Deep learning (DL) tends to be the integral part of Autonomous Vehicles (AVs). Therefore the development of scene analysis modules that are robust to various vulnerabilities such as adversarial inputs or cyber-attacks is becoming an imperative need for the future AV perception systems. In this paper, we deal with this issue by exploring the recent progress in Artificial Intelligence (AI) and Machine Learning (ML) to provide holistic situational awareness and eliminate the effect of the previous attacks on the scene analysis modules. We propose novel multi-modal approaches against which achieve robustness to adversarial attacks, by appropriately modifying the analysis Neural networks and by utilizing late fusion methods. More specifically,...
Autonomous Vehicles (AVs) are equipped with several sensors which produce various forms of data, suc...
Autonomous driving has been a focus in both industry and academia. The autonomous vehicle decision-m...
Abstract: Deep convolutional networks have proven practical for autonomous vehicle applications as d...
Modern Autonomous Vehicles (AVs) rely on sensory data often acquired by cameras and LiDARs to percei...
Understanding the environment is crucial for autonomous vehicles to make correct driving decisions. ...
The evolution of automotive technology will eventually permit the automated driving system on the ve...
: The existence of real-world adversarial examples (RWAEs) (commonly in the form of patches) poses a...
Deep learning models have been demonstrated vulnerable to adversarial attacks even with imperceptibl...
Today’s , Artificial Intelligence is an integral field of research and is widely used in numerous mo...
Visual detection is a key task in autonomous driving, and it serves as a crucial foundation for self...
Autonomous Vehicles (AVs) have had existed and encountered certain level of success ever since mid-2...
Deep neural network is the main research branch in artificial intelligence and suitable for many dec...
Recently, security monitoring facilities have mainly adopted artificial intelligence (AI) technology...
The deep neural network (DNN) models for object detection using camera images are widely adopted in ...
Previous work has shown that Deep Neural Networks (DNNs), including those currently in use in many f...
Autonomous Vehicles (AVs) are equipped with several sensors which produce various forms of data, suc...
Autonomous driving has been a focus in both industry and academia. The autonomous vehicle decision-m...
Abstract: Deep convolutional networks have proven practical for autonomous vehicle applications as d...
Modern Autonomous Vehicles (AVs) rely on sensory data often acquired by cameras and LiDARs to percei...
Understanding the environment is crucial for autonomous vehicles to make correct driving decisions. ...
The evolution of automotive technology will eventually permit the automated driving system on the ve...
: The existence of real-world adversarial examples (RWAEs) (commonly in the form of patches) poses a...
Deep learning models have been demonstrated vulnerable to adversarial attacks even with imperceptibl...
Today’s , Artificial Intelligence is an integral field of research and is widely used in numerous mo...
Visual detection is a key task in autonomous driving, and it serves as a crucial foundation for self...
Autonomous Vehicles (AVs) have had existed and encountered certain level of success ever since mid-2...
Deep neural network is the main research branch in artificial intelligence and suitable for many dec...
Recently, security monitoring facilities have mainly adopted artificial intelligence (AI) technology...
The deep neural network (DNN) models for object detection using camera images are widely adopted in ...
Previous work has shown that Deep Neural Networks (DNNs), including those currently in use in many f...
Autonomous Vehicles (AVs) are equipped with several sensors which produce various forms of data, suc...
Autonomous driving has been a focus in both industry and academia. The autonomous vehicle decision-m...
Abstract: Deep convolutional networks have proven practical for autonomous vehicle applications as d...