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Sparse spike coding in an asynchronous feed-forward multi-layer neural network using matching pursuit

机译:使用匹配追踪的异步前馈多层神经网络中的稀疏峰值编码

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In order to account for the rapidity of visual processing, we explore visual coding strategies using a one-pass feed-forward spiking neural network. We based our model on the work of Van Rullen and Thorpe Neural Comput, 13 (6) (2001) 1255, which constructs a retinal representation using an orthogonal wavelet transform. This strategy provides a spike code, thanks to a rank order coding scheme which offers an alternative to the classical spike frequency coding scheme. We extended this model to efficient representations in arbitrary linear generative models by implementing lateral interactions on top of this feed-forward model. This method uses a matching pursuit scheme―recursively detecting in the image the best match with the elements of a dictionary and then subtracting it―and which may similarly define a visual spike code. In particular, this transform could be used with large and arbitrary dictionaries, so that we may define an over-complete representation which may define an efficient sparse spike coding scheme in arbitrary multi-layered architectures. We show here extensions of this method of computing with spike events, introducing an adaptive scheme leading to the emergence of V1-like receptive fields and then a model of bottom-up saliency pursuit.
机译:为了考虑视觉处理的快速性,我们探索了使用单程前馈尖峰神经网络的视觉编码策略。我们基于Van Rullen和Thorpe Neural Comput,13(6)(2001)1255的工作建立模型,该工作使用正交小波变换构造视网膜表示。这种策略提供了一个尖峰代码,这要归功于秩排序编码方案,该方案为经典尖峰频率编码方案提供了替代方案。通过在此前馈模型的顶部实现横向交互,我们将该模型扩展为任意线性生成模型中的有效表示。该方法使用匹配追踪方案-在图像中递归地检测与字典元素的最佳匹配,然后减去它-并且可以类似地定义视觉尖峰代码。特别是,此变换可与大型字典和任意字典一起使用,以便我们可以定义一个过完整的表示形式,该形式可以定义任意多层体系结构中的有效稀疏尖峰编码方案。我们在这里展示了这种利用尖峰事件进行计算的方法的扩展,介绍了一种导致V1类接收场出现的自适应方案,然后提出了一种自下而上的显着性追求模型。

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