Publication | Closed Access
Building kernels from binary strings for image matching
113
Citations
21
References
2005
Year
EngineeringMachine LearningSimilarity MeasureBiometricsHistogram IntersectionAppropriate KernelsImage AnalysisString-searching AlgorithmData SciencePattern RecognitionBinary StringsMachine VisionFeature LearningKnowledge DiscoveryComputer EngineeringComputer ScienceImage SimilarityMedical Image ComputingDeep LearningComputer VisionReproducing Kernel MethodKernel MethodContent-based Image Retrieval
In the statistical learning framework, the use of appropriate kernels may be the key for substantial improvement in solving a given problem. In essence, a kernel is a similarity measure between input points satisfying some mathematical requirements and possibly capturing the domain knowledge. In this paper, we focus on kernels for images: we represent the image information content with binary strings and discuss various bitwise manipulations obtained using logical operators and convolution with nonbinary stencils. In the theoretical contribution of our work, we show that histogram intersection is a Mercer's kernel and we determine the modifications under which a similarity measure based on the notion of Hausdorff distance is also a Mercer's kernel. In both cases, we determine explicitly the mapping from input to feature space. The presented experimental results support the relevance of our analysis for developing effective trainable systems.
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