Super Neurons

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Date

2023

Journal Title

Journal ISSN

Volume Title

Publisher

Ieee-Inst Electrical Electronics Engineers Inc

Open Access Color

HYBRID

Green Open Access

Yes

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Publicly Funded

No
Impulse
Top 10%
Influence
Average
Popularity
Top 10%

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Journal Issue

Abstract

Self-Organized Operational Neural Networks (Self-ONNs) have recently been proposed as new-generation neural network models with nonlinear learning units, i.e., the generative neurons that yield an elegant level of diversity; however, like its predecessor, conventional Convolutional Neural Networks (CNNs), they still have a common drawback: localized (fixed) kernel operations. This severely limits the receptive field and information flow between layers and thus brings the necessity for deep and complex models. It is highly desired to improve the receptive field size without increasing the kernel dimensions. This requires a significant upgrade over the generative neurons to achieve the non-localized kernel operations for each connection between consecutive layers. In this article, we present superior (generative) neuron models (or super neurons in short) that allow random or learnable kernel shifts and thus can increase the receptive field size of each connection. The kernel localization process varies among the two super-neuron models. The first model assumes randomly localized kernels within a range and the second one learns (optimizes) the kernel locations during training. An extensive set of comparative evaluations against conventional and deformable convolutional, along with the generative neurons demonstrates that super neurons can empower Self-ONNs to achieve a superior learning and generalization capability with a minimal computational complexity burden. PyTorch implementation of Self-ONNs with super-neurons is now publically shared.

Description

Article; Early Access

Keywords

Convolutional neural networks, generative neurons, non-localized kernels, operational neural networks, receptive field, Operational Neural-Networks, Restoration, FOS: Computer and information sciences, Artificial Intelligence (cs.AI), Computer Science - Artificial Intelligence, Computer Vision and Pattern Recognition (cs.CV), Computer Science - Computer Vision and Pattern Recognition, 610, 113 Computer and information sciences, 113

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

Citation

WoS Q

Q1

Scopus Q

Q1
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OpenCitations Citation Count
6

Source

Ieee Transactions on Emerging Topics In Computational Intelligence

Volume

8

Issue

Start Page

206

End Page

228
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Citations

CrossRef : 4

Scopus : 6

Captures

Mendeley Readers : 16

SCOPUS™ Citations

6

checked on Mar 25, 2026

Web of Science™ Citations

6

checked on Mar 25, 2026

Downloads

11

checked on Mar 25, 2026

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1.9611

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