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Visual Saliency Based Object Tracking

机译:基于视觉显着性的对象跟踪

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This paper presents a novel method of on-line object tracking with the static and motion saliency features extracted from the video frames locally, regionally and globally. When detecting the salient object, the saliency features are effectively combined in Conditional Random Field (CRF). Then Particle Filter is used when tracking the detected object. Like the attention shifting mechanism of human vision, when the object being tracked disappears, our tracking algorithm can change its target to other object automatically even without re-detection. And different from many other existing tracking methods, our algorithm has little dependence on the surface appearance of the object, so it can detect any category of objects as long as they are salient, and the tracking is robust to the change of global illumination and object shape. Experiments on video clips of various objects show the reliable results of our algorithm.
机译:本文提出了一种新的在线目标跟踪方法,该方法具有从视频帧本地,区域和全局中提取的静态和运动显着性特征。当检测到显着物体时,显着特征有效地结合在条件随机场(CRF)中。然后,当跟踪检测到的对象时,将使用“粒子过滤器”。就像人类视觉的注意力转移机制一样,当被跟踪的对象消失时,我们的跟踪算法甚至可以自动将其目标更改为其他对象,而无需重新检测。与其他许多现有的跟踪方法不同,我们的算法几乎不依赖于对象的表面外观,因此它可以检测任何类别的对象,只要它们是显着的,并且该跟踪对于全局照明和对象的更改具有鲁棒性形状。在各种对象的视频剪辑上进行的实验表明了我们算法的可靠结果。

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