Fine-tuned convolutional neural network for different cardiac view classification

被引:0
|
作者
B. P. Santosh Kumar
Mohd Anul Haq
P. Sreenivasulu
D. Siva
Malik Bader Alazzam
Fawaz Alassery
Sathishkumar Karupusamy
机构
[1] Y.S.R. Engineering College of Yogi Vemana University,Department of ECE
[2] Majmaah University,College of Computer Science and Information Science
[3] Audisankara College of Engineering and Technology,Department of ECE
[4] SRIT,Department of ECE
[5] Ajloun National University,Information Technology Department
[6] Taif University,Department of Computer Engineering, College of Computers and Information Technology
[7] Gobi Arts and Science College (Autonomous),undefined
来源
关键词
Cardiac view; Neural network; Ultrasound image; Ranking; Classification; And ReLU;
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学科分类号
摘要
In echocardiography, an electrocardiogram is conventionally utilised in the chronological arrangement of diverse cardiac views for measuring critical measurements. Cardiac view classification plays a significant role in the identification and diagnosis of cardiac disease. Early detection of cardiac disease can be cured or treated, and medical experts accomplish this. Computational techniques classify the views without any assistance from medical experts. The process of learning and training faces issues in feature selection, training and classification. Considering these drawbacks, there is an effective rank-based deep convolutional neural network (R-DCNN) for the proficient feature selection and classification of diverse views of ultrasound images (US). Significant features in the US image are retrieved using rank-based feature selection and used to classify views. R-DCNN attains 96.7% classification accuracy, and classification results are compared with the existing techniques. From the observation of the classification performance, the R-DCNN outperforms the existing state-of-the-art classification techniques.
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页码:18318 / 18335
页数:17
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