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Resolution Learning in Deep Convolutional Networks Using Scale-Space Theory

Silvia L. Pintea, Nergis Tömen, Stanley F. Goes, Marco Loog, Jan van Gemert

2021IEEE Transactions on Image Processing24 citationsDOIOpen Access PDF

Abstract

Resolution in deep convolutional neural networks (CNNs) is typically bounded by the receptive field size through filter sizes, and subsampling layers or strided convolutions on feature maps. The optimal resolution may vary significantly depending on the dataset. Modern CNNs hard-code their resolution hyper-parameters in the network architecture which makes tuning such hyper-parameters cumbersome. We propose to do away with hard-coded resolution hyper-parameters and aim to learn the appropriate resolution from data. We use scale-space theory to obtain a self-similar parametrization of filters and make use of the N-Jet: a truncated Taylor series to approximate a filter by a learned combination of Gaussian derivative filters. The parameter σ of the Gaussian basis controls both the amount of detail the filter encodes and the spatial extent of the filter. Since σ is a continuous parameter, we can optimize it with respect to the loss. The proposed N-Jet layer achieves comparable performance when used in state-of-the art architectures, while learning the correct resolution in each layer automatically. We evaluate our N-Jet layer on both classification and segmentation, and we show that learning σ is especially beneficial when dealing with inputs at multiple sizes.

Topics & Concepts

Computer scienceFilter (signal processing)AlgorithmArtificial intelligenceGaussianPattern recognition (psychology)Convolutional neural networkConvolution (computer science)Parametrization (atmospheric modeling)Gaussian filterImage resolutionSegmentationDeep learningBounded functionMathematicsArtificial neural networkComputer visionImage (mathematics)PhysicsOpticsRadiative transferQuantum mechanicsMathematical analysisGenerative Adversarial Networks and Image SynthesisModel Reduction and Neural NetworksDomain Adaptation and Few-Shot Learning
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