Robust real-time polyp detection system design based on YOLO algorithms by optimizing activation functions and hyper-parameters with artificial bee colony (ABC)
Ahmet Karaman(Acıbadem University), Derviş Karaboğa(King Abdulaziz University), İshak Paçal(Fenerbahçe University), Bahriye Akay(Erciyes University), Alper Baştürk(Erciyes University), Seymanur Coskun(Acıbadem University), Ufuk Nalbantoğlu(Erciyes University), Ömür Şahin(Erciyes University)
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