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Encoding and Decoding Mixed Bandlimited Signals Using Spiking Integrate-and-Fire Neurons

机译:使用尖峰积分并发射神经元对混合的带限信号进行编码和解码

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Conventional sampling focuses on encoding and decoding bandlimited signals by recording signal amplitudes at known time points. Alternately, sampling can be approached using biologically-inspired schemes. Among these are integrate- and-fire time encoding machines (IF-TEMs). They behave like simplified versions of spiking neurons and encode their input using spike times rather than amplitudes. When multiple of these neurons jointly process a set of mixed signals, they form one layer in a feedforward spiking neural network. In this paper, we investigate the encoding and decoding potential of such a layer. We propose a setup to sample a set of bandlimited signals formed by summing a finite number of sincs, by mixing them and sampling the result using different IF-TEMs. We provide conditions for perfect recovery of the set of signals from the samples in the noiseless case, and suggest an algorithm to perform the reconstruction.
机译:常规采样着重于通过记录已知时间点的信号幅度来对带宽受限的信号进行编码和解码。或者,可以使用生物学启发的方案进行采样。其中包括集成和发射时间编码机(IF-TEM)。它们的行为类似于尖峰神经元的简化版本,并使用尖峰时间而非幅度对输入进行编码。当这些神经元中的多个神经元共同处理一组混合信号时,它们在前馈尖峰神经网络中形成一层。在本文中,我们研究了这种层的编码和解码潜力。我们提出一种设置来采样一组带宽受限信号,该带宽受限信号是通过对有限数量的sincs求和,混合并使用不同的IF-TEM采样结果而形成的。我们提供了在无噪声情况下从样本中完美恢复信号集的条件,并提出了执行重构的算法。

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