A Methodology to Identify Cognition Gaps in Visual Recognition Applications Based on Convolutional Neural Networks

10/05/2021
by   Hannes Vietz, et al.
0

Developing consistently well performing visual recognition applications based on convolutional neural networks, e.g. for autonomous driving, is very challenging. One of the obstacles during the development is the opaqueness of their cognitive behaviour. A considerable amount of literature has been published which describes irrational behaviour of trained CNNs showcasing gaps in their cognition. In this paper, a methodology is presented that creates worstcase images using image augmentation techniques. If the CNN's cognitive performance on such images is weak while the augmentation techniques are supposedly harmless, a potential gap in the cognition has been found. The presented worst-case image generator is using adversarial search approaches to efficiently identify the most challenging image. This is evaluated with the well-known AlexNet CNN using images depicting a typical driving scenario.

READ FULL TEXT

page 5

page 6

research
08/10/2017

Systematic Testing of Convolutional Neural Networks for Autonomous Driving

We present a framework to systematically analyze convolutional neural ne...
research
03/03/2020

On the rate of convergence of image classifiers based on convolutional neural networks

Image classifiers based on convolutional neural networks are defined, an...
research
09/05/2023

Traffic Light Recognition using Convolutional Neural Networks: A Survey

Real-time traffic light recognition is essential for autonomous driving....
research
06/18/2002

Behaviour-based Knowledge Systems: An Epigenetic Path from Behaviour to Knowledge

In this paper we expose the theoretical background underlying our curren...
research
10/14/2020

Auto-calibration Method Using Stop Signs for Urban Autonomous Driving Applications

For use of cameras on an intelligent vehicle, driving over a major bump ...
research
06/19/2020

Keep Your AI-es on the Road: Tackling Distracted Driver Detection with Convolutional Neural Networks and Targeted Data Augmentation

According to the World Health Organization, distracted driving is one of...

Please sign up or login with your details

Forgot password? Click here to reset