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A Cascade SVM Approach for Head-Shoulder Detection Using Histograms of Oriented Gradients

机译:使用面向梯度直方图的头肩检测级联SVM方法

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This paper presents a head-shoulder detection approach using cascade SVM and Histograms of Oriented Gradients (HOG). The HOG features which are extracted from variable-size blocks can capture salient features of head-shoulder automatically. A two stage cascade using SVM approach is designed to be the classifier. During detection, the majority of negative windows are rejected at the first stage, leaving a relatively small number of windows to be classified at the second stage, which improves the speed and precision of the detector. Due to the large number of possible target locations in an image, we applied camera self-calibration approach to facilitate the estimation for the size and location of the detection window. The experiments on surveillance videos from Trecvid 2008 [1] proved that our approach can achieve fast and accurate head-shoulder detection.
机译:本文介绍了使用级联SVM和面向梯度直方图(HOG)的头肩检测方法。从可变尺寸块中提取的猪特征可以自动捕获头部肩部的突出特征。使用SVM方法的两个阶段级联被设计为分类器。在检测期间,大多数负窗口在第一阶段被拒绝,留下相对少量的窗口在第二阶段被分类,这提高了检测器的速度和精度。由于图像中的大量可能的目标位置,我们应用了摄像机自校准方法,以便于检测窗口的大小和位置的估计。 Trecvid 2008 [1]的监控视频实验证明,我们的方法可以实现快速准确的头部肩部检测。

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