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Object Tracking in Video Sequences by Unsupervised Learning

机译:视频序列中无监督学习的对象跟踪

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摘要

A Growing Competitive Neural Network system is presented as a precise method to track moving objects for video-surveillance. The number of neurons in this neural model can be automatically increased or decreased in order to get a one-to-one association between objects currently in the scene and neurons. This association is kept in each frame, what constitutes the foundations of this tracking system. Experiments show that our method is capable to accurately track objects in real-world video sequences.
机译:提出了一种日益增长的竞争神经网络系统,作为跟踪视频监控运动对象的精确方法。该神经模型中神经元的数量可以自动增加或减少,以使场景中当前对象与神经元之间一对一关联。这种关联保持在每个框架中,这构成了此跟踪系统的基础。实验表明,我们的方法能够准确跟踪真实视频序列中的对象。

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