Emerson R C, Korenberg M J, Citron M C
Department of Ophthalmology, University of Rochester, NY 14642.
Biol Cybern. 1992;66(4):291-300. doi: 10.1007/BF00203665.
Complex cells in the cat's visual cortex show nonlinearities in processing of image luminance and movement. To study mechanisms, initially we have represented the chain of neurons from retina to cortex as a black-box model. Independent information about the visual system has helped us cast this "Wiener-kernel" model into a dynamic-linear/static-nonlinear/dynamic-linear (LNL) cascade. We then use system identification techniques to define the nature of these transformations directly from responses of the neuron to a single presentation of a stimulus composed of a sequence of white-noise-modulated luminance values. The two dynamic linear filters are mainly low-pass, and the static nonlinearity is mainly of even polynomial degree. This approximate squaring function may be effected in the animal by soft-thresholding each of the linear ON- and OFF-channel signals and then summing them, which account for "ON-OFF" responses and for the squaring operation needed for computation of "motion energy", both observed in these neurons.
猫视觉皮层中的复杂细胞在图像亮度和运动处理方面表现出非线性。为了研究其机制,最初我们将从视网膜到皮层的神经元链表示为一个黑箱模型。关于视觉系统的独立信息帮助我们将这个“维纳核”模型转化为一个动态线性/静态非线性/动态线性(LNL)级联。然后,我们使用系统识别技术,直接根据神经元对由一系列白噪声调制亮度值组成的刺激的单次呈现的反应来定义这些变换的性质。两个动态线性滤波器主要是低通的,静态非线性主要是偶多项式阶次的。这种近似平方函数在动物体内可能是通过对每个线性开通道和关通道信号进行软阈值处理,然后将它们相加来实现的,这解释了在这些神经元中观察到的“开-关”反应以及计算“运动能量”所需的平方运算。