基于多尺度特征融合方案的自适应棒状特征人体检测

Sheng Wang, Ruo Du, Qiang Wu, Xiangjian He
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引用次数: 1

摘要

人体检测已广泛应用于许多领域。同时,由于服装、姿势等各种因素带来的挑战,这仍然是一个难题,有许多悬而未决的问题。通过对文献中几种基准方法和框架的研究,本文提出了一种新的方法,该方法成功地在多尺度图像上实现了Real AdaBoost训练过程。在多个层次上暴露各种对象特征。为了进一步提高整体性能,建立了一种融合方案,将不同尺度的决策结果进行融合,从而做出最终决策。与其他基于分数的融合方法不同,本文通过监督学习重新制定融合过程。因此,我们的融合方法可以更好地区分人类物体和非人类物体之间的细微差异。此外,在我们的方法中,我们能够使用更简单的弱特征进行增强,从而减轻了大多数AdaBoost训练方法中存在的训练复杂性。在一个公认的基准数据库上获得了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Stick-Like Features for Human Detection Based on Multi-scale Feature Fusion Scheme
Human detection has been widely used in many applications. In the meantime, it is still a difficult problem with many open questions due to challenges caused by various factors such as clothing, posture and etc. By investigating several benchmark methods and frameworks in the literature, this paper proposes a novel method which successfully implements the Real AdaBoost training procedure on multi-scale images. Various object features are exposed on multiple levels. To further boost the overall performance, a fusion scheme is established using scores obtained at various levels which integrates decision results with different scales to make the final decision. Unlike other score-based fusion methods, this paper re-formulates the fusion process through a supervised learning. Therefore, our fusion approach can better distinguish subtle difference between human objects and non-human objects. Furthermore, in our approach, we are able to use simpler weak features for boosting and hence alleviate the training complexity existed in most of AdaBoost training approaches. Encouraging results are obtained on a well recognized benchmark database.
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