Vitamin Deficiency Detection Using Image Processing and Neural Network

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Vitamin Deficiency Detection Using Image Processing and Neural Network

Vitamin Deficiency Detection Using Image Processing and Neural Network

 

Yepuru Jayanth

Department Of Electronics and Communication Engineering

Panimalar Institute Of Technology

Chennai, India

jayanthyepuru2003@gmail.com

 

Yepuru Santhosh

Department Of Electronics and Communication Engineering

Panimalar Institute Of Technology Chennai,India

santhoshyepuru12@gmail.com

 

D.G Jagadeesh kumar

Department Of Electronics and Communication Engineering

Panimalar Institute Of Technology Chennai, India

dommarayajagadeesh366@gmail.com

 

Dr D.Arul Kumar

Department of Electronics and Communication Engineering

Panimalar Institute Of Technology Chennai, India

ecehodpit@gmail.com

 

Abstract :

This project explores the use of Convolutional Neural Networks (CNNs) for detecting vitamin deficiencies through image processing. The process begins by executing a code that facilitates the selection of a body part—tongue, lips, nails, or eyes—based on the user’s choice. After selecting a specific image of the chosen body part, the image undergoes preprocessing steps to enhance quality and features. The CNN is then trained using these preprocessed images, employing various layers and training options tailored to detect specific deficiency indicators. For instance, if the tongue is selected, the CNN classifies symptoms such as smooth texture, red color, glossitis, or an unclear mouth, each corresponding to potential deficiencies. Similarly,if lips are choosen classifications may include cracked lips, shiny red appearance, and other related symptoms. The final output displays the detected deficiency based on the image analysis, facilitating early diagnosis and intervention. This approach leverages deep learning to provide accurate and automated vitamin deficiency detection, showcasing the efficacy of CNNs in medical image analysis and preventive healthcare.