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Wheelchair Detection Using Cascaded Decision Tree

机译:基于级联决策树的轮椅检测

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One of the major goals of healthcare systems is to automatically monitor patients of special needs and alarm the caregivers for providing assistant. In this paper, an efficient single-camera multidirectional wheelchair detector based on a cascaded decision tree (CDT) is proposed to detect a wheelchair and its moving direction simultaneously from video frames for a healthcare system. Our approach combines a decision tree structure and boosted-cascade classifiers to construct a new CDT that can perform early confidence decisions in a hierarchical manner to rapidly reject nonwheelchairs and decide the moving directions. We also impose the tracking history to guide detection routes in the CDT to further reduce detection time and increase detection accuracy. The experiments show over 92% detection rate under cluttered scenes.
机译:医疗保健系统的主要目标之一是自动监视有特殊需要的患者并警告护理人员以提供助手。本文提出了一种基于级联决策树(CDT)的高效单相机多向轮椅检测器,用于从医疗系统的视频帧中同时检测轮椅及其移动方向。我们的方法结合了决策树结构和增强级联分类器,以构建新的CDT,该CDT可以以分层方式执行早期的置信度决策,以快速拒绝非轮椅并确定运动方向。我们还采用跟踪历史记录来指导CDT中的检测路线,以进一步减少检测时间并提高检测精度。实验表明,在混乱的场景下,检测率超过92%。

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