TrueDeep: A systematic approach of crack detection with less data

05/30/2023
by   Ram Krishna Pandey, et al.
0

Supervised and semi-supervised semantic segmentation algorithms require significant amount of annotated data to achieve a good performance. In many situations, the data is either not available or the annotation is expensive. The objective of this work is to show that by incorporating domain knowledge along with deep learning architectures, we can achieve similar performance with less data. We have used publicly available crack segmentation datasets and shown that selecting the input images using knowledge can significantly boost the performance of deep-learning based architectures. Our proposed approaches have many fold advantages such as low annotation and training cost, and less energy consumption. We have measured the performance of our algorithm quantitatively in terms of mean intersection over union (mIoU) and F score. Our algorithms, developed with 23 on the test data and significantly better performance on multiple blind datasets.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset