论文标题

maskedface-net-在covid-19的上下文中,正确/正确掩盖的面部图像的数据集

MaskedFace-Net -- A Dataset of Correctly/Incorrectly Masked Face Images in the Context of COVID-19

论文作者

Cabani, Adnane, Hammoudi, Karim, Benhabiles, Halim, Melkemi, Mahmoud

论文摘要

戴面膜的戴似乎是限制Covid-19的扩散的解决方案。在这种情况下,期望有效的识别系统检查人们面对受管制区域的面孔是否被掩盖。为了执行此任务,大量的蒙面面孔数据集对于训练深度学习模型来检测戴着口罩的人和那些不戴口罩的人是必需的。文献中有一些大型蒙面面孔数据集。但是,目前,尚无可用的蒙版面部图像数据集,可以检查是否正确佩戴被检测到的蒙版面孔。的确,由于做法不好,行为不良或个人(例如,儿童,老年人),许多人无法正确戴上口罩。由于这些原因,一些戴着戴着戴着运动的面具打算使人们对这个问题和良好做法的敏感。从这个意义上讲,这项工作提出了三种类型的蒙版面部检测数据集。也就是说,正确掩盖的面部数据集(CMFD),错误掩盖的面部数据集(IMFD)及其用于全局蒙版面部检测(MaskEdface-net)的组合。提出了一个具有双重目标的逼真的蒙面面部数据集:i)检测脸部掩盖或未掩盖的人,ii)检测面孔正确戴着口罩或不正确磨损的面具(例如;在机场门户或人群中)。据我们所知,没有大的蒙面面孔数据集为允许戴面具戴分析的分类提供了如此刻薄的分类。此外,这项工作在全球范围内介绍了施加的面具到面的可变形模型,以允许生成其他蒙版面部图像,特别是用特定的掩码。我们的蒙版面部图像数据集(137,016张图像)可在https://github.com/cabani/maskedface-net上找到。

The wearing of the face masks appears as a solution for limiting the spread of COVID-19. In this context, efficient recognition systems are expected for checking that people faces are masked in regulated areas. To perform this task, a large dataset of masked faces is necessary for training deep learning models towards detecting people wearing masks and those not wearing masks. Some large datasets of masked faces are available in the literature. However, at the moment, there are no available large dataset of masked face images that permits to check if detected masked faces are correctly worn or not. Indeed, many people are not correctly wearing their masks due to bad practices, bad behaviors or vulnerability of individuals (e.g., children, old people). For these reasons, several mask wearing campaigns intend to sensitize people about this problem and good practices. In this sense, this work proposes three types of masked face detection dataset; namely, the Correctly Masked Face Dataset (CMFD), the Incorrectly Masked Face Dataset (IMFD) and their combination for the global masked face detection (MaskedFace-Net). Realistic masked face datasets are proposed with a twofold objective: i) to detect people having their faces masked or not masked, ii) to detect faces having their masks correctly worn or incorrectly worn (e.g.; at airport portals or in crowds). To the best of our knowledge, no large dataset of masked faces provides such a granularity of classification towards permitting mask wearing analysis. Moreover, this work globally presents the applied mask-to-face deformable model for permitting the generation of other masked face images, notably with specific masks. Our datasets of masked face images (137,016 images) are available at https://github.com/cabani/MaskedFace-Net.

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