文章根据头顶像素点的梯度方向具有固定范围的特性在前景中找出头顶候选点,依此快速确定人体头肩部区域,将其作为待测窗口;然后提取待测窗口的照度不变性色彩特征与旋转不变性LBP纹理特征,并通过引入背景权重直方图算法(BWH)实现多特征融合;最后采用直方图交叉核支持向量机(HIKSVM)进行分类检测。实验结果表明,与传统的滑动窗口搜索方法相比,根据头顶点可以快速选取含有人体头肩部的待测窗口,提高了检测的效率;HSV和LBP多特征融合提高了检测的精确性,本文方法对于复杂动态场景、遮挡现象以及目标自身形变具有较强的鲁棒性和较高的准确性,在多种行人数据集中测试取得良好的效果。
For the pixel gradient direction of the top of the head having a fixed scope, this paper firstly selects the candidate pixel points in the foreground. Then it locates the areas of human head-shoulder quickly by these points, which is defined as the windows to be tested. Secondly the illumination invariant color features and the rotation invariant LBP texture feature are extracted and combined together with the Backgromad-weighted Histogram (BWH) algorithm. Lastly, Histogram Intersection Kernel Support Vector Machine (HIKSVM) classifies objects. Experimental results show that based on the pixel gradient direction of the top of the head, the windows which contain head-shoulder can be located more quickly than the traditional method, sliding window, which improves the efficiency of the detection. Furthermore, the accuracy of detection is also improved by the fusion feature of HSV and LBR Experimental results show that the proposed algorithm is robust and accurate against cluttered dynamical background, occlusion and the object deformation, and tested in many pedestrian datasets and achieved good results