SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS - Problems of Information Technology

SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS - Problems of Information Technology

SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS - Problems of Information Technology

SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS - Problems of Information Technology

SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS - Problems of Information Technology
SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS - Problems of Information Technology
AZERBAIJAN NATIONAL ACADEMY OF SCIENCES

№2, 2019

SOFTWARE VIDEO DETECTOR FOR THE DETECTION, CLASSIFICATION AND COUNTING OF VEHICLES FROM CCTV CAMERAS

Evgeniy V. Ershov, Lyudmila N. Vinogradova, M.I. Chevychelov, Andrey A. Buturlakin, Еgor О. Volkov, Аnton А. Vasyaev

The article describes approaches, methods and software implementation of algorithms for detection, classification and counting of vehicles based on  convolutional neural networks of indepth learning (pp.42-48).

Keywords: convolutional neural networks, network input, frame, training, test, sample.
DOI : 10.25045/jpit.v10.i2.07
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