The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography

Advancements in machine learning over the past several decades have provoked a sharp increase in humanity's ability to gather and analyze bulk data at a deep level of understanding - and use that data to make informed decisions and solve critical issues. Artificial Neural Networks (ANN's)...

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Bibliographic Details
Main Author: Oliver, Pi Raymond
Other Authors: Brundage, Cord
Format: Conference Object
Language:English
Published: 2020
Subjects:
Online Access:http://hdl.handle.net/10211.3/215579
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spelling ftcalifstateuniv:oai:dspace.calstate.edu:10211.3/215579 2023-05-15T15:50:43+02:00 The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography Oliver, Pi Raymond Brundage, Cord 2020-03-31 http://hdl.handle.net/10211.3/215579 en eng http://hdl.handle.net/10211.3/215579 neural network machine learning infrared thermography deep learning Abstract Poster Presentation Student Research 2020 ftcalifstateuniv 2022-04-13T11:45:58Z Advancements in machine learning over the past several decades have provoked a sharp increase in humanity's ability to gather and analyze bulk data at a deep level of understanding - and use that data to make informed decisions and solve critical issues. Artificial Neural Networks (ANN's) have been used to handle analysis of various high-dimensional data types - including audio, video, visual, and numerical data. Medical Infrared Thermography (IT) utilizes infrared light to produce surface-temperature measurements of thermal images which may be used for medical diagnosis and analysis. Surface temperature thermograms give insight into the subsurface blood flow and tissue properties in a medically non-invasive and cost-effective manner. Image analysis of thermograms with ANN's have already been used to diagnose conditions and identify patterns in medical imagery for humans and many other species - but in particular - there are not many examples in the literature of its use in dogs (Canis lupus familiaris). Dogs have varying thermal surface temperature patterns based on breed/mix, coat type, relative size, and other characteristics. Our research seeks to identify a normal thermal pattern/range of dogs and determine how machine learning technologies may be applied to diagnose medical phenomena therein. We are developing a Convolutional Neural Network that seeks to analyze paired thermal/visual images of dogs alongside numerical data and determine if the dog has a normal or abnormal thermal pattern. Further classification, training, and network optimization may lead to increased diagnostic capability. Conference Object Canis lupus California State University (CSU): DSpace
institution Open Polar
collection California State University (CSU): DSpace
op_collection_id ftcalifstateuniv
language English
topic neural network
machine learning
infrared thermography
deep learning
spellingShingle neural network
machine learning
infrared thermography
deep learning
Oliver, Pi Raymond
The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography
topic_facet neural network
machine learning
infrared thermography
deep learning
description Advancements in machine learning over the past several decades have provoked a sharp increase in humanity's ability to gather and analyze bulk data at a deep level of understanding - and use that data to make informed decisions and solve critical issues. Artificial Neural Networks (ANN's) have been used to handle analysis of various high-dimensional data types - including audio, video, visual, and numerical data. Medical Infrared Thermography (IT) utilizes infrared light to produce surface-temperature measurements of thermal images which may be used for medical diagnosis and analysis. Surface temperature thermograms give insight into the subsurface blood flow and tissue properties in a medically non-invasive and cost-effective manner. Image analysis of thermograms with ANN's have already been used to diagnose conditions and identify patterns in medical imagery for humans and many other species - but in particular - there are not many examples in the literature of its use in dogs (Canis lupus familiaris). Dogs have varying thermal surface temperature patterns based on breed/mix, coat type, relative size, and other characteristics. Our research seeks to identify a normal thermal pattern/range of dogs and determine how machine learning technologies may be applied to diagnose medical phenomena therein. We are developing a Convolutional Neural Network that seeks to analyze paired thermal/visual images of dogs alongside numerical data and determine if the dog has a normal or abnormal thermal pattern. Further classification, training, and network optimization may lead to increased diagnostic capability.
author2 Brundage, Cord
format Conference Object
author Oliver, Pi Raymond
author_facet Oliver, Pi Raymond
author_sort Oliver, Pi Raymond
title The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography
title_short The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography
title_full The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography
title_fullStr The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography
title_full_unstemmed The Application of Deep Learning Neural Networks in Canine Medical Infrared Thermography
title_sort application of deep learning neural networks in canine medical infrared thermography
publishDate 2020
url http://hdl.handle.net/10211.3/215579
genre Canis lupus
genre_facet Canis lupus
op_relation http://hdl.handle.net/10211.3/215579
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