Indonesian Journal of Electrical Engineering and Computer Science
Vol 31, No 3: September 2023

Kidney stones detection based on deep learning and discrete wavelet transform

Fouad Shaker Tahir (University of technology)
Asma Abdulelah Abdulrahman (University of technology)



Article Info

Publish Date
01 Sep 2023

Abstract

The problem of the research is to find medical images of purity, high quality and free of impurities, which contributes to enabling doctors to obtain the results of analyzing the health status of each patient according to his disease data. Therefore, it was necessary to use discrete first chebysheve wavelets transform (DFCWT) technique in order to remove the associated impurities that appear in the medical images, and then analyze the results for all of the above, the algorithm DFCWT has been combined with and linking it to a neural network based on convolutional neural network (CNN) and this contributes to obtaining the results of analyzing image data with high accuracy and speed. The new algorithm proposed in this paper is based on deep learning finding the identification of kidney stones using DFCWT and the same process can be repeated on skin cancer, bones and fractures, processing by discrete first chebyshev wavelet transformation convolution neural network (DFCWTCNN).

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