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Crowd density analysis using subspace learning on local binary pattern

机译:使用局部空间学习的局部二进制模式进行人群密度分析

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Crowd density analysis is a crucial component in visual surveillance for security monitoring. This paper proposes a novel approach for crowd density estimation. The main contribution of this paper is two-fold: First, we propose to estimate crowd density at patch level, where the size of each patch varies in such way to compensate the effects of perspective distortions; second, instead of using raw features to represent each patch sample, we propose to learn a discriminant subspace of the high-dimensional Local Binary Pattern (LBP) raw feature vector where samples of different crowd density are optimally separated. The effectiveness of the proposed algorithm is evaluated on PETS dataset, and the results show that effective dimensionality reduction (DR) techniques significantly enhance the classification accuracy. The performance of the proposed framework is also compared to other frequently used features in crowd density estimation. Our proposed algorithm outperforms the state-of-the-art methods with a significant margin.
机译:人群密度分析是安全监测视觉监控的重要组成部分。本文提出了一种新的人群密度估算方法。本文的主要贡献是两倍:首先,我们建议估计补丁水平的人群密度,每个贴片的尺寸以这种方式因透视畸变而变化;其次,代替使用原始特征来表示每个补丁样本,我们建议学习高维局部二进制图案(LBP)原始特征向量的判别子空间,其中不同人群密度的样本是最佳的分离。在宠物数据集上评估所提出的算法的有效性,结果表明,有效的维度减少(DR)技术显着提高了分类精度。建议框架的性能也与人群密度估计中的其他常用特征进行了比较。我们所提出的算法优于具有重要边缘的最先进的方法。

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