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AI-Enhanced Dental Image Analysis Application for Comprehensive Diagnosis

Steven Luke, Rahul Mohan, Fida ., Blessy Baby, Shemimol B

Abstract


Early and accurate detection of dental diseases is crucial in preventing complications, misdiagnosis due to carelessness or inexperience can have serious consequences. To address this problem, an AI-powered dental image analysis app is needed, which uses a trained deep learning model that uses Convolutional Neural Networks to analyze dental images from six different classes of intraoral diseases and three classes of X-rays that can detect early-stage dental diseases with precision. This research also presents a mobile app that automates dental issue identification by using an on-device TensorFlow Lite Model for prediction and a cloud- deployed CNN model for the website..


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References


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