University Sétif 1 FERHAT ABBAS Faculty of Sciences
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Auteur Aymen kara mahammed |
Documents disponibles écrits par cet auteur
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Titre : Deep Learning for Medical Object Detection and Segmentation : Case of Osteoarthritis Disease Type de document : texte imprimé Auteurs : Ouassim boukhennoufa, Auteur ; Aymen kara mahammed, Auteur ; Abdelouahab Moussaoui, Directeur de thèse Année de publication : 2022 Importance : 1 vol (105 f .) Format : 29cm Langues : Français (fre) Catégories : Thèses & Mémoires:Informatique Mots-clés : Transfer learning
Vision transformersIndex. décimale : 004 Informatique Résumé :
Osteoarthritis disease is mainly caused due to the damage to the knee joints, and
since it is damaged, and diagnosed at late stages, there is almost no chance to reverse
and cure the bone, which means that the patient will lose the ability to walk in a normal
way and doing physical activities, and may entirely lose the use of his knees. In this
thesis we want to propose novel classification models based on deep learning that will be
able to classify and identify different grades of the osteoarthritis disease, and also object
detectors to compare them to the classification models. We propose seven customized
transfer learning models, we also proposed 7 Vision transformers models. In order to
evaluate our model, we have compared the diagnosis of 6 experts in relation to deep
learning with the performance of our models. Our proposed models outperformed the
diagnosis of the previously published works using the same data, where we obtained
an accuracy of up to 93.87% with early-stage detection. In addition, object detection
approaches were proposed based on YoLo to compare them to classification models.Côte titre : MAI/0617 En ligne : https://drive.google.com/file/d/1wy5MIfktmP63KzGlInLn58_HPt-I2S7r/view?usp=share [...] Format de la ressource électronique : Deep Learning for Medical Object Detection and Segmentation : Case of Osteoarthritis Disease [texte imprimé] / Ouassim boukhennoufa, Auteur ; Aymen kara mahammed, Auteur ; Abdelouahab Moussaoui, Directeur de thèse . - 2022 . - 1 vol (105 f .) ; 29cm.
Langues : Français (fre)
Catégories : Thèses & Mémoires:Informatique Mots-clés : Transfer learning
Vision transformersIndex. décimale : 004 Informatique Résumé :
Osteoarthritis disease is mainly caused due to the damage to the knee joints, and
since it is damaged, and diagnosed at late stages, there is almost no chance to reverse
and cure the bone, which means that the patient will lose the ability to walk in a normal
way and doing physical activities, and may entirely lose the use of his knees. In this
thesis we want to propose novel classification models based on deep learning that will be
able to classify and identify different grades of the osteoarthritis disease, and also object
detectors to compare them to the classification models. We propose seven customized
transfer learning models, we also proposed 7 Vision transformers models. In order to
evaluate our model, we have compared the diagnosis of 6 experts in relation to deep
learning with the performance of our models. Our proposed models outperformed the
diagnosis of the previously published works using the same data, where we obtained
an accuracy of up to 93.87% with early-stage detection. In addition, object detection
approaches were proposed based on YoLo to compare them to classification models.Côte titre : MAI/0617 En ligne : https://drive.google.com/file/d/1wy5MIfktmP63KzGlInLn58_HPt-I2S7r/view?usp=share [...] Format de la ressource électronique : Exemplaires (1)
Code-barres Cote Support Localisation Section Disponibilité MAI/0617 MAI/0617 Mémoire Bibliothéque des sciences Anglais Disponible
Disponible