Comparison of dictionary learning methods for reverberation suppression in photoacoustic microscopy : Invited presentation

Sushanth G. Sathyanarayana, Bo Ning, Song Hu, J. Hossack
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Abstract

Dictionary learning is an unsupervised learning method to abstract image data into a set of learned basis vectors. In prior work, the efficacy of the K-SVD dictionary learning algorithm in suppressing reverberation in volumetric photoacoustic microscopy (PAM) data was demonstrated. In this work, we compare the K-SVD algorithm against the method of optimal directions (MOD). The generalization error and reverberation suppression performance of the two algorithms were compared. The K-SVD was found to have a lower average generalization error (5.69x104 ±9.09x103 (a.u.)) when compared to the MOD (8.27x104 ±1.33x104 (a.u.)) for identical training data, initialization, sparsity (3 atoms per A-line) and number of iterations (5). Both algorithms were observed to suppress the reverberation to a similar extent (18.8 ± 1.12 dB for the K-SVD and 18.3 ± 1.2 dB for the MOD). Our data show that irrespective of the method used, sparse dictionary learning can significantly suppress reverberations in PAM.
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光声显微镜中混响抑制的字典学习方法的比较:特邀报告
字典学习是一种将图像数据抽象为一组学习基向量的无监督学习方法。在之前的工作中,证明了K-SVD字典学习算法在抑制体积光声显微镜(PAM)数据混响方面的有效性。在这项工作中,我们比较了K-SVD算法和最优方向(MOD)方法。比较了两种算法的泛化误差和混响抑制性能。对于相同的训练数据、初始化、稀疏性(每a线3个原子)和迭代次数(5),K-SVD的平均泛化误差(5.69x104±9.09x103 (a.u))低于MOD (8.27x104±1.33x104 (a.u))。两种算法对混响的抑制程度相似(K-SVD为18.8±1.12 dB, MOD为18.3±1.2 dB)。我们的数据表明,无论使用哪种方法,稀疏字典学习都可以显著抑制PAM中的混响。
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