Despite the great success of neural networks (NN) in many application areas, it is still not obvious how to integrate an NN in a sensor fusion framework. The reason is that the computation of the for fusion required variance of NN is still a rather immature area. Here, we apply a methodology from system identification where uncertainty of the parameters in the NN are first estimated in the training phase, and then this uncertainty is propagated to the output in the prediction phase. This local approach is based on linearization, and it implicitly assumes a good signal-to-noise ratio and persistency of excitation. We illustrate the proposed method on a fundamental problem in advanced driver assistance systems (ADAS), namely to estimate the t...
Car accidents occur when headway distance is shorter than the stopping distance. Stopping distance c...
The effect of vehicle active safety systems is subject to the friction force arising from the contac...
A smart wheel is used to measure the forces at the tyre-ground interface and detect the friction pot...
Despite the great success of neural networks (NN) in many application areas, it is still not obvious...
The capabilities of Automated Emergency Braking Systems (AEB) can be significantly improved when the...
The performance of vehicle active safety systems is dependent on the friction force arising from the...
Four different machine learning methods (a convolutional neural network, a shallow neural network, a...
Autonomous cars are now becoming a reality, but there are still technical hurdles needed to be overc...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
This paper proposes a framework for uncertainty prediction in complex fusion networks, where signals...
Final ReportEmerging automated vehicles (AV) may be able to provide advanced information about the s...
The presence of adverse road conditions like water, snow, and ice is known to largely increase the c...
The effect of vehicle active safety systems is subject to the friction force arising from the contac...
One of the main challenges in developing efficient and effective winter road maintenance is to desig...
The performances of braking control systems for robotic platforms, e.g., assisted and autonomous veh...
Car accidents occur when headway distance is shorter than the stopping distance. Stopping distance c...
The effect of vehicle active safety systems is subject to the friction force arising from the contac...
A smart wheel is used to measure the forces at the tyre-ground interface and detect the friction pot...
Despite the great success of neural networks (NN) in many application areas, it is still not obvious...
The capabilities of Automated Emergency Braking Systems (AEB) can be significantly improved when the...
The performance of vehicle active safety systems is dependent on the friction force arising from the...
Four different machine learning methods (a convolutional neural network, a shallow neural network, a...
Autonomous cars are now becoming a reality, but there are still technical hurdles needed to be overc...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
This paper proposes a framework for uncertainty prediction in complex fusion networks, where signals...
Final ReportEmerging automated vehicles (AV) may be able to provide advanced information about the s...
The presence of adverse road conditions like water, snow, and ice is known to largely increase the c...
The effect of vehicle active safety systems is subject to the friction force arising from the contac...
One of the main challenges in developing efficient and effective winter road maintenance is to desig...
The performances of braking control systems for robotic platforms, e.g., assisted and autonomous veh...
Car accidents occur when headway distance is shorter than the stopping distance. Stopping distance c...
The effect of vehicle active safety systems is subject to the friction force arising from the contac...
A smart wheel is used to measure the forces at the tyre-ground interface and detect the friction pot...