基于改进的鲁棒非凸范数的视频运动目标检测

Improved robust non convex norm for video moving object detection

  • 摘要: 针对传统的低秩稀疏分解模型由于替代函数逼近程度不高和抗噪声能力弱等关键挑战引发的视频运动目标检测性能不高的问题,提出了一种基于改进的鲁棒非凸范数的视频运动目标检测模型. 该模型首先采用非凸的拉普拉斯指数范数替代传统LRSD方法中的低秩项;其次采用非凸的Geman分数范数替代传统LRSD方法中的系数项;然后将噪声项引入到IRNCN模型中以增强其抗噪声的鲁棒性;然后,为有效求解改进的鲁棒非凸范数的视频运动目标检测模型,采用交替方向乘子法对提出的模型进行有效求解;最后,将提出的模型应用于经典的CDnet数据集和I2R数据集的视频运动目标检测实验中. 实验结果表明,新模型的平均F1值比其他同类对比模型最大可提高0.2013,对应的平均精准率最大可提高12.24%,对应的运行时间最大可提高0.1297s/帧,从而验证了所提出模型的有效性和优越性.

     

    Abstract: In response to the low performance of video moving object detection caused by key challenges such as the low approximation degree of substitution functions and the neglect of noise in traditional low-rank sparse decomposition models, we propose an improved robust non convex norm for video moving object detection. The proposed model firstly uses a non convex Laplacian exponential norm to replace low rank term of traditional low-rank sparse decomposition method. Secondly, it uses Geman fractional norm to replace sparse term of of traditional low-rank sparse decomposition method. Thirdly, a noise item are introduced into our proposed model for enhancing its robustness. Fourthly, the alternative direction method of multipliers is introduced to solve our proposed models. At last, extensive experiments which are carried on on the classic CDnet and I2R datasets. The experimental results show that the average F1 values of can be improved by up to 0.201 3 compared to other comparative models. The average of precise can be improved by 12.24%. The corresponding running time can also be improved by 0.129 7 s/frame. All these experimental results demonstrate the effectiveness and superiority of our proposed model.

     

/

返回文章
返回