Centroid-Tracking-Aided Robust Object Detection for Hospital Objects
Fabiola Maria Teresa Retno Kinasih, Carmadi Machbub, Lenni Yulianti, Arief Syaichu Rohman
- 发表年份
- 2020
- 引用次数
- 8
- 访问权限
- 开放获取
摘要
COVID-19 outbreak has a big impact to people's daily life in 2020, especially in healthcare sector. As COVID-19 viruses are highly contagious, it is important to take strict measures to ensure all patients got the needed care while taking healthcare workers safety into consideration. Robot-based care is being hurriedly developed recently, and one of the important abilities for such robot is to be able to distinguish object commonly found in hospital thus the robot can make the correct action towards the correct object. For this publication, an object detector is trained to detect the hospital bed, thus it can be an input to the care robot navigation system when it is going to approach patients. As hospital beds vary from one brand to another, and this research has limited time constraint and readily available hardware, the object detector confidence is still low. Thus, a centroid tracking method is implemented to aid the hospital object detection, ensuring the robot can detect the correct bed more robustly with considerable speed for embedded implementation.
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