DEEP LEARNING FOR HAZARDOUS CHEMICALS INDUCED SKIN DISEASES CLASSIFICATION: A COMPREHENSIVE ANALYSIS ON INCEPTIONV3 ARCHITECTURE AND MODEL EVALUATION

ICTACT Journal on Data Science and Machine Learning ( Volume: 5 , Issue: 2 )

Abstract

This research investigates the utilization of deep learning with focus on the InceptionV3 architecture for the categorization of skin conditions induced by contact with hazardous chemicals. The model trained using a carefully curated dataset comprising images of various skin diseases achieves an overall prediction accuracy of 66.67% successfully identifying four out of six evaluated classes. While promising potential practical applications, the analysis reveals a tendency towards over fitting, evidenced by the discrepancy between training and validation accuracies and losses. Future research should focus on mitigating over fitting and expanding the dataset to enhance the model’s generalizability and reliability across a diverse range of cases.

Authors

Amar T. Banmare1, Nitin K. Choudhari2, Archana R. Chaudhari3
Rashtrasant Tukadoji Maharaj Nagpur University, India1, Priyadarshini Bhagwati College of Engineering, India 2,3

Keywords

Skin Disease Classification, Deep Learning, InceptionV3, Hazardous Chemical, Model Evaluation

Published By
ICTACT
Published In
ICTACT Journal on Data Science and Machine Learning
( Volume: 5 , Issue: 2 )
Date of Publication
March 2024
Pages
569 - 575