Title of article :
Cervical spondylosis detection using deep dense auxiliary inception network
Author/Authors :
Pramod Chitte, Pankaj GHRCOE - Nagpur, India , Gokhale, Ulhaskumar GHRCOE - Nagpur, India , Kapur, Vivek GHRIEAT - Nagpur, India , Padole, Dinesh GHRCOE - Nagpur, India
Pages :
10
From page :
1595
To page :
1604
Abstract :
Cervical Spondylosis is a recurring spinal syndrome in which the spine progressively tightens and that can eventually become fully rigid. Early diagnosis is really an efficient way of improving the recovery rate and reducing costs. Due to the difficult and comprehensive procedure for recognizing cervical spondylosis in initial stages, this area is untreated. Strong correlations of the vertebrae makes the automatic detection procedure challenging. These minor variations in the X-ray image makes visual interpretation a challenging task involving skilled explorers. Even after this, the problem still remains untreated and also the feasibility of even an automatic detection framework has still not been addressed for this application. Thus, the Deep learning based method used to predict the some potential relevance of Cervical Spondylosis has. The proposed system can be used to detect the onset of cervical spondylosis in early stages using deep learning techniques.
Keywords :
Cervical spine , Cervical spondylosis , Deep learning , X-Ray imaging , inception
Journal title :
International Journal of Nonlinear Analysis and Applications
Serial Year :
2021
Record number :
2703100
Link To Document :
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