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A Study and Comparison of Human and Deep Learning Recognition Performance Under Visual Distortions

机译:视觉扭曲下人类和深度学习识别性能的研究与比较

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Deep neural networks (DNNs) achieve excellent performance on standard classification tasks. However, under image quality distortions such as blur and noise, classification accuracy becomes poor. In this work, we compare the performance of DNNs with human subjects on distorted images. We show that, although DNNs perform better than or on par with humans on good quality images, DNN performance is still much lower than human performance on distorted images. We additionally find that there is little correlation in errors between DNNs and human subjects. This could be an indication that the internal representation of images are different between DNNs and the human visual system. These comparisons with human performance could be used to guide future development of more robust DNNs.
机译:深度神经网络(DNN)在标准分类任务上实现了出色的性能。然而,在图像质量扭曲之类的模糊和噪声之类的扭曲下,分类精度变差。在这项工作中,我们将DNN与人类受试者的性能进行比较扭曲图像。我们展示了,尽管DNN与人类的良好质量图像更好或与人类相提并论,但DNN性能仍然远低于扭曲图像的人类性能。我们还发现,DNN和人类受试者之间的错误几乎没有相关性。这可能是一种指示图像的内部表示在DNN和人类视觉系统之间是不同的。这些与人类绩效的比较可用于引导未来发展更强大的DNN。

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