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Receptive fields of simple cells from a taxonomic study of natural images and suppression of scale redundancy

机译:来自自然图像分类学研究和抑制尺度冗余的简单细胞的感受野

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Much effort has been carried out to propose models of the early visual pathway based on the statistical analysis of natural images. These conventional frameworks lead to predictions on the RFs of simple cells which do not fit well their observed properties [D.L. Ringach, Spatial structure and symmetry of simple-cell receptive fields in macaque primary visual cortex, J. Neurophysiol. 2002 (2002) 455-463]. In order to overcome these difficulties, we have been carrying a research program to derive robust coding principles from the statistics of natural images [A. Turiel, G. Mato, N. Parga, J.P. Nadal, Self-similarity properties of natural images, in: Proceedings of NIPS'97, vol. 10, MIT Press, 1997, pp. 836-842; A. Turiel, J.M. Delgado, N. Parga, Learning efficient internal representations from natural image collections, Neurocomputing 58-60 (2004) 915-921]. Two principles emerging from our study of image statistics are: first, there exists scale redundancy and this can be eliminated from the code; second, images are constructed by a combination (partly linear and partly non-linear) of some simple patterns of contrast (edges, bars, and composites of these two). These two principles can be used to derive filters which explain observed properties of the RFs of simple cells and which compare quite well with the results reported by Ringach [Spatial structure and symmetry of simple-cell receptive fields in macaque primary visual cortex, J. Neurophysiol. 2002 (2002) 455-463] and previous experimental work.
机译:基于自然图像的统计分析,已经做了很多努力来提出早期​​视觉通路的模型。这些常规框架导致对简单细胞的RF的预测无法很好地适应其观察到的特性。猕猴初级视觉皮层中的Ringach,空间结构和单细胞感受野的对称性,J。Neurophysiol。 2002(2002)455-463]。为了克服这些困难,我们一直在进行一项研究程序,以从自然图像的统计数据中得出鲁棒的编码原理。 Turiel,G。Mato,N。Parga,J.P。Nadal,自然图像的自相似性,载于:NIPS'97会议论文集,第1卷。 10,麻省理工学院出版社,1997年,第836-842页。 A. Turiel,J.M。Delgado,N。Parga,从自然图像集中学习有效的内部表示,Neurocomputing 58-60(2004)915-921]。我们对图像统计的研究提出了两个原则:第一,存在规模冗余,可以从代码中消除它。其次,图像是由一些简单的对比模式(边缘,条形和这两者的合成)的组合(部分线性和部分非线性)构成的。这两个原理可用于推导滤波器,这些滤波器解释观察到的简单细胞的RF特性,并与Ringach [猕猴初级视觉皮层的简单细胞接受域的空间结构和对称性,J。Neurophysiol 。 2002(2002)455-463]和以前的实验工作。

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