A Histogram-Based Low-Complexity Approach for the Effective Detection of COVID-19 Disease from CT and X-ray Images
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Enzo Baccarelli | Michele Scarpiniti | Lorenzo Piazzo | Alireza Momenzadeh | Sima Sarv Ahrabi | E. Baccarelli | M. Scarpiniti | L. Piazzo | Alireza Momenzadeh | Sima Sarv Ahrabi
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