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Perceptual Dominance in Brief Presentations of Mixed Images: Human Perception vs. Deep Neural Networks

机译:混合图像简短呈现中的感知优势:人类感知与深度神经网络

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摘要

Visual perception involves continuously choosing the most prominent inputs while suppressing others. Neuroscientists induce visual competitions in various ways to study why and how the brain makes choices of what to perceive. Recently deep neural networks (DNNs) have been used as models of the ventral stream of the visual system, due to similarities in both accuracy and hierarchy of feature representation. In this study we created non-dynamic visual competitions for humans by briefly presenting mixtures of two images. We then tested feed-forward DNNs with similar mixtures and examined their behavior. We found that both humans and DNNs tend to perceive only one image when presented with a mixture of two. We revealed image parameters which predict this perceptual dominance and compared their predictability for the two visual systems. Our findings can be used to both improve DNNs as models, as well as potentially improve their performance by imitating biological behaviors.
机译:视觉感知包括不断选择最突出的输入,而压制其他输入。神经科学家以各种方式引发视觉竞赛,以研究大脑为什么以及如何做出感知选择的选择。由于特征表示的准确性和层次结构上的相似性,近来深层神经网络(DNN)已被用作视觉系统腹侧流的模型。在这项研究中,我们通过简要介绍两个图像的混合物为人类创建了非动态视觉竞赛。然后,我们用相似的混合物测试了前馈DNN,并检查了它们的行为。我们发现,当人类和DNN混合使用两种图像时,它们往往只感知到一张图像。我们揭示了可预测这种感知优势的图像参数,并比较了它们对于两个视觉系统的可预测性。我们的发现可用于改进DNN的模型,以及通过模仿生物学行为来潜在地改善其性能。

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