Towards an Accelerometer-Based Elderly Fall Detection System Using Cross-Disciplinary Time Series Features
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Mufti Mahmud | M. Shamim Kaiser | M. S. Kaiser | Muhammad R. Ahmed | Md. Hasan Al Banna | Tapotosh Ghosh | Mohammed A. Aseeri | Mohammed Nasir Uddin | Md. Jaber Al Nahian | Muhammad Raisuddin Ahmed | M.N. Uddin | M. Mahmud | M. Aseeri | M. H. Banna | Tapotosh Ghosh
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