Geisler W S, Albrecht D G
Department of Psychology, University of Texas, Austin 78712, USA.
Vis Neurosci. 1997 Sep-Oct;14(5):897-919. doi: 10.1017/s0952523800011627.
A descriptive function method was used to measure the detection, discrimination, and identification performance of a large population of single neurons recorded from within the primary visual cortex of the monkey and the cat, along six stimulus dimensions: contrast, spatial position, orientation, spatial frequency, temporal frequency, and direction of motion. First, the responses of single neurons were measured along each stimulus dimension, using analysis intervals comparable to a normal fixation interval (200 ms). Second, the measured responses of each neuron were fitted with simple descriptive functions, containing a few free parameters, for each stimulus dimension. These functions were found to account for approximately 90% of the variance in the measured response means and response standard deviations. (A detailed analysis of the relationship between the mean and the variance showed that the variance is proportional to the mean.) Third, the parameters of the best-fitting descriptive functions were utilized in conjunction with Bayesian (optimal) decision theory to determine the detection, discrimination, and identification performance for each neuron, along each stimulus dimension. For some of the cells in monkey, discrimination performance was comparable to behavioral performance; for most of the cells in cat, discrimination performance was better than behavioral performance. The behavioral contrast and spatial-frequency discrimination functions were similar in shape to the envelope of the most sensitive cells; they were also similar to the discrimination functions obtained by optimal pooling of the entire population of cells. The statistics which summarize the parameters of the descriptive functions were used to estimate the response of the visual cortex as a whole to a complex natural image. The analysis suggests that individual cortical neurons can reliably signal precise information about the location, size, and orientation of local image features.
采用描述函数法,沿着六个刺激维度,即对比度、空间位置、方向、空间频率、时间频率和运动方向,测量了从猴子和猫的初级视觉皮层记录的大量单个神经元的检测、辨别和识别性能。首先,沿着每个刺激维度测量单个神经元的反应,使用与正常注视间隔(200毫秒)相当的分析间隔。其次,为每个刺激维度,用包含几个自由参数的简单描述函数拟合每个神经元的测量反应。发现这些函数约占测量反应均值和反应标准差方差的90%。(对均值与方差之间关系的详细分析表明,方差与均值成正比。)第三,将最佳拟合描述函数的参数与贝叶斯(最优)决策理论结合使用,以确定每个神经元在每个刺激维度上的检测、辨别和识别性能。对于猴子中的一些细胞,辨别性能与行为性能相当;对于猫中的大多数细胞,辨别性能优于行为性能。行为对比度和空间频率辨别函数的形状与最敏感细胞的包络相似;它们也与通过对整个细胞群体进行最优合并获得的辨别函数相似。总结描述函数参数的统计数据用于估计视觉皮层作为一个整体对复杂自然图像的反应。分析表明,单个皮层神经元可以可靠地发出有关局部图像特征的位置、大小和方向的精确信息。