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A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br
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S. Yildiz Et Al. , "A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br," ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , vol.114, 2022

Yildiz, S. Et Al. 2022. A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , vol.114 .

Yildiz, S., Aydemir, O., Memis, A., & VARLI, S., (2022). A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br. ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , vol.114.

Yildiz, Serdar Et Al. "A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br," ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , vol.114, 2022

Yildiz, Serdar Et Al. "A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br." ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , vol.114, 2022

Yildiz, S. Et Al. (2022) . "A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br." ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE , vol.114.

@article{article, author={Serdar Yildiz Et Al. }, title={A turnaround control system to automatically detect and monitor the timestamps of ground service actions in airports: A deep learning and computervision based approach br}, journal={ENGINEERING APPLICATIONS OF ARTIFICIAL INTELLIGENCE}, year=2022}