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Human Localization in the Video Stream Using the Algorithm Based on Growing Neural Gas and Fuzzy Inference

机译:基于神经气体增长和模糊推理的算法在视频流中的人体定位

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The problem of the human body localization in the video stream using the growing neural gas and feature description based on the Histograms of Oriented Gradients is solved. The original neuro-fuzzy model of growing neural gas for reinforcement learning (GNG-FIS) is used as a basis of the algorithm. The modification of GNG-FIS algorithm using two-pass training with fuzzy remarking of classes and building of a heat map is also proposed. As follows from the experiments, the index of the correct localizations of the developed classifier was 93%, that allows the use of the algorithm in real systems of situational video analytics.
机译:解决了使用不断增长的神经气体在视频流中进行人体定位的问题,并解决了基于定向梯度直方图的特征描述问题。该算法使用了原始的用于增强学习的神经气体生长神经模糊模型(GNG-FIS)。还提出了通过对类进行模糊标记和构建热图的两遍训练对GNG-FIS算法进行的改进。从实验中可以看出,已开发分类器的正确位置索引为93%,从而可以在情景视频分析的真实系统中使用该算法。

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