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Deciphering subsampled data: adaptive compressive sampling as a principle of brain communication

机译:解密次采样数据:自适应压缩采样是大脑交流的原理

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A new algorithm is proposed for a) unsupervised learning of sparse representations from subsampled measurements and b) estimating the parameters required for linearly reconstructing signals from the sparse codes. We verify that the new algorithm performs efficient data compression on par with the recent method of compressive sampling. Further, we demonstrate that the algorithm performs robustly when stacked in several stages or when applied in undercomplete or over-complete situations. The new algorithm can explain how neural populations in the brain that receive subsampled input through fiber bottlenecks are able to form coherent response properties.
机译:提出了一种新算法,用于a)从子采样测量中无监督学习稀疏表示,以及b)估计从稀疏代码线性重构信号所需的参数。我们验证了该新算法与最新的压缩采样方法相比,可以执行有效的数据压缩。此外,我们证明了该算法在分几个阶段进行堆叠或在未完成或过完成的情况下应用时均具有出色的性能。新算法可以解释通过纤维瓶颈接收欠采样输入的大脑神经种群如何形成相干响应特性。

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