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首页> 外文期刊>Journal of Neurophysiology >Statistics of visual responses in primate inferotemporal cortex to object stimuli.
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Statistics of visual responses in primate inferotemporal cortex to object stimuli.

机译:灵长类下颞叶皮质对物体刺激的视觉反应统计。

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摘要

We have characterized selectivity and sparseness in anterior inferotemporal cortex, using a large data set. Responses were collected from 674 monkey inferotemporal cells, each stimulated by 806 object photographs. This 806 x 674 matrix was examined in two ways: columnwise, looking at responses of a single neuron to all images (single-neuron selectivity), and rowwise, looking at the responses of all neurons caused by a single image (population sparseness). Selectivity and sparseness were measured as kurtosis of probability distributions. Population sparseness exceeded single-neuron selectivity, with specific values dependent on the size of the data sample. This difference was principally caused by inclusion, within the population, of neurons with a variety of dynamic ranges (standard deviations of responses over all images). Statistics of large responses were examined by quantifying how quickly the upper tail of the probability distribution decreased (tail heaviness). This analysis demonstrated that population responses had heavier tails than single-neuron responses, consistent with the difference between sparseness and selectivity measurements. Population responses with spontaneous activity subtracted had the heaviest tails, following a power law. The very light tails of single-neuron responses indicate that the critical feature for each neuron is simple enough to have a high probability of occurring within a limited stimulus set. Heavy tails of population responses indicate that there are a large number of different critical features to which different neurons are tuned. These results are inconsistent with some structural models of object recognition that posit that objects are decomposed into a small number of standard features.
机译:我们已经使用大数据集表征了颞下颞叶皮层的选择性和稀疏性。从674个猴子下颞细胞中收集了应答,每个应答都由806个对象照片刺激。通过两种方式检查了该806 x 674矩阵:以列方式查看单个神经元对所有图像的响应(单神经元选择性),以行方式查看由单个图像引起的所有神经元的响应(人口稀疏)。选择性和稀疏度以概率分布的峰度来衡量。总体稀疏性超过了单个神经元的选择性,其具体值取决于数据样本的大小。这种差异主要是由于在群体中包含具有各种动态范围(在所有图像上响应的标准偏差)的神经元引起的。通过量化概率分布的上尾部下降多快(尾重)来检查大型响应的统计信息。该分析表明,种群反应的尾巴比单神经元反应的尾巴重,这与稀疏度和选择性测量之间的差异一致。遵循幂定律,减去自发活​​动的总体响应具有最重的尾巴。单神经元反应的尾巴非常轻,表明每个神经元的关键特征非常简单,足以在有限的刺激集中发生。群体反应的尾巴很粗,表明存在许多不同的关键特征,可以将不同的神经元调整到这些关键特征。这些结果与某些对象识别的结构模型不一致,这些模型假定对象被分解为少量的标准特征。

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