Pedestrian Detection Under Dense Crowd

Ge Yang, Siping Chen
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引用次数: 1

Abstract

In dense scenes, a large number of individuals can cause more serious problems such as blurred vision, chaotic scenes, complex behaviors and so on. For low density pedestrian detection algorithm, the accuracy of detection will be greatly reduced, even detection failure when facing these problems in high density scenes. In view of the above problems, the detection algorithm based on human head shoulder model is proposed. Support vector machine is used to train the classifier by machine learning. The detection algorithm proposed in this paper achieves 94% detection by using MIT and INRIA data sets. (Abstract)
密集人群下的行人检测
在密集的场景中,大量的个体会造成视觉模糊、场景混乱、行为复杂等更严重的问题。对于低密度的行人检测算法,在高密度场景中面对这些问题时,检测的准确率会大大降低,甚至检测失败。针对上述问题,提出了基于人头肩模型的检测算法。支持向量机通过机器学习训练分类器。本文提出的检测算法通过使用MIT和INRIA数据集实现了94%的检测。(抽象)
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