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Approach to Security Provision of Machine Vision for Unmanned Vehicles of “Smart City”

Andrey Iskhakov, Elena Jharko

Year
2020
Citations
3

Abstract

By analogy to nature, sight is the main integral component of robotic complexes, including unmanned vehicles. In this connection, one of the urgent tasks in the modern development of unmanned vehicles is the solution to the problem of providing security for new advanced systems, algorithms, methods, and principles of space navigation of robots. In the paper, we present an approach to the protection of machine vision systems based on technologies of deep learning. At the heart of the approach lies the “Feature Squeezing” method that works on the phase of model operation. It allows us to detect “adversarial” examples. Considering the urgency and importance of the target process, the features of unmanned vehicle hardware platforms and also the necessity of execution of tasks on detecting of the objects in real-time mode, it was offered to carry out an additional simple computational procedure of localization and classification of required objects in case of crossing a defined in advance threshold of “adversarial” object testing.

Keywords

Computer scienceProcess (computing)Component (thermodynamics)Artificial intelligenceObject (grammar)AnalogyFeature (linguistics)RobotMode (computer interface)Adversarial system

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