基于AsymBoost的人脸检测器响应式学习策略

Ingrid Visentini, C. Micheloni, G. Foresti
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引用次数: 3

摘要

人脸检测问题无疑是计算机视觉领域研究最多的问题之一。它在人机交互、汽车等领域有广泛的应用,尤其是在视频监控和安防系统中。在过去的几年中,基于adaboost的系统在检测率和计算时间方面都表现出良好的性能,使其能够用于实时人脸检测器。虽然有效,但由于物体与外界分离的问题所带来的自然不对称性,凸显了这种算法的局限性。为了克服这一限制,引入了AsymBoost版本,以便更好地区分两个类的模式。在本文中,我们通过在级联和分类器学习阶段引入对不对称的响应控制,扩展了AsymBoost级联算法,进一步优化了学习策略。结果将指出所提出的策略如何通过保持低假阳性来减少假阴性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reactive Learning Strategy for AsymBoost Based Face Detectors
The face detection problem is certainly one of the most studied problems in the field of computer vision. It finds indeed application in the human-computer interaction field, automotive, etc. but especially in video surveillance and security systems. In the last years, AdaBoost-based systems showed good performance in both detection rate and computation time allowing its exploitation in realtime face detectors. Although effective, the natural asymmetry, brought by the problem of separating objects from the rest of the world, highlighted the limits of such an algorithm. To overcome this limit the AsymBoost version has been introduced to better distinguish the patterns of the two classes. In this paper, we further optimize the learning strategy by extending the AsymBoost cascade algorithm by introducing a reactive control of the asymmetry at both cascade and classifiers learning stages. The results will point out how the proposed strategy cuts the false negatives by keeping low the false positives.
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