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Learning V4 Curvature Cell Populations from Sparse Endstopped Cells

机译:从稀疏终止的细胞中学习V4曲率细胞群体

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We investigate in this paper the capabilities of learning sparse representations from model cells that respond to curvatures. Sparse coding has been successful at generating receptive fields similar to those of simples cells in area V1 from natural images. We are interested here in neurons from intermediate areas, such as V2 and V4. Neurons on those areas are known to respond to corners and curvatures. Endstopped cells (also known as hypercomplex) are hypothesized to be selective to curvatures and are greatly represented in area V2. We propose here a sparse coding learning approach where the input is not images, nor simple cells, but curvature selective cells. We show that by learning a sparse code of endstopped cells we can obtain different degrees of curvature representations.
机译:我们在本文中研究了从响应曲率的模型单元中学习稀疏表示的能力。稀疏编码已成功地从自然图像中生成了与区域V1中的简单单元格相似的感受野。我们对中间区域(例如V2和V4)的神经元感兴趣。已知这些区域的神经元会对角和曲率作出反应。假设末端封闭的细胞(也称为超复合物)对弯曲具有选择性,并在V2区域中有很大的代表。我们在这里提出一种稀疏编码学习方法,其中输入不是图像,也不是简单单元格,而是曲率选择单元格。我们表明,通过学习末端止动单元的稀疏代码,我们可以获得不同程度的曲率表示。

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