Citations for First-Spike-Based Visual Categorization Using Reward-Modulated STDP (Mozafari et al. 2018)

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Mozafari M, Kheradpisheh SR, Masquelier T, Nowzari-Dalini A, Ganjtabesh M (2018) First-Spike-Based Visual Categorization Using Reward-Modulated STDP IEEE Transactions on Neural Networks and Learning Systems :1-13

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