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Deep Adaptive Wavelet Network

Maria Ximena Bastidas Rodriguez, Adrien Gruson, Luisa F. Polanía, Shin Fujieda, Flavio Prieto Ortiz, Kohei Takayama, Toshiya Hachisuka

202062 citationsDOI

Abstract

Even though convolutional neural networks have become the method of choice in many fields of computer vision, they still lack interpretability and are usually designed manually in a cumbersome trial-and-error process. This paper aims at overcoming those limitations by proposing a deep neural network, which is designed in a systematic fashion and is interpretable, by integrating multiresolution analysis at the core of the deep neural network design. By using the lifting scheme, it is possible to generate a wavelet representation and design a network capable of learning wavelet coefficients in an end-to-end form. Compared to state-of-the-art architectures, the proposed model requires less hyper-parameter tuning and achieves competitive accuracy in image classification tasks. The Code implemented for this research is available at https://github.com/mxbastidasr/DAWN_WACV2020.

Topics & Concepts

InterpretabilityComputer scienceWaveletArtificial intelligenceConvolutional neural networkDeep learningCode (set theory)Representation (politics)Artificial neural networkProcess (computing)Wavelet transformMachine learningPattern recognition (psychology)Image (mathematics)Political scienceLawSet (abstract data type)Operating systemPoliticsProgramming languageImage and Signal Denoising MethodsImage Enhancement TechniquesAdvanced Image Fusion Techniques
Deep Adaptive Wavelet Network | Litcius