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The Opponent Channel Population Code of Sound Location Is an Efficient Representation of Natural Binaural Sounds

机译:声音位置的对手通道人口代码是自然双耳声音的有效表示

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In mammalian auditory cortex, sound source position is represented by a population of broadly tuned neurons whose firing is modulated by sounds located at all positions surrounding the animal. Peaks of their tuning curves are concentrated at lateral position, while their slopes are steepest at the interaural midline, allowing for the maximum localization accuracy in that area. These experimental observations contradict initial assumptions that the auditory space is represented as a topographic cortical map. It has been suggested that a “panoramic” code has evolved to match specific demands of the sound localization task. This work provides evidence suggesting that properties of spatial auditory neurons identified experimentally follow from a general design principle- learning a sparse, efficient representation of natural stimuli. Natural binaural sounds were recorded and served as input to a hierarchical sparse-coding model. In the first layer, left and right ear sounds were separately encoded by a population of complex-valued basis functions which separated phase and amplitude. Both parameters are known to carry information relevant for spatial hearing. Monaural input converged in the second layer, which learned a joint representation of amplitude and interaural phase difference. Spatial selectivity of each second-layer unit was measured by exposing the model to natural sound sources recorded at different positions. Obtained tuning curves match well tuning characteristics of neurons in the mammalian auditory cortex. This study connects neuronal coding of the auditory space with natural stimulus statistics and generates new experimental predictions. Moreover, results presented here suggest that cortical regions with seemingly different functions may implement the same computational strategy-efficient coding.
机译:在哺乳动物的听觉皮层中,声源位置由一组广泛调谐的神经元表示,这些神经元的发射受到位于动物周围所有位置的声音的调节。其调谐曲线的峰值集中在横向位置,而其斜率在耳间中线最陡,从而在该区域实现了最大的定位精度。这些实验观察结果与将听觉空间表示为地形皮层图的初始假设相矛盾。已经提出了“全景”代码已发展为匹配声音本地化任务的特定需求。这项工作提供的证据表明,实验确定的空间听觉神经元的属性遵循的是一般设计原则-学习稀疏,有效的自然刺激表示法。记录自然的双耳声音,并将其用作分层稀疏编码模型的输入。在第一层中,左耳声和右耳声由一组将相位和幅度分开的复数值基函数分别编码。已知两个参数都携带与空间听力有关的信息。单声道输入在第二层收敛,从而学会了振幅和听觉相位差的联合表示。通过将模型暴露于记录在不同位置的自然声源,可以测量每个第二层单元的空间选择性。获得的调整曲线与哺乳动物听觉皮层中神经元的良好调整特性相匹配。这项研究将听觉空间的神经元编码与自然刺激统计联系起来,并产生新的实验预测。此外,这里提出的结果表明,具有看似不同功能的皮质区域可能实现相同的计算策略有效编码。

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