2023
DOI: 10.1051/e3sconf/202343001160
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Detecting Danger: AI-Enabled Road Crack Detection for Autonomous Vehicles

Raza Alisha,
Khatua Debnarayan,
Dutta Rachaita
et al.

Abstract: The present article proposes the deep learning concept termed ―Faster-Region Convolutional Neural Network‖ (Faster-RCNN) technique to detect cracks on road for autonomous cars. Feature extraction, preprocessing, and classification techniques have been used in this study. Several types of image datasets, such as camera images, faster-RCNN laser images, and real-time images, have been considered. With the help of GPU (graphics processing unit), the input image is processed. Thus, the density of the road is measu… Show more

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