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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Combining where and what in change detection for unsupervised foreground learning in surveillance
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Combining where and what in change detection for unsupervised foreground learning in surveillance

机译:在监控中结合在监督中的改变检测中的转变和何处

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摘要

Change detection is the most important task for video surveillance analytics such as foreground and anomaly detection. Current foreground detectors learn models from annotated images since the goal is to generate a robust foreground model able to detect changes in all possible scenarios. Unfortunately, manual labelling is very expensive. Most advanced supervised learning techniques based on generic object detection datasets currently exhibit very poor performance when applied to surveillance datasets because of the unconstrained nature of such environments in terms of types and appearances of objects. In this paper, we take advantage of change detection for training multiple foreground detectors in an unsupervised manner. We use statistical learning techniques which exploit the use of latent parameters for selecting the best foreground model parameters for a given scenario. In essence, the main novelty of our proposed approach is to combine the where (motion segmentation) and what (learning procedure) in change detection in an unsupervised way for improving the specificity and generalization power of foreground detectors at the same time. We propose a framework based on latent support vector machines that, given a noisy initialization based on motion cues, learns the correct position, aspect ratio, and appearance of all moving objects in a particular scene. Specificity is achieved by learning the particular change detections of a given scenario, and generalization is guaranteed since our method can be applied to any possible scene and foreground object, as demonstrated in the experimental results outperforming the state-of-the-art. (C) 2014 Elsevier Ltd. All rights reserved.
机译:变更检测是视频监控分析的最重要任务,例如前景和异常检测。当前的前景探测器从注释图像中学习模型,因为目标是生成能够检测所有可能场景中的更改的强大前景模型。不幸的是,手动标签非常昂贵。基于通用物体检测数据集的最先进的监督学习技术当前在应用于监视数据集时表现出非常差的性能,因为在物体的类型和外观方面的这种环境的不受约束性质。在本文中,我们利用更改检测以不监督的方式训练多个前景探测器。我们使用统计学习技术利用潜在参数来选择给定场景的最佳前景模型参数。从本质上讲,我们所提出的方法的主要新颖性是将何处(运动分割)和(学习程序)以无监督方式的改变检测,以改善前景探测器的特异性和泛化功率。我们提出了一种基于潜伏的支持向量机的框架,即给定基于运动提示的嘈杂初始化,了解特定场景中所有移动对象的正确位置,宽高比和外观。通过学习特定方案的特定变化检测来实现特异性,并且由于我们的方法可以应用于任何可能的场景和前景对象,因此可以保证泛化,如实验结果所示,从而表明现有技术。 (c)2014年elestvier有限公司保留所有权利。

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