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Matching Pursuit Analysis of Auditory Receptive Fields Spectro-Temporal Properties

机译:听觉感受野的光谱-时间特性的匹配追踪分析

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摘要

Gabor filters have long been proposed as models for spectro-temporal receptive fields (STRFs), with their specific spectral and temporal rate of modulation qualitatively replicating characteristics of STRF filters estimated from responses to auditory stimuli in physiological data. The present study builds on the Gabor-STRF model by proposing a methodology to quantitatively decompose STRFs into a set of optimally matched Gabor filters through matching pursuit, and by quantitatively evaluating spectral and temporal characteristics of STRFs in terms of the derived optimal Gabor-parameters. To summarize a neuron's spectro-temporal characteristics, we introduce a measure for the “diagonality,” i.e., the extent to which an STRF exhibits spectro-temporal transients which cannot be factorized into a product of a spectral and a temporal modulation. With this methodology, it is shown that approximately half of 52 analyzed zebra finch STRFs can each be well approximated by a single Gabor or a linear combination of two Gabor filters. Moreover, the dominant Gabor functions tend to be oriented either in the spectral or in the temporal direction, with truly “diagonal” Gabor functions rarely being necessary for reconstruction of an STRF's main characteristics. As a toy example for the applicability of STRF and Gabor-STRF filters to auditory detection tasks, we use STRF filters as features in an automatic event detection task and compare them to idealized Gabor filters and mel-frequency cepstral coefficients (MFCCs). STRFs classify a set of six everyday sounds with an accuracy similar to reference Gabor features (94% recognition rate). Spectro-temporal STRF and Gabor features outperform reference spectral MFCCs in quiet and in low noise conditions (down to 0 dB signal to noise ratio).
机译:长期以来,Gabor过滤器已被提议作为光谱时域接收场(STRF)的模型,其特定的光谱和时间调制率可根据生理数据对听觉刺激的反应来定性复制STRF过滤器的特性。本研究建立在Gabor-STRF模型的基础上,提出了一种通过匹配追踪将STRF定量分解为一组最佳匹配Gabor滤波器的方法,并根据导出的最佳Gabor参数对STRF的光谱和时间特性进行了定量评估。为了总结神经元的光谱时态特征,我们介绍了一种“对角性”的度量,即STRF表现出光谱时态瞬变的程度,不能将其分解为光谱和时间调制的乘积。通过这种方法,可以看出,通过单个Gabor或两个Gabor滤波器的线性组合,可以很好地近似分析52个分析的斑马雀科STRF中的一半。此外,占主导地位的Gabor函数倾向于沿频谱或沿时间方向定向,而真正的“对角” Gabor函数对于重建STRF的主要特征几乎是不必要的。作为STRF和Gabor-STRF滤波器在听觉检测任务中的适用性的一个玩具示例,我们将STRF滤波器用作自动事件检测任务中的功能,并将它们与理想化的Gabor滤波器和梅尔频率倒谱系数(MFCC)进行比较。 STRF对一组六种日常声音进行分类,其准确度类似于参考Gabor功能(94%识别率)。时空STRF和Gabor在安静和低噪声条件(信噪比低至0 dB)下,性能优于参考频谱MFCC。

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