UPM-GTI-Face: A dataset for the evaluation of the impact of distance and masks in face detection and recognition systems

Marcos Rodrigo, E. González-Sosa, Carlos Cuevas, N. García
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Abstract

We present a novel dataset for the evaluation of face detection and recognition algorithms in challenging surveillance scenarios. The dataset consists in 4K images of different subjects captured at annotated distances ranging from 1 to 30 meters, both in indoor and outdoor environments, and under two face mask conditions (with and without). To the best of our knowledge, this is the only existing dataset that addresses the joint impact of masks and distances in a rigorous manner. We also propose an end-to-end fully automatic face detection and recognition system to provide baseline results on this dataset. Face detection is performed using Tiny Faces network, while face recognition is performed using VGG Face network. Experimental results show very high detection and recognition rates up to a distance of 20 meters, where the impact of distance is clear (especially for the latter). The use of face masks degrades the detection range and produces less consistent recognition results.
UPM-GTI-Face:用于评估距离和掩模在人脸检测和识别系统中的影响的数据集
我们提出了一个新的数据集,用于评估具有挑战性的监视场景中的人脸检测和识别算法。该数据集由不同主题的4K图像组成,这些图像在1到30米的标注距离上拍摄,包括室内和室外环境,以及两种面罩条件(带面罩和不带面罩)。据我们所知,这是唯一一个以严格的方式解决掩码和距离共同影响的现有数据集。我们还提出了一个端到端全自动人脸检测和识别系统,以提供该数据集的基线结果。人脸检测采用Tiny Faces网络,人脸识别采用VGG Face网络。实验结果表明,在距离为20米的情况下,检测和识别率非常高,其中距离的影响是明显的(特别是后者)。使用口罩降低了检测范围,产生的识别结果一致性较差。
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