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Fuzzy neural networks and neuro-fuzzy networks: A review the main techniques and applications used in the literature
PV de Campos Souza - Applied soft computing, 2020 - Elsevier
This paper presents a review of the central theories involved in hybrid models based on
fuzzy systems and artificial neural networks, mainly focused on supervised methods for …
fuzzy systems and artificial neural networks, mainly focused on supervised methods for …
Deep Neuro-Fuzzy System application trends, challenges, and future perspectives: A systematic survey
Deep neural networks (DNN) have remarkably progressed in applications involving large
and complex datasets but have been criticized as a black-box. This downside has recently …
and complex datasets but have been criticized as a black-box. This downside has recently …
Autonomous learning for fuzzy systems: a review
As one of the three pillars in computational intelligence, fuzzy systems are a powerful
mathematical tool widely used for modelling nonlinear problems with uncertainties. Fuzzy …
mathematical tool widely used for modelling nonlinear problems with uncertainties. Fuzzy …
A novel driver emotion recognition system based on deep ensemble classification
Driver emotion classification is an important topic that can raise awareness of driving habits
because many drivers are overconfident and unaware of their bad driving habits. Drivers will …
because many drivers are overconfident and unaware of their bad driving habits. Drivers will …
Enabling explainable fusion in deep learning with fuzzy integral neural networks
Information fusion is an essential part of numerous engineering systems and biological
functions, eg, human cognition. Fusion occurs at many levels, ranging from the low-level …
functions, eg, human cognition. Fusion occurs at many levels, ranging from the low-level …
Meta-analysis of deep neural networks in remote sensing: A comparative study of mono-temporal classification to support vector machines
Deep learning methods have recently found widespread adoption for remote sensing tasks,
particularly in image or pixel classification. Their flexibility and versatility has enabled …
particularly in image or pixel classification. Their flexibility and versatility has enabled …
Dense connectivity based two-stream deep feature fusion framework for aerial scene classification
Y Yu, F Liu - Remote Sensing, 2018 - mdpi.com
Aerial scene classification is an active and challenging problem in high-resolution remote
sensing imagery understanding. Deep learning models, especially convolutional neural …
sensing imagery understanding. Deep learning models, especially convolutional neural …
A self-training hierarchical prototype-based approach for semi-supervised classification
X Gu - Information Sciences, 2020 - Elsevier
This paper introduces a novel self-training hierarchical prototype-based approach for semi-
supervised classification. The proposed approach firstly identifies meaningful prototypes …
supervised classification. The proposed approach firstly identifies meaningful prototypes …
Deep learning for finger-knuckle-print identification system based on PCANet and SVM classifier
Biometric technology knows a large attention in the recent years. In the biometric security
systems, the personal identity recognition depends on their behavioral, biological or …
systems, the personal identity recognition depends on their behavioral, biological or …
Self-organizing fuzzy inference ensemble system for big streaming data classification
An evolving intelligent system (EIS) is able to self-update its system structure and meta-
parameters from streaming data. However, since the majority of EISs are implemented on a …
parameters from streaming data. However, since the majority of EISs are implemented on a …