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From early biological models to CNNs: do they look where humans look?

机译:从早期生物模型到CNNS:他们看起来是人类的样子吗?

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Early hierarchical computational visual models as well as recent deep neural networks have been inspired by the functioning of the primate visual cortex system. Although much effort has been made to dissect neural networks to visualize the features they learn at the individual units, the scope of the visualizations has been limited to a categorization of the features in terms of their semantic level. Considering the ability humans have to select high semantic level regions of a scene, the question whether neural networks can match this ability, and if similarity with humans attention is correlated with neural networks performance naturally arise. To address this question we propose a pipeline to select and compare sets of feature points that maximally activate individual networks units to human fixations. We extract features from a variety of neural networks, from early hierarchical models such as HMAX up to recent deep convolutional neural netwoks such as Densnet, to compare them to human fixations. Experiments over the ETD database show that human fixations correlate with CNNs features from deep layers significantly better than with random sets of points, while they do not with features extracted from the first layers of CNNs, nor with the HMAX features, which seem to have low semantic level compared with the features that respond to the automatically learned filters of CNNs. It also turns out that there is a correlation between CNN's human similarity and classification performance.
机译:早期的分层计算视觉模型以及最近的深神经网络已经受到灵长类动物视觉皮质系统的运作的启发。虽然已经努力解剖神经网络以可视化他们在各个单位学习的特征,但可视化的范围仅限于在其语义水平方面对特征的分类。考虑到人类必须选择一个场景的高语义级别区域,这个问题是神经网络是否可以匹配这种能力,如果与人类注意的相似性与神经网络性能有关,则自然地出现。为了解决这个问题,我们提出了一个管道来选择和比较一组特征点,最大限度地激活单个网络单元的人类固定。我们从各种神经网络中提取来自各种神经网络的特征,从早期的分层模型,例如HMAX至最近的深度卷积神经网络,如DENNNET,以将它们与人类固定进行比较。 ETD数据库的实验表明,人类固定与深层的CNNS功能显着优于随机点,而不是从第一层CNNS提取的功能,也不具有HMAX特征,似乎具有低与响应自动学习的CNN的过滤器的功能相比,语义水平。结果表明,CNN的人类相似性和分类性能之间存在相关性。

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