a new way of solving the problem in the Fourier domain, leading to substantially reduced computational cost.
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