Deep learning provisions in the matlab: Focus on CNN facility

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Abstract

Currently, Lung diseases are the major problem that affect the lungs which is an important the organs that allow us to survive through breathing. The diseases such as pleural effusion, Asthma, chronic bronchitis, and normal lung are detected and classified in this work. This paper presents a Computer Tomography (CT) Images of lungs for detection of diseases which is developed using ANN-BPN. The purpose of the work is to detect and classify the lung diseases by effective feature extraction through Dual-Tree Complex Wavelet Transform and GLCM Features. The entire lung is segmented from the Computer Tomography Images and the parameters are calculated from the segmented image. The parameters are calculated using GLCM. We Propose and evaluate the ANN-Back Propagation Network designed for classification of ILD patterns. The parameters gives the maximum classification Accuracy. After result we propose the Fuzzy clustering to segment the lesion part from abnormal lung.

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Aravindasamy, R., Jeffrin Rajan, M., Rama, A., & Kavitha, P. (2019). Deep learning provisions in the matlab: Focus on CNN facility. International Journal of Innovative Technology and Exploring Engineering, 8(9 Special Issue 3), 990–994. https://doi.org/10.35940/ijitee.I3211.0789S319

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