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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Object motion detection using information theoretic spatio-temporal saliency
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Object motion detection using information theoretic spatio-temporal saliency

机译:基于信息理论时空显着性的目标运动检测

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摘要

This paper proposes to employ the visual saliency for moving object detection via direct analysis from videos. Object saliency is represented by an information saliency map (ISM), which is calculated from spatio-temporal volumes. Both spatial and temporal saliencies are calculated and a dynamic fusion method developed for combination. We use dimensionality reduction and kernel density estimation to develop an efficient information theoretic based procedure for constructing the ISM. The ISM is then used for detecting foreground objects. Three publicly available Visual Surveillance databases, namely CAVIAR, PETS and OTCBVS-BENCH are selected for evaluation. Experimental results show that the proposed method is robust for both fast and slow moving object detection under illumination changes. The average detection rates are 95.42% and 95.81% while the false detection rates are 2.06% and 2.40% in CAVIAR (INRIA entrance hall and shopping center) dataset and OTCBVS-BENCH database, respectively. The average processing speed is 6.6 fps with frame resolution 320 x 240 in a typical Pentium IV computer.
机译:本文建议通过对视频进行直接分析,将视觉显着性用于运动目标检测。对象显着性由信息显着图(ISM)表示,该信息显着图是从时空量计算得出的。计算空间和时间显着性,并开发出动态融合方法以进行组合。我们使用降维和核密度估计来开发用于构建ISM的基于信息理论的有效程序。然后将ISM用于检测前景对象。选择了三个可公开获得的视觉监控数据库,即CAVIAR,PETS和OTCBVS-BENCH。实验结果表明,该方法对于光照变化下的快速和慢速运动物体检测均具有较强的鲁棒性。在CAVIAR(INRIA入口大厅和购物中心)数据集和OTCBVS-BENCH数据库中,平均检出率分别为95.42%和95.81%,而错误检出率分别为2.06%和2.40%。在典型的奔腾IV计算机中,平均处理速度为6.6 fps,帧分辨率为320 x 240。

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