Modified Location Model Estimation using Content Based Medical Image Retrieval
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Published:2019-09-18
Issue:
Volume:
Page:36-45
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ISSN:2581-6012
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Container-title:International Journal of Management, Technology, and Social Sciences
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language:en
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Short-container-title:IJMTS
Author:
Kumar Sachin1, K. Krishna Prasad2
Affiliation:
1. CSE Dept., Hierank Business School, Noida, Affiliated to CCS University, Meerut, UP, India 2. College of Computer & Information Science, Srinivas University, Mangalore, India.
Abstract
Image has become more and more difficult to process for human beings. Perfect results cannot be obtained through Content Based Medical Image Retrieval (CBMIR). The CBMIR was implemented to find order effectively retrieve the picture from an enormous database. Deep learning has taken Artificial Intelligence (AI) at an unprecedented rate through revolution and infiltration in the medical field. It has access to vast quantities of information computing energy of effective algorithms of Machine Learning (ML). It enables Artificial Neural Network (ANN) to attain outcomes nearly every Deep Learning (DL) problems. It helps ANN to achieve results everywhere. It is a difficult task to obtain medical images from an anatomically diff dataset. The goal of the research is to automate the medical image recovery scheme that incorporates subject and place probabilities to improve efficiency. It is suggested to integrate the different data or phrases into a DL location model. It is also measuring a fresh metric stance called weighted accuracy (wPrecision). The experiment will be conducted on two big medical image datasets revealing that the suggested technique outperforms current medical imaging technologies in terms of accuracy and mean accuracy. The CBMIR have about 8,000 pictures, the proposed technique will attain excellent precision (nearly 90 percent). The proposed scheme will attain greater precision for the top ten pictures (97.5 percent) as compared to the last CBMIR recovery technologies with 15,000 picture dataset. It will assist doctors with better accuracy in obtaining medical images.
Publisher
Srinivas University
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