Driving assistance is increasingly used in new car models. Most driving assistance systems are based on automotive cameras and computer vision. Computer Vision, regardless of the underlying algorithms and technology, requires the images to have good image quality, defined according to the task. This notion of good image quality is still to be defined in the case of computer vision as it has very different criteria than human vision: humans have a better contrast detection ability than image chains. The aim of this article is to compare three different metrics designed for detection of objects with computer vision: the Contrast Detection Probability (CDP) [1, 2, 3, 4], the Contrast Signal to Noise Ratio (CSNR) [5] and the Frequency of Correct Resolution (FCR) [6]. For this purpose, the computer vision task of reading the characters on a license plate will be used as a benchmark. The objective is to check the correlation between the objective metric and the ability of a neural network to perform this task. Thus, a protocol to test these metrics and compare them to the output of the neural network has been designed and the pros and cons of each of these three metrics have been noted.
Valentine Klein, Theophanis Eleftheriou, Yiqi LI, Emilie Baudin, Claudio Greco, Laurent Chanas, Frédéric Guichard, "Evaluation of image quality metrics designed for DRI tasks with automotive cameras" in Electronic Imaging, 2023, pp 309-1 - 309-6, https://doi.org/10.2352/EI.2023.35.8.IQSP-309