作者
R Thandaiah Prabu, G Anitha, V Mohanavel, M Tamilselvi, G Ramkumar
发表日期
2022/11/10
研讨会论文
2022 Sixth International Conference on I-SMAC (IoT in Social, Mobile, Analytics and Cloud)(I-SMAC)
页码范围
498-504
出版商
IEEE
简介
The impartiality and reliability of evaluation, as well as the high time and expense demands, make it impossible to conduct a manual examination of infrastructure issues such as building fractures. For airborne images of damage, use unmanned aerial vehicles. Artificial intelligence and machine learning methods may help overcome the limits of many computer vision-based approaches to crack detection. But these hybrid approaches have their own limitations that can be solved. Images with damage may be more accurately detected using modified convolutional neural networks (MCNNs), which are less affected by picture noise. For fracture identification and damage assessment in civil infrastructures, a Modified Deep CNN Model (MDCNN) has been deployed. The 16-layer convolutional architecture and the Support Vector Machine are used in this design. The last layer of the CNN networks is replaced with SVM …
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