多尺度实时目标检测中的改进剪枝算法

Munther Abualkibash, A. Mahmood
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引用次数: 0

摘要

目标检测是计算机视觉的一个重要研究领域。最流行的目标检测方法之一是将许多弱分类器组合在一起,通过一种称为Boosting的技术来实现一个强分类器。Viola和Jones开发了该技术的改进版本,用于实时人脸检测,其中弱分类器通过迭代地从大量潜在特征中选择最佳单个特征来创建。在检测过程中,需要对不同尺度的候选结果进行剪枝处理,剔除弱候选结果,保留最有希望的候选结果。本文提出了一种改进的剪枝算法,可以减少误报的数量。在目标检测方面,基于Viola和Jones实现了一个完整的框架,然后应用所提出的剪枝算法来获得更好的检测结果。
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Improved pruning algorithms in multiscale real-time object detection
Object detection is an important area of research in computer vision. One of the most popular approaches for object detection is based on combining many weak classifiers together to achieve one strong classifier through a technique called Boosting. A modified version of this technique for real-time face detection was developed by Viola and Jones, where a weak classifier is created by iteratively selecting a best single feature from a set of a very large number of potential features. During the detection process, there is a need to apply pruning techniques on the candidate results from different scales to eliminate the weak candidates and keep the most promising one. This paper presents improved pruning algorithms that result in reducing the number of false positives. For object detection, a complete framework is implemented based on Viola and Jones, then the proposed pruning algorithms are applied to obtain better detection results.
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