文件名称:3
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Traditional single particle reconstruction methods use either the Fourier or the
delta function basis to represent the particle density map. We propose a more
flexible algorithm that adaptively chooses the basis based on the data. Because
the basis adapts to the data, the reconstruction resolution and signal-to-noise
ratio (SNR) is improved compared to a reconstruction with a fixed basis.
-This is a 3D visualization of how the Expectation Maximization algorithm learns a Gaussian Mixture Model for 3-dimensional data.
delta function basis to represent the particle density map. We propose a more
flexible algorithm that adaptively chooses the basis based on the data. Because
the basis adapts to the data, the reconstruction resolution and signal-to-noise
ratio (SNR) is improved compared to a reconstruction with a fixed basis.
-This is a 3D visualization of how the Expectation Maximization algorithm learns a Gaussian Mixture Model for 3-dimensional data.
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下载文件列表
EM_GMM_3d.m
license.txt