Binary Multi Channel Morphological Neural Network

04/19/2022
by   Theodore Aouad, et al.
0

Neural networks and particularly Deep learning have been comparatively little studied from the theoretical point of view. Conversely, Mathematical Morphology is a discipline with solid theoretical foundations. We combine these domains to propose a new type of neural architecture that is theoretically more explainable. We introduce a Binary Morphological Neural Network (BiMoNN) built upon the convolutional neural network. We design it for learning morphological networks with binary inputs and outputs. We demonstrate an equivalence between BiMoNNs and morphological operators that we can use to binarize entire networks. These can learn classical morphological operators and show promising results on a medical imaging application.

READ FULL TEXT

page 13

page 14

research
03/23/2022

Binary Morphological Neural Network

In the last ten years, Convolutional Neural Networks (CNNs) have formed ...
research
09/01/2023

Discrete Morphological Neural Networks

A classical approach to designing binary image operators is Mathematical...
research
11/15/2020

Advances in the training, pruning and enforcement of shape constraints of Morphological Neural Networks using Tropical Algebra

In this paper we study an emerging class of neural networks based on the...
research
12/11/2012

A Learning Framework for Morphological Operators using Counter-Harmonic Mean

We present a novel framework for learning morphological operators using ...
research
02/19/2021

Going beyond p-convolutions to learn grayscale morphological operators

Integrating mathematical morphology operations within deep neural networ...
research
01/31/2023

Neuromechanical Autoencoders: Learning to Couple Elastic and Neural Network Nonlinearity

Intelligent biological systems are characterized by their embodiment in ...

Please sign up or login with your details

Forgot password? Click here to reset