基于深度学习的超分辨率能帮助人类识别人脸吗?

IF 1.3 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Erik Velan, M. Fontani, Sergio Carrato, M. Jerian
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引用次数: 1

摘要

过去十年见证了机器学习在图像处理方面的复兴。超分辨率(SR)是深度学习技术取得令人印象深刻成果的领域之一,特别关注面部图像的SR。面部图像的检测和比对是法医视频分析的关键环节之一;因此,一个令人信服的问题是,最近的SR技术是否可以帮助人类操作员进行人脸识别(FR),特别是在具有挑战性的场景中,非常低分辨率的图像可用,这是典型的监控记录。本文通过一个简单而深刻的实验解决了这样一个问题:我们使用了两种最先进的基于深度学习的SR算法来增强30位世界名人的一些非常低分辨率的面孔。然后,我们要求一个由130多人组成的异质小组来识别这些面孔,并将其识别准确率与展示相同面孔的简单三次插值版本所获得的识别准确率进行比较。结果有些令人惊讶:尽管SR增强图像在视觉外观方面具有无可争议的普遍优势,但SR技术在整体识别准确性方面没有带来相当大的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Does Deep Learning-Based Super-Resolution Help Humans With Face Recognition?
The last decade witnessed a renaissance of machine learning for image processing. Super-resolution (SR) is one of the areas where deep learning techniques have achieved impressive results, with a specific focus on the SR of facial images. Examining and comparing facial images is one of the critical activities in forensic video analysis; a compelling question is thus whether recent SR techniques could help face recognition (FR) made by a human operator, especially in the challenging scenario where very low resolution images are available, which is typical of surveillance recordings. This paper addresses such a question through a simple yet insightful experiment: we used two state-of-the-art deep learning-based SR algorithms to enhance some very low-resolution faces of 30 worldwide celebrities. We then asked a heterogeneous group of more than 130 individuals to recognize them and compared the recognition accuracy against the one achieved by presenting a simple bicubic-interpolated version of the same faces. Results are somehow surprising: despite an undisputed general superiority of SR-enhanced images in terms of visual appearance, SR techniques brought no considerable advantage in overall recognition accuracy.
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