2021 IEEE International Conference on Signal and Image Processing Applications (ICSIPA) 2021
DOI: 10.1109/icsipa52582.2021.9576774
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Comparison of Dental Caries Level Images Classification Performance using KNN and SVM Methods

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Cited by 15 publications
(4 citation statements)
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“…Vertical root fracture [72,73] Deep learning Periapical pathosis [21], dental tumors [74], tooth numbering [75][76][77][78], tooth detection and identification [79][80][81], periodontal bone loss [32,82,83] Disease classification Classical image analysis approaches Tooth detection [84,85], osteoporosis assessment [86], dental caries [87] Machine learning Dental caries [88], proximal dental caries [14], molar and pre-molar teeth [89], osteoporosis [90], dental caries [15], periapical lesions [16,17], dental restorations [22], periapical roots [91], teeth with root [92], sagittal patterns [93] Deep learning Tooth numbering [94][95][96][97][98][99], dental implant stages [100], implant fixture [101], bone loss [18], periapical periodontitis [102][103][104][105], dental decay [106], approximal dental caries [19] Disease segmentation C...…”
Section: Disease Detection Machine Learningmentioning
confidence: 99%
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“…Vertical root fracture [72,73] Deep learning Periapical pathosis [21], dental tumors [74], tooth numbering [75][76][77][78], tooth detection and identification [79][80][81], periodontal bone loss [32,82,83] Disease classification Classical image analysis approaches Tooth detection [84,85], osteoporosis assessment [86], dental caries [87] Machine learning Dental caries [88], proximal dental caries [14], molar and pre-molar teeth [89], osteoporosis [90], dental caries [15], periapical lesions [16,17], dental restorations [22], periapical roots [91], teeth with root [92], sagittal patterns [93] Deep learning Tooth numbering [94][95][96][97][98][99], dental implant stages [100], implant fixture [101], bone loss [18], periapical periodontitis [102][103][104][105], dental decay [106], approximal dental caries [19] Disease segmentation C...…”
Section: Disease Detection Machine Learningmentioning
confidence: 99%
“…For osteoporosis assessment using thorax X-ray images, feature extraction was performed using GLCM followed by KNN [ 86 ]. Another early attempt evaluated two machine-learning algorithms; support vector machine (SVM) and K nearest neighbors (KNN) were used for dental caries classification based on features extracted using the GLCM algorithm [ 87 ]. Using machine-learning techniques for diagnosing proximal dental caries, Devito et al utilized an artificial multilayer perceptron neural network reporting an improvement of about 39.4% in dental caries detection with a ROC curve area of 0.884 [ 88 ].…”
Section: Approaches To Dental Disease Diagnosis Using X-ray Imagingmentioning
confidence: 99%
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“…The temporal recovery detection model through trace sequences is presented in Figure 5b. The binary classification between the temporal recovered and original data are performed similarly to [82,84] with 5-fold cross-validation. Video content that was included in the training process for each crf was not part of the testing.…”
Section: Detection Model and Evaluationmentioning
confidence: 99%