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A performance evaluation of fusion techniques for spatio-temporal saliency detection in dynamic scenes

机译:动态场景时空显着性融合技术的性能评估

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Visual saliency is an important research topic in computer vision applications, which helps to focus on regions of interest instead of processing the whole image. Detecting visual saliency in still images has been widely addressed in literature. However, visual saliency detection in videos is more complicated due to additional temporal information. A spatio-temporal saliency map is usually obtained by the fusion of a static saliency map and a dynamic saliency map. The way both maps are fused plays a critical role in the accuracy of the spatio-temporal saliency map. In this paper, we evaluate the performances of different fusion techniques on a large and diverse dataset and the results show that a fusion method must be selected depending on the characteristics, in terms of color and motion contrasts, of a sequence. Overall, fusion techniques which take the best of each saliency map (static and dynamic) in the final spatio-temporal map achieve best results.
机译:视觉显着性是计算机视觉应用程序中的重要研究主题,它有助于将注意力集中在感兴趣的区域上,而不是处理整个图像。在文献中已经广泛地解决了检测静止图像中的视觉显着性的问题。然而,由于附加的时间信息,视频中的视觉显着性检测更加复杂。时空显着图通常是通过将静态显着图和动态显着图融合而获得的。两种地图的融合方式在时空显着性地图的准确性中起着至关重要的作用。在本文中,我们评估了不同融合技术在大型多样数据集上的性能,结果表明必须根据序列的特征(在颜色和运动对比度方面)选择一种融合方法。总的来说,融合技术在最终的时空图中充分利用了每个显着性图(静态和动态)中的最佳效果。

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