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Robust t-distribution mixture modeling via spatially directional information

机译:通过空间方向信息进行稳健的t分布混合模型

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摘要

Finite mixture model (FMM) has been successfully applied to many practical applications in recent years. However, a significant shortcoming of the FMM with Gaussian distribution is that it is sensitive to noise. Recently, Student's t-distribution with a heavier-tailed acting as a robust alternative to Gaussian distribution is getting more and more attentions. In this paper, we propose a new Student's t-distribution finite mixture model which incorporates the spatial relationships between the pixels and simultaneously imposes spatial smoothness. In addition, the pixel's neighbor directional information is also integrated into the proposed model. Furthermore, the pixels' label probability proportions are explicitly represented as probability vectors to reduce the computational costs of the proposed model. We use the gradient descend method to estimate the unknown parameters of the proposed model. Comprehensive experiments are conducted on both synthetic and natural grayscale images. The experimental results demonstrate the superiority of the proposed model over some existing models.
机译:近年来,有限混合模型(FMM)已成功应用于许多实际应用。但是,具有高斯分布的FMM的主要缺点是它对噪声敏感。最近,学生的t分布具有更重的尾部,可作为高斯分布的可靠替代方案,因此越来越受到关注。在本文中,我们提出了一个新的学生t分布有限混合模型,该模型融合了像素之间的空间关系并同时施加了空间平滑度。另外,像素的邻居方向信息也被集成到所提出的模型中。此外,像素的标记概率比例明确表示为概率向量,以减少所提出模型的计算成本。我们使用梯度下降法来估计所提出模型的未知参数。在合成和自然灰度图像上都进行了全面的实验。实验结果表明,所提出的模型优于某些现有模型。

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