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Pixel-to-Model background modeling in crowded scenes

机译:拥挤场景中的像素到模型背景建模

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Background modeling is an important step for many video surveillance applications such as object detection and scene understanding. In this paper, we present a novel Pixel-to-Model (P2M) paradigm for background modeling in crowded scenes. In particular, the proposed method models the background with a set of context features for each pixel, which are compressively sensed from local patches. We determine whether a pixel belongs to the background according to the minimum P2M distance, which measures the similarity between the pixel and its background model in the space of compressive local descriptors. Moreover, the background updating utilizes minimum and maximum P2M distances to update the pixel feature descriptors in local and neighboring background models, respectively. We evaluate the proposed approach with foreground detection tasks on real crowded surveillance videos. Experiments results show that the proposed P2M approach outperforms the state-of-the-art methods both in indoor and outdoor crowded scenes.
机译:背景技术建模是许多视频监控应用的重要步骤,例如对象检测和场景理解。在本文中,我们在拥挤的场景中提出了一种新颖的像素到模型(P2M)范式,用于背景建模。特别地,所提出的方法模拟了与每个像素的一组上下文特征的背景,这是从本地补丁压缩感测的。我们确定像素根据最小P2M距离是否属于背景,这在压缩本地描述符的空间中测量像素和其背景模型之间的相似性。此外,背景更新利用最小和最大P2M距离,以便分别更新本地和邻近背景模型中的像素特征描述符。我们评估了真实拥挤的监视视频的前景探测任务的建议方法。实验结果表明,所提出的P2M方法优于室内和户外拥挤的场景中的最先进的方法。

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