Cardiac Motions Classification on Sequential PSAX Echocardiogram

@article{Aziz2018CardiacMC,
  title={Cardiac Motions Classification on Sequential PSAX Echocardiogram},
  author={Adam Shidqul Aziz and Riyanto Sigit and Achmad Basuki and Taufik Hidayat},
  journal={Indonesian Journal of Electrical Engineering and Computer Science},
  year={2018}
}
Cardiac wall motions classification on 2-dimensional (2D) echocardiographic images is an important issue for quantitative diagnosiing of heart disease. Unfortunately, the bad quality of echocardiogram cause computationally classification on cardiac wall motions is still become a big homework for many researchers to provide the best result. Echocardiogram is produced by soundwaves which absolutely make its images have speckle noise in different intensity. Therefore, this research improves a set… 
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