贾澎涛, 侯长民, 李娜. 复杂背景下改进的ViBe运动目标检测算法[J]. 应用光学, 2023, 44(5): 1045-1053. DOI: 10.5768/JAO202344.0502005
引用本文: 贾澎涛, 侯长民, 李娜. 复杂背景下改进的ViBe运动目标检测算法[J]. 应用光学, 2023, 44(5): 1045-1053. DOI: 10.5768/JAO202344.0502005
JIA Pengtao, HOU Changmin, LI Na. Improved ViBe moving target detection algorithm in complex background[J]. Journal of Applied Optics, 2023, 44(5): 1045-1053. DOI: 10.5768/JAO202344.0502005
Citation: JIA Pengtao, HOU Changmin, LI Na. Improved ViBe moving target detection algorithm in complex background[J]. Journal of Applied Optics, 2023, 44(5): 1045-1053. DOI: 10.5768/JAO202344.0502005

复杂背景下改进的ViBe运动目标检测算法

Improved ViBe moving target detection algorithm in complex background

  • 摘要: 针对传统ViBe算法在复杂背景下检测运动目标时会出现鬼影、阴影、误检等问题,提出了一种改进的ViBe运动目标检测算法,称为GS-ViBe算法。在GS-ViBe背景模型初始化阶段,利用最大后验估计法确定每个像素点的最佳高斯分布数目,使其形成多帧融合背景来代替ViBe的单帧背景初始化方法,从而消除鬼影;在GS-ViBe前景检测阶段,增加多特征融合阴影检测过程,并将其检测结果和ViBe前景目标融合,得到消除阴影后的前景目标;最后,在GS-ViBe背景模型更新阶段,引入动态更新因子代替固定更新因子,使得背景可以自适应更新,从而降低目标的误检率。在多种复杂背景下与传统ViBe算法对比发现,GS-ViBe算法召回率提高了37.74%,准确率平均提高了19.83%,误检率平均降低了52.57%,表明GS-ViBe算法可以有效消除鬼影、阴影、误检的干扰,获取到完整的前景目标。

     

    Abstract: Aiming at the problems of ghosts, shadows, and false detections occur when traditional ViBe algorithm detects moving targets in complex backgrounds, an improved ViBe moving target detection algorithm was proposed, which was called GS-ViBe algorithm. In the initialization stage of GS-ViBe background model, the maximum posteriori estimation method was used to determine the optimal number of Gaussian distributions of each pixel to form a multi-frame fusion background instead of single-frame background initialization method of ViBe, so that the ghosts were eliminated. In the GS-ViBe foreground detection stage, the multi-feature fusion shadow detection process was added, and the detection results were fused with ViBe foreground targets to obtain the foreground targets after eliminating shadows. Finally, in the GS-ViBe background model update stage, a dynamic update factor was introduced instead of a fixed update factor, so that the background could be updated adaptively, thereby reducing the false detection rate of targets. In comparison with traditional ViBe algorithm in a variety of complex backgrounds, it is found that the recall rate of GS-ViBe algorithm is increased by 37.74% on average, the accuracy rate is increased by 19.83% on average and the false detection rate is reduced by 52.57% on average. It shows that the GS-ViBe algorithm can effectively eliminate the interference from ghosts, shadows and false detections, which obtains the complete foreground targets.

     

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