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Crowd counting using statistical features based on curvelet frame change detection

机译:使用基于Curvelet帧变化检测的统计特征进行人群计数

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摘要

Automatic counting for moving crowds in digital images is an important application in computer artificial intelligence, especially for safety and management purposes. This paper presents a new method to estimate the size of a crowd. The new algorithm depends on sequential frame differences to estimate the crowd size in a scene. However, relying only on these simple differences adds more constraints for extracting sufficient crowd descriptors. A curvelet transform is employed to achieve that goal. Every two sequential frames are transformed into multi-resolution and multi-direction formats, and then the frame differences are detected at every subband in the curvelet domain. Statistical features out of each subband are then calculated, and the collected features from all subbands are considered as a descriptor vector for the crowd in the scene. Finally, a neural network is manipulated to map the descriptor vectors into predicted counts. The experimental results show that the proposed curvelet statistical features are more robust and provide crowd counting with higher accuracy than previous approaches.
机译:自动计数数字图像中的人群是计算机人工智能中的重要应用,特别是出于安全和管理目的。本文提出了一种估计人群规模的新方法。新算法依赖于连续的帧差异来估计场景中的人群大小。但是,仅依靠这些简单的差异会增加更多限制,以提取足够的人群描述符。使用Curvelet变换来实现该目标。将每两个连续的帧转换为多分辨率和多方向格式,然后在Curvelet域的每个子带处检测帧差异。然后计算每个子带中的统计特征,并将所有子带中收集的特征视为场景中人群的描述符向量。最后,操纵神经网络将描述符向量映射到预测的计数中。实验结果表明,所提出的Curvelet统计特征比以前的方法更健壮,并且提供了更高的人群计数精度。

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