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Sign-changing filters similar to cells in primary visual cortex emerge by independent component analysis of temporally convolved natural image sequences

机译:通过对时间卷积的自然图像序列进行独立成分分析,出现了类似于初级视觉皮层中细胞的符号变化过滤器

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摘要

It has been reported that independent component analysis (ICA) of natural image sequences yields spatio-temporal filters of non-separable spatio-temporal properties. On the contrary, sing changing filters with separable spatio-temporal properties have not been found via ICA. We show that extending the ICA to temporally convolved inputs develops such receptive fields (RFs), We argue that temporal convolution may arise from the response function of lagged and non-lagged cells of the LGN. The properties of the emerging RFs as a function of convolution time and the dimension of compression are studied.
机译:据报道,自然图像序列的独立成分分析(ICA)产生时空滤波器具有不可分离的时空特性。相反,尚未通过ICA找到具有可分离的时空特性的单个变化滤波器。我们表明将ICA扩展到时间卷积的输入会发展出这样的接收场(RF),我们认为时间卷积可能源自LGN的滞后和非滞后细胞的响应功能。研究了新兴射频的特性,该特性是卷积时间和压缩维数的函数。

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