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Pedestrian Detection Based on Deep Neural Network in Video Surveillance

机译:基于深神经网络在视频监控中的行人检测

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Pedestrian detection is an essential and challenging problem in machine vision and video surveillance signal processing. To handle the high cost of training-specific discriminative classifier for pedestrian detection, we focus on the learning of suitable features for pedestrian detection representation. A deep neural network is presented in this paper to resolve the above issue. Our pedestrian detection method has several appealing properties. First, the learning of features is much more efficient under the configuration of the proposed framework due to the reduction of training classifier. Second, a K-Nearest Neighbor (KNN) method is adopted to solve the comparison between the regions of interest and the templates. Third, due to the less dependency of the classifier, the performance across different datasets overcomes most traditional ones. Finally, we perform extensive comparison across different public datasets and compared with corresponding benchmarks.
机译:行人检测是机器视觉和视频监控信号处理中必不可少的挑战性问题。为了处理培训特定的鉴别分类器的高成本,用于行人检测,我们专注于学习人行语检测表示的合适特征。本文提出了深度神经网络,以解决上述问题。我们的行人检测方法具有多种吸引人的特性。首先,由于训练分类器的减少,在所提出的框架的配置下,特征的学习更有效。其次,采用K最近邻居(KNN)方法来解决感兴趣区域与模板之间的比较。第三,由于分类器的依赖性较少,不同数据集的性能克服了最传统的。最后,我们在不同的公共数据集中进行广泛的比较,并与相应的基准进行比较。

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