Modern technologies for hiding people's faces using object tracking based on YOLOv5 and deepsort
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Дата
2024
Автори
Науковий керівник
Назва журналу
Номер ISSN
Назва тому
Видавець
КПІ ім. Ігоря Сікорського
Анотація
The object of study is a system for automated blurring of human faces in video. This article provides a detailed overview of modern technologies and principles of tracking objects in video with assigning them unique elements. Since most video editors still leave most of the work to the user, it was decided to optimize this process. The aim of this work is to reduce the time spent on the process of hiding human faces in video files. To achieve this goal, it is proposed to use a modern detector - the YOLO convolutional neural network and the DeepSORT object tracking algorithm, which uses classical approaches to filtering input data and predicting the position of an object in space, as well as a modern neural network capable of distinguishing between people's faces. As a result of this work, among free analogues on the Internet, the acceleration of face blurring was achieved up to 20%, which is a pretty good result.
Опис
Ключові слова
neural network, object detection, object recognition, detector, YOLO, DeepSORT, Kalman filter
Бібліографічний опис
Shchur, А. Modern technologies for hiding people's faces using object tracking based on YOLOv5 and deepsort / Shchur А., Polshakova O. // Адаптивні системи автоматичного управління : міжвідомчий науково-технічний збірник. – 2024. – № 1 (44). – С. 192-202. – Бібліогр.: 8 назв.