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首页> 外文期刊>The Journal of Mathematical Neuroscience >Sparse identification of contrast gain control in the fruit fly photoreceptor and amacrine cell layer
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Sparse identification of contrast gain control in the fruit fly photoreceptor and amacrine cell layer

机译:果蝇光感受器和胺氨基细胞层中对比度增益控制的稀疏识别

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The fruit fly’s natural visual environment is often characterized by light intensities ranging across several orders of magnitude and by rapidly varying contrast across space and time. Fruit fly photoreceptors robustly transduce and, in conjunction with amacrine cells, process visual scenes and provide the resulting signal to downstream targets. Here, we model the first step of visual processing in the photoreceptor-amacrine cell layer. We propose a novel divisive normalization processor (DNP) for modeling the computation taking place in the photoreceptor-amacrine cell layer. The DNP explicitly models the photoreceptor feedforward and temporal feedback processing paths and the spatio-temporal feedback path of the amacrine cells. We then formally characterize the contrast gain control of the DNP and provide sparse identification algorithms that can efficiently identify each the feedforward and feedback DNP components. The algorithms presented here are the first demonstration of tractable and robust identification of the components of a divisive normalization processor. The sparse identification algorithms can be readily employed in experimental settings, and their effectiveness is demonstrated with several examples.
机译:果蝇的自然视觉环境通常是在几个数量级和空间和时间迅速变化的对比度范围内的光强度。果蝇光感受器鲁棒地缩短,与胺碱细胞一起,处理视觉场景并将所得信号提供给下游靶标。这里,我们在光感受器 - 胺碱细胞层中模拟了视觉处理的第一步。我们提出了一种新的分隔归一化处理器(DNP),用于在光感受器 - 胺碱细胞层中进行建模计算。 DNP明确地模拟了氨基细胞的光感受器前馈和时间反馈处理路径和时空反馈路径。然后,我们正式表征DNP的对比度增益控制,并提供可以有效地识别每个馈电和反馈DNP组件的稀疏识别算法。此处呈现的算法是第一次演示分隔归一化处理器的分除式化处理器的组件的易识别和鲁棒识别。可以在实验设置中容易地使用稀疏识别算法,并且它们的有效性与几个例子进行了证明。

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