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Emergence of movement sensitive neurons' properties by learning a sparse code for natural moving images

机译:运动敏感神经元的出现通过学习自然运动图像的稀疏代码

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Olshausen & Field demonstrated that a learning algorithm that attempts to generate a sparse code for natural scenes develops a complete family of localised, oriented, bandpass receptive fields, similar to those of 'simple cells' in Vl. This paper describes an algorithm which finds a sparse code for sequences of images that preserves information about the input. This algorithm when trained on natural video sequences develops bases representing the movement in particular directions with particular speeds, similar to the receptive fields of the movement-sensitive cells observed in cortical visual areas. Furthermore, in contrast to previous approaches to learning direction selectivity, the timing of neuronal activity encodes the phase of the movement, so the precise timing of spikes is crucially important to the information encoding.
机译:Olshausen&Field展示了一种尝试为自然场景生成稀疏代码的学习算法开发了一个完整的本地化,面向的带通接收领域系列,类似于VL中的“简单单元格”。本文介绍了一种算法,该算法找到了用于保留有关输入信息的图像序列的稀疏代码。该算法在自然视频序列上培训时,在特定的速度下形成表示表示运动的碱基,类似于在皮质视觉区域中观察到的运动敏感单元的接收领域。此外,与先前的学习方向选择性的方法相反,神经元活动的定时对移动的相位进行了编码,因此尖峰的精确定时对信息编码至关重要。

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