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Dynamic Objectness for Adaptive Tracking

机译:自适应跟踪的动态对象

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A fundamental problem of object tracking is to adapt to unseen views of the object while not getting distracted by other objects. We introduce Dynamic Objectness in a discriminative tracking framework to sporadically re-discover the tracked object based on motion. In doing so, drifting is effectively limited since tracking becomes more aware of objects as independently moving entities in the scene. The approach not only follows the object, but also the background to not easily adapt to other distracting objects. Finally, an appearance model of the object is incrementally built for an eventual re-detection after a partial or full occlusion. We evaluated it on several well-known tracking sequences and demonstrate results with superior accuracy, especially in difficult sequences with changing aspect ratios, varying scale, partial occlusion and non-rigid objects.
机译:对象跟踪的根本问题是适应对象的看法,同时不会被其他对象分散注意力。我们在鉴别的跟踪框架中引入动态对象,以偶尔基于运动重新发现跟踪对象。在这样做时,漂移是有效的限制,因为跟踪变得更加了解物体作为场景中的独立移动实体。这种方法不仅遵循对象,而且还要容易地适应其他分散注意力的物体。最后,对象的外观模型是逐渐构建的,以便在部分或完全遮挡之后的最终重新检测。我们在几种众所周知的跟踪序列中评估它,并表现出具有优异精度的结果,尤其是在具有变化的纵横比,不同的尺度,部分闭塞和非刚性物体的困难序列中。

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