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Learning divisive normalization in primary visual cortex

机译:学习原发性视觉皮层的划分标准化

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Divisive normalization (DN) is a prominent computational building block in the brain that has been proposed as a canonical cortical operation. Numerous experimental studies have verified its importance for capturing nonlinear neural response properties to simple, artificial stimuli, and computational studies suggest that DN is also an important component for processing natural stimuli. However, we lack quantitative models of DN that are directly informed by measurements of spiking responses in the brain and applicable to arbitrary stimuli. Here, we propose a DN model that is applicable to arbitrary input images. We test its ability to predict how neurons in macaque primary visual cortex (V1) respond to natural images, with a focus on nonlinear response properties within the classical receptive field. Our model consists of one layer of subunits followed by learned orientation-specific DN. It outperforms linear-nonlinear and wavelet-based feature representations and makes a significant step towards the performance of state-of-the-art convolutional neural network (CNN) models. Unlike deep CNNs, our compact DN model offers a direct interpretation of the nature of normalization. By inspecting the learned normalization pool of our model, we gained insights into a long-standing question about the tuning properties of DN that update the current textbook description: we found that within the receptive field oriented features were normalized preferentially by features with similar orientation rather than non-specifically as currently assumed.
机译:划分标准化(DN)是大脑中的突出计算构建块,其被提出为规范皮质操作。许多实验研究已经验证了对简单,人工刺激的非线性神经反应性能的重要性,并且计算研究表明DN也是加工天然刺激的重要组成部分。然而,我们缺乏DN的定量模型,通过尖刺反应的测量直接通知,并且适用于任意刺激。在这里,我们提出了一种适用于任意输入图像的DN模型。我们测试其预测神经元在猕猴视觉皮质(V1)中的神经元的能力,其响应于经典接收领域内的非线性响应性能。我们的模型由一层亚基组成,然后是学习的方向特定的DN。它优于线性非线性和基于小波的特征表示,并对最先进的卷积神经网络(CNN)模型进行了重要阶梯。与Deep CNN不同,我们的紧凑型DN模型提供了对归一化性质的直接解释。通过检查我们模型的学习归一化池,我们对有关更新当前教科书的调整属性的长期问题,我们发现我们发现在接收领域的特征中,优先通过具有类似方向的特征来归一化。不是特别假设的。

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