TY - JOUR T1 - A Research on Determining the Degree of Risk by Using ResNet AU - Tepe, Serap AU - Eti, Serkan PY - 2023 DA - November DO - 10.55549/epstem.1406264 JF - The Eurasia Proceedings of Science Technology Engineering and Mathematics JO - EPSTEM PB - ISRES Publishing WT - DergiPark SN - 2602-3199 SP - 126 EP - 134 VL - 24 LA - en AB - Risk analysis, considered one of the most crucial building blocks of occupational safety with a multidisciplinary approach, is an area that requires quick solutions with proactive methods, has high operational costs, and a low error tolerance level. Utilizing image classification and enabling learning is the main goal of this study to achieve objective outcomes in risk analysis, reduce costs, increase efficiency, and ensure standardization. For the proposed paper, 325 labeled images were collected from the field, standardized to a resolution of 224x224, and a separate file was created for each category after labeling. Python's TensorFlow Keras libraries were used, and the model employed was a semi-learned ResNet model. While 501,765 parameters were learned, 23,587,712 parameters were trained from the data. The total parameter count was 24,089,477. Categorical cross-entropy was used as the loss function, Adam optimization algorithm was preferred for parameter optimization, and the Accuracy Rate metric was used to evaluate the model's quality. The learning success of the model reached 58% in 100 steps, and the maximum accuracy rate observed was determined to be 67%. Traditional risk analysis methods rely on statistical analysis of historical data to obtain results, while machine learning-based approaches allow for the evaluation of complex and multidimensional data. Machine learning-based image classification methods assist in effectively performing risk analysis in situations involving visual information. These techniques make valuable contributions to identifying and managing potential risks in different sectors. As research and applications in this field continue to grow in the future, the role of image classification in risk analysis will gain even more importance. KW - Image processing KW - Image classification KW - Risk analysis KW - ResNet KW - Occupational safety CR - Ahn, J., Park, J. Lee, S.S., Lee, K., Do, H. & Ko, J. (2023). Safefac: Video-based smart safety monitoring for preventing industrial work accidents. Expert Systems with Applications, 215. CR - Ak, Y. & Dereli, S. (2021). Bir otomasyon hattında parca secim ve ayrıstırma islemlerinde kullanılan coklu robotlar icin goruntu isleme temelli gorev ataması yapan sistem onerisi. ISITES2021, 82-90. Sakarya, Turkey. CR - Asad, M., Aidaros, O.A., Beg, R., Dhahri, M. A., Neyadi, S. A., & Hussein, M. (2017). Development of autonomous drone for gas sensing application. 2017 International Conference on Electrical and Computing Technologies and Applications (ICECTA), 1-6. CR - Balakreshnan, B., Richards, G., Nanda, G., Mao, H., Athinarayanan, R., & Zaccaria, J. (2020). PPE compliance detection using artificial intelligence in learning factories. Procedia Manuf., 45, 277–282. UR - https://doi.org/10.55549/epstem.1406264 L1 - https://dergipark.org.tr/en/download/article-file/3605171 ER -