X-ray Images Classifications Using Optimized Deep Learning

X-ray Images Classifications Using Optimized Deep Learning

EnglishPaperback / softback
Jangid, Mahesh
LAP Lambert Academic Publishing
EAN: 9786203202656
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Detailed information

Deep Convolutional Neural Networks or simply Convolutional Neural Networks (CNN) have recently become one of the most powerful and expressive learning models for Image Pattern Recognition, Medical Image Processing, Computer Vision, Handwritten/ Optical Character Recognition, etc. that are well-versed in performing the Classification tasks, both Binary as well as Categorical in an efficient and simple manner. Besides its wide use in various fields and domains these days, it has gained high popularity and recognition in the area of Medical Science as various Medical reports these days are highly reliable on the Deep Learning based Image recognition. In this book, we trained a Deep Structured Neural Network Model, which is basically a CNN Model over a large set of X-RAY Images Dataset called MURA (Musculoskeletal Radiographs Abnormality) and tried to predict the Abnormalities of a Radiographic Image (whether an Image is Normal or Abnormal) based on Binary classifications.
EAN 9786203202656
ISBN 6203202657
Binding Paperback / softback
Publisher LAP Lambert Academic Publishing
Publication date January 18, 2021
Pages 80
Language English
Dimensions 229 x 152 x 5
Readership General
Authors Chaurasia, Sandeep; Jangid, Mahesh; Panda, Shubhajit
Manufacturer information
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