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Moving targets detection based on improved single Gaussian background model

机译:基于改进的单高斯背景模型的移动目标检测

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In order to improve the detection effect of the single Gaussian background model (SGM), an improved SGM algorithm is proposed to detect moving targets in this paper, which has made three improvements on the base of SGM. Firstly, the algorithm adopts adaptive background learning rate instead of using a fixed learning rate. Secondly, we use a new update strategy of Gaussian background model, which makes the Gaussian background model has good convergence and stability. Finally, the moving targets are detected according to the principle of Gaussian distribution and the image morphology filtering. Experimental results show that the background model of improved SGM can adapt well to background changes, and the target detection integrity is higher than that of the traditional SGM.
机译:为了提高单个高斯背景模型(SGM)的检测效果,提出了一种改进的SGM算法来检测本文的移动目标,这已经对SGM的基础进行了三种改进。首先,该算法采用自适应背景学习率而不是使用固定的学习率。其次,我们使用高斯背景模型的新更新策略,使高斯背景模型具有良好的收敛性和稳定性。最后,根据高斯分布的原理检测移动目标和图像形态过滤。实验结果表明,改进的SGM的背景模型可以适应背景变化,目标检测完整性高于传统的SGM。

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