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Salient Region Detection via High-Dimensional Color Transform and Local Spatial Support

机译:通过高维彩色变换和局部空间支持的显着区域检测

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摘要

In this paper, we introduce a novel approach to automatically detect salient regions in an image. Our approach consists of global and local features, which complement each other to compute a saliency map. The first key idea of our work is to create a saliency map of an image by using a linear combination of colors in a high-dimensional color space. This is based on an observation that salient regions often have distinctive colors compared with backgrounds in human perception, however, human perception is complicated and highly nonlinear. By mapping the low-dimensional red, green, and blue color to a feature vector in a high-dimensional color space, we show that we can composite an accurate saliency map by finding the optimal linear combination of color coefficients in the high-dimensional color space. To further improve the performance of our saliency estimation, our second key idea is to utilize relative location and color contrast between superpixels as features and to resolve the saliency estimation from a trimap via a learning-based algorithm. The additional local features and learning-based algorithm complement the global estimation from the high-dimensional color transform-based algorithm. The experimental results on three benchmark datasets show that our approach is effective in comparison with the previous state-of-the-art saliency estimation methods.
机译:在本文中,我们介绍了一种新颖的方法来自动检测图像中的显着区域。我们的方法由全局和局部特征组成,它们相互补充以计算显着性图。我们工作的第一个关键思想是通过在高维颜色空间中使用颜色的线性组合来创建图像的显着性图。这是基于这样的观察:在人类感知中,显着区域与背景相比通常具有独特的颜色,但是,人类感知是复杂且高度非线性的。通过将低维红色,绿色和蓝色映射到高维颜色空间中的特征向量,我们表明可以通过找到高维颜色中颜色系数的最佳线性组合来合成精确的显着图空间。为了进一步提高显着性估计的性能,我们的第二个关键思想是利用超像素之间的相对位置和颜色对比度作为特征,并通过基于学习的算法从三映射中解决显着性估计。附加的局部特征和基于学习的算法补充了基于高维颜色变换的算法的全局估计。在三个基准数据集上的实验结果表明,与以前的最新显着性估计方法相比,我们的方法是有效的。

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