Adding biological constraints to CNNs makes image classification more human-like and robust

Gaurav Malhotra, B. D. Evans, J. Bowers
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引用次数: 1

Abstract

In this study, we show that when standard convolutional neural networks (CNNs) are trained end-to-end on datasets containing low-level and spatially high-frequency features, they are susceptible to learning these potentially idiosyncratic features if they are predictive of the output class. Such features are extremely unlikely to play a major role in human object recognition, where instead a strong preference for shape is observed. Through a series of empirical studies, we show that standard CNNs cannot overcome this reliance on non-shape features merely by making training more ecologically plausible or using standard regularisation methods. However, we show that these problems can be ameliorated by forgoing end-to-end learning and processing images initially with Gabor filters, in a manner that more closely resembles biological vision.
在cnn中加入生物约束使得图像分类更像人类和鲁棒性
在这项研究中,我们表明,当标准卷积神经网络(cnn)在包含低水平和空间高频特征的数据集上进行端到端训练时,如果它们预测输出类别,它们很容易学习这些潜在的特质特征。这些特征不太可能在人类物体识别中发挥主要作用,相反,人们观察到对形状的强烈偏好。通过一系列的实证研究,我们表明标准cnn不能仅仅通过使训练更加生态可信或使用标准正则化方法来克服对非形状特征的依赖。然而,我们表明,这些问题可以通过放弃端到端学习和最初使用Gabor过滤器处理图像来改善,以一种更接近于生物视觉的方式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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