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An efficient image similarity measure based on approximations of KL-divergence between two gaussian mixtures

机译:基于两个高斯混合物近似值的高效图像相似度量

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We present two new methods for approximating the Kullback-Liebler (KL) divergence between two mixtures of Gaussians. The first method is based on matching between the Gaussian elements of the two Gaussian mixture densities. The second method is based on the unscented transform. The proposed methods are utilized for image retrieval tasks. Continuous probabilistic image modeling based on mixtures of Gaussians together with KL measure for image similarity, can be used for image retrieval tasks with remarkable performance. The efficiency and the performance of the KL approximation methods proposed are demonstrated on both simulated data and real image data sets. The experimental results indicate that our proposed approximations outperform previously suggested methods.
机译:我们提出了两个新方法,用于近似kullback-leebler(kl)在高斯的两个混合物之间发散。第一方法基于两个高斯混合密度的高斯元素之间的匹配。第二种方法基于未加注的变换。所提出的方法用于图像检索任务。基于高斯的混合物与KL测量相似性的连续概率图像建模,可用于图像检索任务,具有显着性能。在模拟数据和真实图像数据集上都证明了所提出的KL近似方法的效率和性能。实验结果表明,我们所提出的近似优于先前建议的方法。

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