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Visual Sensor Based Abnormal Event Detection with Moving Shadow Removal in Home Healthcare Applications

机译:基于视觉传感器的异常事件检测和移动阴影消除在家庭医疗保健应用中

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摘要

Vision-based abnormal event detection for home healthcare systems can be greatly improved using visual sensor-based techniques able to detect, track and recognize objects in the scene. However, in moving object detection and tracking processes, moving cast shadows can be misclassified as part of objects or moving objects. Shadow removal is an essential step for developing video surveillance systems. The goal of the primary is to design novel computer vision techniques that can extract objects more accurately and discriminate between abnormal and normal activities. To improve the accuracy of object detection and tracking, our proposed shadow removal algorithm is employed. Abnormal event detection based on visual sensor by using shape features variation and 3-D trajectory is presented to overcome the low fall detection rate. The experimental results showed that the success rate of detecting abnormal events was 97% with a false positive rate of 2%. Our proposed algorithm can allow distinguishing diverse fall activities such as forward falls, backward falls, and falling asides from normal activities.
机译:使用能够检测,跟踪和识别场景中对象的基于视觉传感器的技术,可以大大改善家庭保健系统的基于视觉的异常事件检测。但是,在移动物体检测和跟踪过程中,移动的投射阴影可能会误分类为物体或运动物体的一部分。去除阴影是开发视频监控系统的重要步骤。主要目的是设计新颖的计算机视觉技术,可以更精确地提取对象并区分异常活动和正常活动。为了提高目标检测和跟踪的准确性,我们提出了阴影去除算法。提出了基于视觉传感器的形状特征变化和3-D轨迹异常事件检测方法,以克服跌倒检测率低的问题。实验结果表明,检测到异常事件的成功率为97%,假阳性率为2%。我们提出的算法可以区分不同的坠落活动,例如向前坠落,向后坠落和从侧面坠落。

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