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Assessing Shape Bias Property of Convolutional Neural Networks

机译:评估卷积神经网络的形状偏见性质

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It is known that humans display "shape bias" when classifying new items, i.e., they prefer to categorize objects based on their shape rather than color. Convolutional Neural Networks (CNNs) are also designed to take into account the spatial structure of image data. In fact, experiments on image datasets, consisting of triples of a probe image, a shape-match and a color-match, have shown that one-shot learning models display shape bias as well. In this paper, we examine the shape bias property of CNNs. In order to conduct large scale experiments, we propose using the model accuracy on images with reversed brightness as a metric to evaluate the shape bias property. Such images, called negative images, contain objects that have the same shape as original images, but with different colors. Through extensive systematic experiments, we investigate the role of different factors, such as training data, model architecture, initialization and regularization techniques, on the shape bias property of CNNs. We show that it is possible to design different CNNs that achieve similar accuracy on original images, but perform significantly different on negative images, suggesting that CNNs do not intrinsically display shape bias. We then show that CNNs are able to learn and generalize the structures, when the model is properly initialized or data is properly augmented, and if batch normalization is used.
机译:众所周知,人类在分类新项目时显示“形状偏见”,即,它们更愿意根据其形状而不是颜色对象进行分类。卷积神经网络(CNNS)还被设计用于考虑图像数据的空间结构。事实上,在图像数据集上的实验,由探针图像,形状匹配和颜色匹配组成,已经显示了一次性学习模型也显示出形状偏差。在本文中,我们检查了CNN的形状偏差特性。为了进行大规模的实验,我们建议使用具有反向亮度的图像的模型精度作为指标来评估形状偏置特性。这些图像称为负图像,包含具有与原始图像相同的对象,但具有不同的颜色。通过广泛的系统实验,我们调查不同因素的作用,例如培训数据,模型架构,初始化和正则化技术,在CNN的形状偏置特性上。我们表明,可以设计不同的CNN,可以在原始图像上实现类似的准确性,但在负图像上执行显着不同,表明CNN没有本质上显示形状偏差。然后,我们显示CNNS能够学习和概括结构,当模型被正确初始化或数据被正确增强,并且如果使用批次归一化。

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