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首页> 外文期刊>PLoS Computational Biology >Efficient Sparse Coding in Early Sensory Processing: Lessons from Signal Recovery
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Efficient Sparse Coding in Early Sensory Processing: Lessons from Signal Recovery

机译:早期感官处理中的有效稀疏编码:信号恢复的教训

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摘要

Sensory representations are not only sparse, but often overcomplete: coding units significantly outnumber the input units. For models of neural coding this overcompleteness poses a computational challenge for shaping the signal processing channels as well as for using the large and sparse representations in an efficient way. We argue that higher level overcompleteness becomes computationally tractable by imposing sparsity on synaptic activity and we also show that such structural sparsity can be facilitated by statistics based decomposition of the stimuli into typical and atypical parts prior to sparse coding. Typical parts represent large-scale correlations, thus they can be significantly compressed. Atypical parts, on the other hand, represent local features and are the subjects of actual sparse coding. When applied on natural images, our decomposition based sparse coding model can efficiently form overcomplete codes and both center-surround and oriented filters are obtained similar to those observed in the retina and the primary visual cortex, respectively. Therefore we hypothesize that the proposed computational architecture can be seen as a coherent functional model of the first stages of sensory coding in early vision.
机译:感官表示不仅稀疏,而且常常不完整:编码单元大大超过输入单元。对于神经编码的模型,这种超完备性给整形信号处理通道以及以有效方式使用大而稀疏的表示带来了计算上的挑战。我们认为,通过在突触活动上施加稀疏性,可以使较高级别的不完全性变得易于计算,并且我们还表明,通过在稀疏编码之前将基于统计信息的刺激分解为典型和非典型部分,可以促进这种结构性稀疏性。典型部分代表了大规模的相关性,因此可以对其进行显着压缩。另一方面,非典型部分代表局部特征,并且是实际稀疏编码的主题。当应用于自然图像时,我们基于分解的稀疏编码模型可以有效地形成过完整的编码,并且获得的中心环绕滤波器和定向滤波器都分别类似于在视网膜和主视觉皮层中观察到的那些。因此,我们假设所提出的计算体系结构可以被视为早期视觉中感觉编码第一阶段的相干功能模型。

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