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Metric Learning Using Iwasawa Decomposition. 使用Iwasawa分解的度量学习。
Pub Date : 2007-10-01 DOI: 10.1109/ICCV.2007.4408846
Bing Jian, Baba C Vemuri

Finding a good metric over the input space plays a fundamental role in machine learning. Most existing techniques use the Mahalanobis metric without incorporating the geometry of positive matrices and experience difficulties in the optimization procedure. In this paper we introduce the use of Iwasawa decomposition, a unique and effective parametrization of symmetric positive definite (SPD) matrices, for performing metric learning tasks. Unlike other previously employed factorizations, the use of the Iwasawa decomposition is able to reformulate the semidefinite programming (SDP) problems as smooth convex nonlinear programming (NLP) problems with much simpler constraints. We also introduce a modified Iwasawa coordinates for rank-deficient positive semidefinite (PSD) matrices which enables the unifying of the metric learning and linear dimensionality reduction. We show that the Iwasawa decomposition can be easily used in most recent proposed metric learning algorithms and have applied it to the Neighbourhood Components Analysis (NCA). The experimental results on several public domain datasets are also presented.

在输入空间上找到一个好的度量在机器学习中起着基本的作用。大多数现有技术使用的马氏度规没有纳入正矩阵的几何结构,并且在优化过程中遇到困难。在本文中,我们介绍了使用Iwasawa分解,对称正定(SPD)矩阵的唯一和有效的参数化,执行度量学习任务。与以前使用的其他因子分解不同,使用Iwasawa分解能够将半定规划(SDP)问题重新表示为具有更简单约束的光滑凸非线性规划(NLP)问题。我们还引入了一种改进的缺秩正半定(PSD)矩阵的Iwasawa坐标,使度量学习和线性降维统一起来。我们证明了Iwasawa分解可以很容易地用于最近提出的度量学习算法,并将其应用于邻域成分分析(NCA)。最后给出了在多个公共领域数据集上的实验结果。
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引用次数: 11
Locally-Constrained Region-Based Methods for DW-MRI Segmentation. 基于局部约束区域的DW-MRI分割方法。
Pub Date : 2007-01-01 DOI: 10.1109/iccv.2007.4409167
John Melonakos, Marc Niethammer, Vandana Mohan, Marek Kubicki, James V Miller, Allen Tannenbaum

In this paper, we describe a method for segmenting fiber bundles from diffusion-weighted magnetic resonance images using a locally-constrained region based approach. From a pre-computed optimal path, the algorithm propagates outward capturing only those voxels which are locally connected to the fiber bundle. Rather than attempting to find large numbers of open curves or single fibers, which individually have questionable meaning, this method segments the full fiber bundle region. The strengths of this approach include its ease-of-use, computational speed, and applicability to a wide range of fiber bundles. In this work, we show results for segmenting the cingulum bundle. Finally, we explain how this approach and extensions thereto overcome a major problem that typical region-based flows experience when attempting to segment neural fiber bundles.

本文描述了一种基于局部约束区域的方法从扩散加权磁共振图像中分割纤维束的方法。从预先计算的最优路径开始,该算法向外传播,只捕获那些局部连接到光纤束的体素。这种方法不是试图找到大量的开放曲线或单个纤维,它们单独具有可疑的意义,而是将整个纤维束区域分割。这种方法的优点包括易于使用,计算速度快,并且适用于广泛的光纤束。在这项工作中,我们展示了分割扣带束的结果。最后,我们解释了这种方法及其扩展如何克服典型的基于区域的流在试图分割神经纤维束时遇到的主要问题。
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引用次数: 15
Diffusion Tensor Estimation by Maximizing Rician Likelihood. 最大似然扩散张量估计。
Pub Date : 2007-01-01 DOI: 10.1109/iccv.2007.4409140
Bennett Landman, Pierre-Louis Bazin, Jerry Prince

Diffusion tensor imaging (DTI) is widely used to characterize white matter in health and disease. Previous approaches to the estimation of diffusion tensors have either been statistically suboptimal or have used Gaussian approximations of the underlying noise structure, which is Rician in reality. This can cause quantities derived from these tensors - e.g., fractional anisotropy and apparent diffusion coefficient - to diverge from their true values, potentially leading to artifactual changes that confound clinically significant ones. This paper presents a novel maximum likelihood approach to tensor estimation, denoted Diffusion Tensor Estimation by Maximizing Rician Likelihood (DTEMRL). In contrast to previous approaches, DTEMRL considers the joint distribution of all observed data in the context of an augmented tensor model to account for variable levels of Rician noise. To improve numeric stability and prevent non-physical solutions, DTEMRL incorporates a robust characterization of positive definite tensors and a new estimator of underlying noise variance. In simulated and clinical data, mean squared error metrics show consistent and significant improvements from low clinical SNR to high SNR. DTEMRL may be readily supplemented with spatial regularization or a priori tensor distributions for Bayesian tensor estimation.

扩散张量成像(DTI)被广泛用于表征健康和疾病中的白质。以前的扩散张量估计方法要么在统计上是次优的,要么使用了底层噪声结构的高斯近似,这在现实中是Rician的。这可能会导致从这些张量导出的量——例如分数各向异性和表观扩散系数——偏离其真实值,可能导致混淆临床意义的人为变化。本文提出了一种新的张量估计的最大似然方法,称为最大Rician似然扩散张量估计(DTEMRL)。与以前的方法相比,DTEMRL在增广张量模型的背景下考虑了所有观测数据的联合分布,以考虑不同水平的Rician噪声。为了提高数值稳定性和防止非物理解,DTEMRL结合了正定张量的鲁棒特性和潜在噪声方差的新估计量。在模拟和临床数据中,均方误差度量显示出从低临床SNR到高SNR的一致且显著的改进。DTEMRL可以容易地用空间正则化或用于贝叶斯张量估计的先验张量分布来补充。
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引用次数: 46
A Robust Algorithm for Point Set Registration Using Mixture of Gaussians. 一种基于混合高斯的点集配准鲁棒算法。
Pub Date : 2005-10-01 DOI: 10.1109/ICCV.2005.17
Bing Jian, Baba C Vemuri

This paper proposes a novel and robust approach to the point set registration problem in the presence of large amounts of noise and outliers. Each of the point sets is represented by a mixture of Gaussians and the point set registration is treated as a problem of aligning the two mixtures. We derive a closed-form expression for the L(2) distance between two Gaussian mixtures, which in turn leads to a computationally efficient registration algorithm. This new algorithm has an intuitive interpretation, is simple to implement and exhibits inherent statistical robustness. Experimental results indicate that our algorithm achieves very good performance in terms of both robustness and accuracy.

针对存在大量噪声和异常值的点集配准问题,提出了一种新颖的鲁棒方法。每个点集都由高斯分布的混合表示,点集配准被视为两个混合的对齐问题。我们推导了两个高斯混合物之间的L(2)距离的封闭表达式,这反过来又导致了计算效率高的配准算法。该算法具有直观的解释、简单的实现和固有的统计鲁棒性。实验结果表明,该算法在鲁棒性和准确性方面都取得了很好的效果。
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引用次数: 380
期刊
Proceedings. IEEE International Conference on Computer Vision
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