conference

Skin Disease Detection using Deep Learning

Organised by: College of Computing Sciences & Information Technology, Teerthanker Mahaveer University, Moradabad,,
Publication: 2022 11th International Conference on System Modeling & Advancement in Research Trends (SMART)

Area/Stream: Social Science,
Authors: Tarun Parashar, Kapil Joshi, Ravikumar R. N, Devvret Verma, Narendra Kumar, K. Sai Krishna
Keywords: Deep learning , Planets , Neural networks , Organizations , Skin , Artificial intelligence , Medical diagnostic imaging
Conference Name: IEEE Conference

Year: 2022,
Month: December

Page No: 1380-1384,
ISSN/ISBN: 978-1-6654-8732-0,
DOI/Link: https://ieeexplore.ieee.org/document/10047465/keywords#keywords

Abstract:

Among the most avoidable diseases on the planet is epidermal concerns. At any rate being normal, its research is quite difficult due to its intricate colors, hair is present, hiding. Early diagnosis of skin diseases is critical to successful treatment. The skills and experience of such expert specialist are used to determine the procedure for identifying and treating skin damage. The analytical engagement need to be precise and perfect. The success rates including both clinical diagnostic and clinical therapeutic frameworks are steadily rising as a result of novel advances in medicine and data. AI equations and the exploitation of the vast amount of information available in health centres and medical facilities have been used in the area of skin disease diagnosis. Very many historical analyses of skin diseases using approaches for classifying them based on AI principles were compiled for this work. The experts used a variety of frameworks, tools, and computations in a collection of prior investigations. A few paradigms have proven successful in classifying skin conditions and achieving variable indicative accuracy. Various frameworks have relied on image processing and component extraction approaches to identify and predict different forms of illness. There are many systems designed to identify certain types of skin infections using clinical cues and information gleaned from tissue breakdowns after a skin biopsy of the affected area. This study explains how to use several PC vision-based methodologies (deep understanding) to afterwards predict the various types of skin disorders. This research sought to evaluate the compilations of a few well-known computations in order to design an effective PC-assisted framework for detecting breast and skin diseases that would benefit medical professionals and patients. For this reason, the treatment set and the cardiac disease dataset both underwent identical AI and deep learning calculations. The Coimbra dataset first from UCI ...

Cite this: Tarun Parashar, Kapil Joshi, Ravikumar R. N, Devvret Verma, Narendra Kumar, K. Sai Krishna,"Skin Disease Detection using Deep Learning", IEEE Conference, College of Computing Sciences & Information Technology, Teerthanker Mahaveer University, Moradabad,, 2022 11th International Conference on System Modeling & Advancement in Research Trends (SMART), December, 2022, Moradabad, India, 1380-1384, 978-1-6654-8732-0, https://ieeexplore.ieee.org/document/10047465/keywords#keywords
Views: 712 Download File
News

Index your research paper @ RSquareL

Call for research papers evaluation 

Get listed your profile under listing based on your RSquareL Value

Registration for Indexing Author Journal Publisher Conference Organizer
Research Recognition & Listing Young Researcher Young Achiever Research Excellence

Contact Us

RSquareL is the indexing platform developed by Global Academicians & Researchers Network (GARNet.). RSquareL is the abstract database of peer-reviewed scientific journals, books, and conference proceedings that covers research topics across all scientific, technical, and medical disciplines.

Contact Details

Contact Email: publish@rsquarel.org
Write to Us: Click Here
Counter Start Date: 27-12-2021 Flag Counter

© 2024 RSquareL