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Fast Clustering in Linear 1D Subspaces: Segmentation of Microscopic Image of Unstained Specimens

机译:线性1D子空间中快速聚类:未染色标本的微观图像分割

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Algorithms for subspace clustering (SC) are effective in terms of the accuracy but exhibit high computational complexity. We propose algorithm for SC of (highly) similar data points drawn from union of linear one-dimensional subspaces that are possibly dependent in the input data space. The algorithm finds a dictionary that represents data in reproducible kernel Hilbert space (RKHS). Afterwards, data are projected into RKHS by using empirical kernel map (EKM). Due to dimensionality expansion effect of the EKM one-dimensional subspaces become independent in RKHS. Segmentation into subspaces is realized by applying the max operator on projected data which yields the computational complexity of the algorithm that is linear in number of data points. We prove that for noise free data proposed approach yields exact clustering into subspaces. We also prove that EKM-based projection yields less correlated data points. Due to nonlinear projection, the proposed method can adopt to linearly nonseparable data points. We demonstrate accuracy and computational efficiency of the proposed algorithm on synthetic dataset as well as on segmentation of the image of unstained specimen in histopathology.
机译:子空间聚类(SC)的算法在准确性方面是有效的,但表现出高计算复杂性。我们提出了从可能依赖于输入数据空间的线性一维子空间联盟的SC(高度)类似的数据点的算法。该算法查找表示可重复的内核Hilbert空间(RKHS)中数据的字典。之后,通过使用经验内核地图(EKM)将数据投影到RKHS中。由于EKM的维数膨胀效果一维子空间在RKHS中独立。通过在投影数据上应用MAX运算符来实现分段,这会产生算法的计算复杂度,该算法在数据点数中线性。我们证明,对于无噪声数据,所提出的方法将精确聚类分为子空间。我们还证明了基于EKM的投影产生的数据点较少。由于非线性投影,所提出的方法可以采用线性不可分割的数据点。我们展示了合成数据集上所提出的算法的准确性和计算效率以及组织病理学未持有的样本图像的分段。

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