Current issues in improving technical vision for use in vehicles
Abstract
Technical vision systems are actively used in automotive transport. The development of this area leads to an increase in the number of onboard cameras installed on vehicles. Using various image analysis algorithms and neural networks, it is possible to obtain information about the vehicle's surroundings and the properties of nearby objects. An important feature is the positioning of objects in space and the determination of their distance. These functions are used to determine a safe distance and to create an optimal vehicle trajectory in a given space. This article discusses various methods of image analysis for use in car assistance systems or even in self-driving cars.
About the Authors
Aleksandr G. TynyanyyRussian Federation
postgraduate student of the Department of Automobiles
Sergey R. Kristalniy
Russian Federation
Candidate of Sciences (Technical), associate professor of the Department of Automobiles
Pavel A., Krasavin
Russian Federation
Candidate of Sciences (Technical), associate professor of the Department of Automobiles,
Maksim A. Toporkov
Russian Federation
Candidate of Sciences (Technical), associate professor of the Department of Automobiles
Aleksey N. Andreev
Russian Federation
senior lecturer of the Department of Automobiles
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Review
Рецензент: А.Е. Есаков, канд. техн. наук, доц., Московский политехнический университет
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