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@article{158581, author = {Anand Upadhyay and Bhavana Mishra and Aditi Singh and Aradhana Pal}, title = {Comparative Study of Pothole Recognition Using CNN and YOLOV5}, journal = {International Journal of Innovative Research in Technology}, year = {}, volume = {9}, number = {10}, pages = {244-250}, issn = {2349-6002}, url = {https://ijirt.org/article?manuscript=158581}, abstract = {Methods for recognizing potholes on roadsides goal is to evolve plans for real-time or else offline proof of identity potholes, to support real-time resistor of a vehicle (for driver help or independent driving) or else offline data gathering for road preservation. [1]It causes accidents in very high numbers. Therefore, it is a need to carry out timely inspection and maintenance to avoid the problem for road users. This paper projected a deep learning-based model that can perceive potholes initially using images, which can decrease the probability of a fortune. This model is mostly based on Convolutional Neural Network(CNN) and YOLOV5 [2]. The project can reduce the manpower for the maintenance of the roads. This project will be useful for the government for better road maintenance with less manpower in a small period. The Accuracy for the same with image processing techniques such as CNN and YOLO. using this approach, it was possible to detect potholes with an accuracy of 88% and 95% respectively.}, keywords = {Deep learning, Pothole Detection, CNN YOLO, Image processing, TensorFlow.}, month = {}, }
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