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Stochastic resonance for detection of change in neuronal arrays with threshold

机译:随机共振检测阈值下神经元阵列的变化

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In the paper,the problem of change detection is discussed from a viewpoint of stochastic resonance.Survival in an adversarial environment requires animals to detect sensory changes quickly,as well as accurately.So neurons are challenged to discern 'real 'change in input as quickly as possible while ignoring noise fluctuations.Mathematically,this is a change- detection problem.It has been established that noise can sometimes help some nonlinearities to enhance signal transmission.Can change detection benefit from noise?A classic change detection problem is introduced.We used neuronal arrays with the threshold-like elements to design a suboptimal detector.The result demonstrates that the detector can perform better than linear detector in non-Gaussian noise and has a more simple architecture than the optimal detector. Fewer samples are needed when change is detected,and input changes can be detected more reliably as well as quickly by adding optimum amount noise.Accordingly,the findings support that neuron population have a reliable capability of exploiting ambient noise.
机译:在本文中,从随机共振的角度讨论了变化检测的问题。在对抗环境中的生存需要动物快速而准确地检测到感觉变化。因此,神经元面临着挑战,要尽快识别输入中的“真实”变化从数学上讲,这是一个变化检测问题。已确定噪声有时可以帮助某些非线性来增强信号传输。变化检测可以从噪声中受益吗?引入了经典的变化检测问题。结果表明,在非高斯噪声的情况下,该检测器的性能优于线性检测器,并且其结构比最佳检测器更简单。检测到变化时需要的样本更少,并且通过添加最佳量的噪声可以更可靠,更快地检测到输入变化。因此,这些发现支持神经元种群具有利用环境噪声的可靠能力。

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