Afşin Baran Bayezit | Data Science and Deep Learning | Excellence in Research Award

Mr. Afşin Baran Bayezit | Data Science and Deep Learning | Excellence in Research Award

Research Assistant at Istanbul Technical University | Turkey

Mr. Afşin Baran Bayezit is a research engineer specializing in maritime artificial intelligence and control systems with extensive experience in reinforcement learning, machine learning, and control theory for autonomous systems, demonstrating strong expertise in embedded programming, ROS-based development, and system modeling, with proven contributions in designing and experimentally validating ship control algorithms, including autopilot systems, dynamic positioning, and safety analysis, while actively engaging in advanced research on ship behavior prediction, sensor integration, and real-world implementation of intelligent marine technologies.

Citation Metrics (Scopus)

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Citations
22

Documents
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h-index
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🟦 Citations 🟥 Documents 🟩 h-index


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Featured Publications

 

Keuho Park | Data Science and Deep Learning | Excellence in Research Award

Dr. Keuho Park | Data Science and Deep Learning | Excellence in Research Award

Principal Researcher at Korea Electronics Technology Institute | South Korea

Dr. Keuho Park is a dedicated researcher in advanced computer engineering applications, recognized for his multidisciplinary contributions that span smart agriculture, drone-based disease detection, hyperspectral image analysis, and innovative hybrid image-recognition solutions, and he currently serves as a Senior Researcher at the Korea Electronics Technology Institute in Seongnam-si within the IT Application Research Center, where he focuses on transforming real-world challenges into practical, technology-driven solutions through intelligent imaging systems, AI-powered analysis frameworks, and applied computational methods, and his academic foundation is strengthened through his ongoing doctoral work in Computer Engineering at Chonbuk National University in Jeonju, where he continuously expands his expertise in machine learning, sensor data interpretation, and digital transformation technologies, and throughout his career he has authored influential works including Comparison of Effects of Foliar Fertilizer Application of Hydrogen Water on Leaf Lettuce, which explores agricultural enhancement through innovative water-based treatments, Automated Detection of Rice Bakanae Disease via Drone Imagery, which showcases how drone platforms and visual analytics can modernize disease surveillance, Tunnel Emergence Detection Technology based on Hybrid Image Recognition, which presents practical image-based safety solutions integrating hybrid recognition techniques, and Classification of Apple Leaf Conditions in Hyper-Spectral Images for Diagnosis of Marssonina Blotch using mRMR and Deep Neural Network, which demonstrates his expertise in hyperspectral data classification and deep neural network modeling, and through this diverse portfolio Keunho Park has emerged as a leading contributor at the intersection of AI, agriculture, imaging science, and smart-system innovation, consistently advancing research that bridges technical sophistication with real-world impact.

Profile: Orcid

Featured Publications:

Park, K., Jung, S., Kim, H., Kim, S., Kang, D., Choi, J., & Park, K. S. (2025). Comparison of effects of foliar fertilizer application of hydrogen water on leaf lettuce.

Kim, D., Jeong, S., Kim, B., Kim, S., Kim, H., Jeong, S., Yun, G., Kim, K.-Y., & Park, K. (2022). Automated detection of rice Bakanae disease via drone imagery.

Kim, S., Jeong, S., Park, K., Kim, D., Yoo, C.-J., & Shin, J. (2021). Tunnel emergence detection technology based on hybrid image recognition.

Park, K., Hong, Y. K., Kim, G., & Lee, J. (2018). Classification of apple leaf conditions in hyper-spectral images for diagnosis of Marssonina blotch using mRMR and deep neural network.