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Localized adaptive learning of Mixture of Gaussians models for background extraction

机译:高斯模型混合的局部自适应学习用于背景提取。

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The Mixture of Gaussians (MoG) background subtraction model is one of the most popular methods for segmenting moving objects in videos. However, to achieve satisfactory background subtraction results, its parameters need to be hand-tuned specifically for each scenario. This becomes a major obstacle for this model to be employed in real-time applications. This paper proposes a self-adaptive method for tuning of the parameters of Mixture of Gaussians (MoG) background model based on the local intensity changes. To cope with different motion patterns in different regions of a video frames, we have introduced a local parameters for each pixel in the frame. The robustness of the proposed method is tested on a variety of complex data-sets. It can be seen from the result that, despite its simplicity, the proposed model has achieved significant improvements compared to the standard model.
机译:高斯混合(MoG)背景扣除模型是分割视频中运动对象的最受欢迎方法之一。但是,为了获得令人满意的背景扣除结果,需要针对每种情况专门调整其参数。这成为该模型在实时应用中使用的主要障碍。本文提出了一种基于局部强度变化的自适应高斯混合(MoG)背景模型参数的自适应方法。为了应对视频帧不同区域中的不同运动模式,我们为帧中的每个像素引入了局部参数。在各种复杂的数据集上测试了该方法的鲁棒性。从结果可以看出,尽管模型简单,但与标准模型相比,它已取得了显着改进。

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