Author:
Stepanenko Sergei, ,Yakimov Pavel, ,
Abstract
Object classification with use of neural networks is extremely current today. YOLO is one of the most often used frameworks for object classification. It produces high accuracy but the processing speed is not high enough especially in conditions of limited performance of a computer. This article researches use of a framework called NVIDIA TensorRT to optimize YOLO with the aim of increasing the image processing speed. Saving efficiency and quality of the neural network work TensorRT allows us to increase the processing speed using an optimization of the architecture and an optimization of calculations on a GPU.
Funder
Российский Фонд Фундаментальных Исследований
Ministry of Education and Science of the Russian Federation
Cited by
4 articles.
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