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On spatio-temporal saliency detection in videos using multilinear PCA

机译:基于多线性PCA的视频时空显着性检测

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Visual saliency is an attention mechanism which helps to focus on regions of interest instead of processing the whole image or video data. Detecting salient objects in still images has been widely addressed in literature with several formulations and methods. However, visual saliency detection in videos has attracted little attention, although motion information is an important aspect of visual perception. A common approach for obtaining a spatio-temporal saliency map is to combine a static saliency map and a dynamic saliency map. In this paper, we extend a recent saliency detection approach based on principal component analysis (PCA) which have shwon good results when applied to static images. In particular, we explore different strategies to include temporal information into the PCA-based approach. The proposed models have been evaluated on a publicly available dataset which contain several videos of dynamic scenes with complex background, and the results show that processing the spatio-tempral data with multilinear PCA achieves competitive results against state-of-the-art methods.
机译:视觉显着性是一种关注机制,有助于将注意力集中在关注区域上,而不是处理整个图像或视频数据。在静止图像中检测显着物体已在文献中以几种形式和方法得到了广泛解决。但是,尽管运动信息是视觉感知的重要方面,但是视频中的视觉显着性检测几乎没有引起人们的注意。获取时空显着图的一种常见方法是将静态显着图和动态显着图相结合。在本文中,我们扩展了一种基于主成分分析(PCA)的最新显着性检测方法,该方法在应用于静态图像时表现出良好的效果。特别是,我们探索了将时态信息纳入基于PCA的方法中的不同策略。对提出的模型进行了评估,该模型在一个公开的数据集上进行了评估,该数据集包含具有复杂背景的动态场景的多个视频,结果表明,使用多线性PCA处理时空数据可以获得与最新方法相比的竞争结果。

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