Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking

Visual object tracking (vot) is considered a challenging research topic in artificial intelligence. Today, many industries rely on object tracking technologies to identify errors, monitor environments, and make timely decisions based on tracking results. Visual object tracking has enabled many in...

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Main Author: Sun, Jun
Format: Thesis
Language:English
Published: 2024
Subjects:
Online Access:http://eprints.usm.my/62677/
http://eprints.usm.my/62677/1/24%20Pages%20from%20SUN%20JUN.pdf
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author Sun, Jun
author_facet Sun, Jun
author_sort Sun, Jun
building USM Institutional Repository
collection Online Access
description Visual object tracking (vot) is considered a challenging research topic in artificial intelligence. Today, many industries rely on object tracking technologies to identify errors, monitor environments, and make timely decisions based on tracking results. Visual object tracking has enabled many innovations, such as autonomous vehicles, traffic monitoring systems, remote medical diagnostic systems, and more cutting-edge applications are on the horizon. However, among these notable achievements, it is worth noting that, unlike these object-tracking techniques, a human brain is more efficient for object tracking tasks and requires fewer resources. Recent neuroscience studies have shown that artificial neural networks organized as real cortical connectivity may perform more efficiently in complex recognition tasks. Therefore, a novel visual object tracking method based on hopfield neural networks is proposed in this study. A small-world network is employed as the topology of the neural network model. However, a biological feature is integrated into the small-world network model: the exponential decay rule, which may mimic some characteristics of the structure of the cerebral cortex. In the neural network, each pixel of video frames is assigned to a neuron at the corresponding position. Pixel strength is characterized as the state of a neuron. The video frame is memorized after all neurons in the neural network have been trained to a stable state. A bionic mechanism utilizing the associative memory property of a bionic hopfield neural network is proposed to track objects in video frames.
first_indexed 2025-11-15T19:16:33Z
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institution Universiti Sains Malaysia
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language English
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publishDate 2024
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spelling usm-626772025-07-23T04:31:35Z http://eprints.usm.my/62677/ Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking Sun, Jun QA1 Mathematics (General) Visual object tracking (vot) is considered a challenging research topic in artificial intelligence. Today, many industries rely on object tracking technologies to identify errors, monitor environments, and make timely decisions based on tracking results. Visual object tracking has enabled many innovations, such as autonomous vehicles, traffic monitoring systems, remote medical diagnostic systems, and more cutting-edge applications are on the horizon. However, among these notable achievements, it is worth noting that, unlike these object-tracking techniques, a human brain is more efficient for object tracking tasks and requires fewer resources. Recent neuroscience studies have shown that artificial neural networks organized as real cortical connectivity may perform more efficiently in complex recognition tasks. Therefore, a novel visual object tracking method based on hopfield neural networks is proposed in this study. A small-world network is employed as the topology of the neural network model. However, a biological feature is integrated into the small-world network model: the exponential decay rule, which may mimic some characteristics of the structure of the cerebral cortex. In the neural network, each pixel of video frames is assigned to a neuron at the corresponding position. Pixel strength is characterized as the state of a neuron. The video frame is memorized after all neurons in the neural network have been trained to a stable state. A bionic mechanism utilizing the associative memory property of a bionic hopfield neural network is proposed to track objects in video frames. 2024-06 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/62677/1/24%20Pages%20from%20SUN%20JUN.pdf Sun, Jun (2024) Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking. PhD thesis, Perpustakaan Hamzah Sendut.
spellingShingle QA1 Mathematics (General)
Sun, Jun
Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking
title Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking
title_full Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking
title_fullStr Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking
title_full_unstemmed Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking
title_short Developing Hopfield Neural Networks Using Gaussian Distributed Small World Topology For Visual Object Tracking
title_sort developing hopfield neural networks using gaussian distributed small world topology for visual object tracking
topic QA1 Mathematics (General)
url http://eprints.usm.my/62677/
http://eprints.usm.my/62677/1/24%20Pages%20from%20SUN%20JUN.pdf