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Evaluation of Tracking in Video Sequences

机译:视频序列中的跟踪评估

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摘要

Observation of long sequences of video images in surveillance applications may encounter several problems due to camera motion or rotation, unexpected size and speed for objects, variation of color due to sunshine and shadowy area. Robust tracking algorithms are needed to compensate for the variations of different recroding conditions. In this paper we evaluate the detection probability of our tracking algorithm with ROC curves and with synthetic degradation methods. Recorded experimental multi-sensor data is used to compare the accuracy in different spectral bands. Moving object detection in a guarded area can produce many false alarms due to the moving environment such as trees and bushes, birds and animals. By applying tracking and classification, false alarms can be reduced avoiding unnecessary recordings and preventing the displacement of guards. Track speed, size, direction and range (distance to camera) are calculated. The objects are classified roughly into classes as person, vehicle, and fast moving object or simply as moving object. The results of the algorithm applied to the experimental data and the algorithm evaluation are presented.
机译:在监视应用中观察长序列的视频图像可能会遇到以下问题,这是由于摄像机的运动或旋转,物体的尺寸和速度异常,由于阳光和阴影区域引起的颜色变化。需要鲁棒的跟踪算法来补偿不同重演条件的变化。在本文中,我们使用ROC曲线和综合降级方法评估了跟踪算法的检测概率。记录的实验性多传感器数据用于比较不同光谱带中的精度。由于树木,灌木丛,鸟类和动物等移动环境,在保护区中检测移动物体可能会产生许多误报。通过应用跟踪和分类,可以减少错误警报,避免不必要的记录并防止警卫人员移位。计算出跟踪速度,大小,方向和范围(到摄像机的距离)。这些对象大致分为人,车辆和快速移动的对象,或者简单地分为移动的对象。给出了该算法应用于实验数据的结果和算法评价。

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