Larson Eric, Billimoria Cyrus P, Sen Kamal
Hearing Research Center, Boston University, 44 Cummington Street, Boston, MA 02215, USA.
J Neurophysiol. 2009 Jan;101(1):323-31. doi: 10.1152/jn.90664.2008. Epub 2008 Nov 5.
Object recognition is a task of fundamental importance for sensory systems. Although this problem has been intensively investigated in the visual system, relatively little is known about the recognition of complex auditory objects. Recent work has shown that spike trains from individual sensory neurons can be used to discriminate between and recognize stimuli. Multiple groups have developed spike similarity or dissimilarity metrics to quantify the differences between spike trains. Using a nearest-neighbor approach the spike similarity metrics can be used to classify the stimuli into groups used to evoke the spike trains. The nearest prototype spike train to the tested spike train can then be used to identify the stimulus. However, how biological circuits might perform such computations remains unclear. Elucidating this question would facilitate the experimental search for such circuits in biological systems, as well as the design of artificial circuits that can perform such computations. Here we present a biologically plausible model for discrimination inspired by a spike distance metric using a network of integrate-and-fire model neurons coupled to a decision network. We then apply this model to the birdsong system in the context of song discrimination and recognition. We show that the model circuit is effective at recognizing individual songs, based on experimental input data from field L, the avian primary auditory cortex analog. We also compare the performance and robustness of this model to two alternative models of song discrimination: a model based on coincidence detection and a model based on firing rate.
目标识别是感觉系统的一项至关重要的任务。尽管这个问题在视觉系统中已经得到了深入研究,但对于复杂听觉目标的识别却知之甚少。最近的研究表明,单个感觉神经元的脉冲序列可用于区分和识别刺激。多个研究团队已经开发出脉冲相似性或相异性度量方法,以量化脉冲序列之间的差异。使用最近邻方法,脉冲相似性度量可用于将刺激分类为用于诱发脉冲序列的组。然后,与测试脉冲序列最接近的原型脉冲序列可用于识别刺激。然而,生物电路如何执行此类计算仍不清楚。阐明这个问题将有助于在生物系统中对这类电路进行实验性探索,以及设计能够执行此类计算的人工电路。在这里,我们提出了一个受脉冲距离度量启发的生物合理模型,用于区分,该模型使用积分发放模型神经元网络与决策网络耦合。然后,我们将这个模型应用于鸟鸣系统中的歌声区分和识别。基于来自鸟类初级听觉皮层类似物L区的实验输入数据,我们表明该模型电路在识别单个歌声方面是有效的。我们还将这个模型的性能和鲁棒性与两种替代的歌声区分模型进行了比较:一种基于同时检测的模型和一种基于发放率的模型。