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Learning context-based feature descriptors for object tracking

机译:学习基于上下文的特征描述符以进行对象跟踪

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A major problem with previous object tracking approaches is adapting object representations depending on scene context to account for changes in illumination, viewpoint changes, etc. To adapt our previous approach to deal with background changes, here we first derive some clusters from a training sequence and the corresponding object representations for those clusters. Next, for each frame of a separate test sequence, its nearest background cluster is determined and then the corresponding descriptor of that cluster is used for object representation in this frame. Experiments show that the proposed approach tracks objects and persons in natural scenes more effectively.
机译:以前的对象跟踪方法的主要问题是根据场景上下文调整对象表示,以解决光照,视点变化等的变化。为了适应我们以前的方法来处理背景变化,这里我们首先从训练序列中得出一些聚类,这些集群的相应对象表示形式。接下来,对于单独的测试序列的每个帧,确定其最近的背景簇,然后将该簇的相应描述符用于该帧中的对象表示。实验表明,该方法可以更有效地跟踪自然场景中的物体和人物。

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