Recurrent neural networks (RNNs) have been shown to perform better than feedforward architectures in visual object categorization tasks, especially in challenging conditions such as cluttered images. However, little is known about the exact computational role of recurrent information flow in these conditions. Here we test RNNs trained for object categorization on the hypothesis that recurrence iteratively aids object categorization via the communication of category-orthogonal auxiliary variables (the location, orientation, and scale of the object). Using diagnostic linear readouts, we find that: (a) information about auxiliary variables increases across time in all network layers, (b) this information is indeed present in the recurrent information flow, and (c) its manipulation significantly affects task performance. These observations confirm the hypothesis that category-orthogonal auxiliary variable information is conveyed through recurrent connectivity and is used to optimize category inference in cluttered environments.
翻译:常规神经网络(RNNS)在视觉物体分类任务中表现优于饲料向前结构,特别是在诸如乱七八糟的图像等具有挑战性的条件下。然而,在这些条件下,对经常性信息流动的确切计算作用知之甚少。在这里,我们测试了受过目标分类训练的RNNs, 假设通过交流类别-垂直辅助变量(对象的位置、方向和规模)反复重复迭代辅助物体分类。我们发现,(a) 在所有网络层中,关于辅助变量的信息会逐年增加,(b) 这一信息确实存在于经常性信息流中,以及(c) 其操纵会严重影响任务绩效。这些观察证实了这样的假设,即分类-垂直辅助变量信息是通过经常性连接传递的,并被用于优化在被污染环境中的分类推断。