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Vision-Based People Counter Using CNN-Based Event Classification

机译:基于ViSion的人们使用基于CNN的事件分类

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This article proposes a convolutional neural network (CNN)-based people counter that classifies a given frame cube to a specific event that indicates people entering or exiting a target area to measure instantaneous people count. For the training of the proposed CNN, a training input frame cube and its corresponding class label that represents a specific event are generated using the proposed counting rules. For mitigating the overfitting problem that may occur in the training of the proposed CNN, data augmentation, and postclass correction using foreground distribution with event probabilities are applied. The experimental results indicate that the proposed method improved the F1 score and accuracy for the cumulative people counting results by up to 9.0% and 14.8%, respectively, compared with those of the benchmark methods, even though it calculated the cumulative count by summing instantaneous people counts, while the benchmark methods were optimized for the calculation of the cumulative count.
机译:本文提出了一个卷积神经网络(CNN)的人数计数器,将给定帧多维数据集分类到指示人们进入或退出目标区域以测量瞬时人数的特定事件。对于提出的CNN训练,使用所提出的计数规则生成培训输入框架多维数据集及其表示特定事件的相应类标签。为了缓解在培训所提出的CNN,数据增强和使用具有事件概率的前景分布的训练中可能发生的过度装箱问题。实验结果表明,与基准方法相比,该方法分别提高了累积人数的评分和准确性,累计分别计算得分高达9.0%和14.8%,即使它通过瞬时计算累积计数计数,而基准方法针对计算累积计数进行了优化。

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