摘要
为解决低对比度、低信噪比、目标旋转、缩放等非理想状态给跟踪算法的研究带来的诸多困难,本文提出灰度图像多特征融合目标跟踪算法,保证在满足工程实践需要的条件下,能够对目标进行稳定的跟踪。算法首先对灰度图像利用Sobel算子求出梯度特征,将X、Y双方向的梯度特征与灰度特征相融合得到新特征,新特征在核密度函数下对低对比度,目标轮廓形状变化较大的情况有较高的适应性和稳定性,再利用背景建模的方法对提取的运动目标区域进行加权,降低非跟踪目标的权值,最后对融合后的加权特征目标利用改进MeanShift算法进行跟踪。通过大量的实验表明,该算法适应目标和背景的复杂变化,并且具有较强的鲁棒性,基本满足在复杂背景灰度图像下目标跟踪的工程实际需求。
In order to solve the problem of current moving object tracking algorithm which can not apply in some non-ideal conditions such as low contrast,low signal to noise ratio,target rotation and scaling,this pa-per presents a method based on multi-feature fusion in the complex background by improving the meanshift al-gorithm to realize the complex gray image tracking.The algorithm needs to not only meet the conditions re-quired for engineering practice but also satisfy precise in object tracking stabilization.Firstly,using the algo-rithm we calculate gradient characteristics in gray image,the gradient characteristics including gradient fea-tures in X,Y two directions.Secondly,the algorithm integrates the two directions gradient and gray features to get new fusion features.The new fusion features provide more distinguishable measurements than the tradition-al ones,and they have high adaptability and stability in some conditions such as low contrast,large flexible changes of targets by using the kernel density function.Thirdly,the foreground objects results can be extracted by background modeling object detection algorithm,which takes moving target feature information as a weight value.Finally,the fusion features object is tracked by improved meanshift algorithm in this paper.A series of experiments results show that the multi-feature fusion moving object tracking method can stably track low con-trast target in complex gray image.The algorithm can adapt to the complex changes of object and background. And it also has strong robustness to meet the actual needs of the engineering practice.
出处
《中国光学》
EI
CAS
CSCD
2016年第3期320-328,共9页
Chinese Optics
基金
国家自然科学基金资助项目(No.61172111)~~