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Background Modeling by Stability of Adaptive Features in Complex Scenes

机译:复杂场景中自适应特征稳定性的背景建模

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The single-feature-based background model often fails in complex scenes, since a pixel is better described by several features, which highlight different characteristics of it. Therefore, the multi-feature-based background model has drawn much attention recently. In this paper, we propose a novel multi-feature-based background model, named stability of adaptive feature (SoAF) model, which utilizes the stabilities of different features in a pixel to adaptively weigh the contributions of these features for foreground detection. We do this mainly due to the fact that the features of pixels in the background are often more stable. In SoAF, a pixel is described by several features and each of these features is depicted by a unimodal model that offers an initial label of the target pixel. Then, we measure the stability of each feature by its histogram statistics over a time sequence and use them as weights to assemble the aforementioned unimodal models to yield the final label. The experiments on some standard benchmarks, which contain the complex scenes, demonstrate that the proposed approach achieves promising performance in comparison with some state-of-the-art approaches.
机译:基于单特征的背景模型通常在复杂的场景中会失败,因为一个像素可以通过多个特征更好地描述,这些特征突出了它的不同特征。因此,基于多特征的背景模型近来备受关注。在本文中,我们提出了一种新颖的基于多特征的背景模型,称为自适应特征稳定性(SoAF)模型,该模型利用像素中不同特征的稳定性来自适应权衡这些特征对前景检测的贡献。我们这样做的主要原因是,背景中像素的特征通常更稳定。在SoAF中,一个像素由几个特征来描述,而每个特征都由一个单峰模型描绘,该模型提供目标像素的初始标签。然后,我们通过直方图统计量在时间序列上测量每个特征的稳定性,并使用它们作为权重来组装上述单峰模型以产生最终标签。在一些包含复杂场景的标准基准上进行的实验表明,与某些最新技术相比,该方法具有令人鼓舞的性能。

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