Publication | Closed Access
Sparse representations for image decomposition with occlusions
15
Citations
14
References
1996
Year
Unknown Venue
EngineeringInteresting ObjectsAtomic DecompositionImage AnalysisPattern RecognitionSignal ReconstructionMultilinear Subspace LearningImage DecompositionComputational GeometryMachine VisionFunction Approximation ProblemInverse ProblemsComputer ScienceMedical Image ComputingSignal ProcessingComputer VisionSparse RepresentationCompressive SensingImage Templates
We study the problem of how to detect "interesting objects" appeared in a given image, I. Our approach is to treat it as a function approximation problem based on an over-redundant basis, and also account for occlusions, where the basis superposition principle is no longer valid. Since the basis (a library of image templates) is over-redundant, there are infinitely many ways to decompose I. We are motivated to select a sparse/compact representation of I, and to account for occlusions and noise. We then study a greedy and iterative "weighted L/sup p/ Matching Pursuit" strategy, with O<p<1. We use an L/sup p/ result to compute a solution, select the best template, at each stage of the pursuit.
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