论文标题

看到眼睛?图像操纵下人类和深度卷积神经网络中对象识别性能的比较

Seeing eye-to-eye? A comparison of object recognition performance in humans and deep convolutional neural networks under image manipulation

论文作者

van Dyck, Leonard E., Gruber, Walter R.

论文摘要

在相当长的时间里,深层卷积神经网络(DCNN)在对象识别方面达到了人类的基准表现。因此,计算神经科学和机器学习领域已开始将众多的相似性和差异归因于人工和生物学视觉。这项研究的目的是在分类数据集中学习范式中人类与前馈神经网络之间的视觉核心对象识别性能进行行为比较。为此,人类参与者(n = 65)在在线实验中与不同的进发vnns竞争。基于七个不同猴子类别的典型学习过程的设计方法包括具有自然示例的训练和验证阶段,以及具有新颖,无经验的形状和颜色操纵的测试阶段。精度的分析表明,人类不仅在所有条件下都胜过DCNN,而且还表现出对形状的鲁棒性明显更大,最著名的是颜色改变。此外,对行为模式的精确检查通过揭示两组之间的独立分类错误来突出这些发现。获得的结果表明,在视觉核心对象识别受操纵图像时,人类与人造饲料架构形成鲜明对比。通常,这些发现与越来越多的文献相吻合,这暗示着复发是足够概括能力的关键因素。

For a considerable time, deep convolutional neural networks (DCNNs) have reached human benchmark performance in object recognition. On that account, computational neuroscience and the field of machine learning have started to attribute numerous similarities and differences to artificial and biological vision. This study aims towards a behavioral comparison of visual core object recognition performance between humans and feedforward neural networks in a classification learning paradigm on an ImageNet data set. For this purpose, human participants (n = 65) competed in an online experiment against different feedforward DCNNs. The designed approach based on a typical learning process of seven different monkey categories included a training and validation phase with natural examples, as well as a testing phase with novel, unexperienced shape and color manipulations. Analyses of accuracy revealed that humans not only outperform DCNNs on all conditions, but also display significantly greater robustness towards shape and most notably color alterations. Furthermore, a precise examination of behavioral patterns highlights these findings by revealing independent classification errors between the groups. The obtained results show that humans contrast strongly with artificial feedforward architectures when it comes to visual core object recognition of manipulated images. In general, these findings are in line with a growing body of literature, that hints towards recurrence as a crucial factor for adequate generalization abilities.

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