International · International Journal · 2024
Method on Efficient Operation of Multiple Models for Vision-Based In-Flight Risky Behavior Recognition in UAM Safety and Security
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computer visionrobustnessOOD segmentationre-identificationsaliencyvisual representationstructural consistencyboundary precisionInternationalInternational Journal
Citation-ready BibTeX
@article{noh2024methodonefficientoperati,
title = {Method on Efficient Operation of Multiple Models for Vision-Based In-Flight Risky Behavior Recognition in UAM Safety and Security},
author = {B. Kim and B. Noh and K. Song},
year = {2024},
journal = {Journal of Advanced Transportation (2024).}
}