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Non negative matrix factorization, sparse coding dictionary learning techniques on fMRI images

机译:fMRI图像上的非负矩阵分解,稀疏编码和字典学习技术

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Matrix factorization techniques have proved to be successful for the Source Separation (SS) of different types of data. Recent developments in Matrix factorization techniques have led to sparse representation of signals using learned dictionaries. In this research we have applied Alternating Least Square Non-Negative Matrix Factorization (ALSNMF) and Dictionary Learning (DL) technique for sparse representation to simulated and real Functional Magnetic Resonance Images (fMRI) to extract corresponding sources and time courses. These different techniques with varying the rank values/dictionary sizes for ALSNMF/DL respectively for SS of fMRI have been analyzed and conclusion has been made in terms of quality and efficiency of the SS of fMRI with respect to the variation of rank values/dictionary sizes. ALSNMF method is the best among both applied methods in terms of fast convergence and performance for high rank values and can extract best time courses and Sources simultaneously. K-SVD algorithm performed well particularly for real fMRI datasets. However, for small dictionary size, sources are extracted well with degraded time course extraction and vice versa for large dictionary size.
机译:事实证明,矩阵分解技术对于不同类型数据的源分离(SS)是成功的。矩阵因式分解技术的最新发展已导致使用学习词典来稀疏表示信号。在这项研究中,我们将交替最小二乘非负矩阵分解(ALSNMF)和字典学习(DL)技术用于稀疏表示到模拟和真实的功能磁共振图像(fMRI),以提取相应的源和时程。分析了这些分别改变fMRI的ALSNMF / DL等级值/词典大小的不同技术,并就fMRI的SS的质量和效率对等级值/词典大小的变化做出了结论。 。就快速收敛和高秩值的性能而言,ALSNMF方法是这两种应用方法中最好的方法,并且可以同时提取最佳时程和源。 K-SVD算法在真实的fMRI数据集中表现良好。但是,对于较小的字典大小,源的提取会很好,而时间进程的提取会降低,反之亦然。

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