倾斜人脸数据集及其验证

Nanxi Wang, Zhongyuan Wang, Zheng He, Baojin Huang, Liguo Zhou, Zhen Han
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引用次数: 4

摘要

由于监控摄像机通常安装在较高的位置以俯瞰目标,因此俯视图上的倾斜面在公共视频监控环境中很常见。基于深度学习模型的人脸识别方法已经取得了优异的性能,但在忽略监视场景方面仍有很大的差距。人脸识别的结果不仅取决于模型的结构,还取决于训练样本的完整性和多样性。现有的多姿态人脸数据集没有覆盖完整的俯视图人脸样本,因此它们训练的模型不能提供令人满意的精度。为此,本文首创了一种多视角倾斜人脸数据集(TFD),该数据集由精心设计的架空捕获设备收集。TFD包含来自927名受试者的11,124张人脸图像,覆盖了俯视图的各种倾斜角度。为了验证构建数据集的有效性,我们进一步使用WiderFace、Webface和我们的TFD分别训练的相应模型进行了全面的人脸检测和识别实验。实验结果表明,TFD大大提高了俯视图下人脸检测和识别的准确率。TFD可在https://github.com/huang1204510135/D FD上获得。
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A Tilt-Angle Face Dataset And Its Validation
Since the surveillance cameras are usually mounted at a high position to overlook targets, tilt-angle faces on overhead view are common in the public video surveillance environment. Face recognition approaches based on deep learning models have achieved excellent performance, but there remains a large gap for the overlooking surveillance scenarios. The results of face recognition depend not only on the structure of the model, but also on the completeness and diversity of the training samples. The existing multi-pose face datasets do not cover complete top-view face samples, and the models trained by them thus cannot provide satisfactory accuracy. To this end, this paper pioneers a multi-view tilt-angle face dataset (TFD), which is collected with an elaborately devised overhead capture equipment. TFD contains 11,124 face images from 927 subjects, covering a variety of tilt angles on the overhead view. To verify the validity of the constructed dataset, we further conduct comprehensive face detection and recognition experiments using the corresponding models trained by WiderFace, Webface and our TFD, respectively. Experimental results show that our TFD substantially promotes the face detection and recognition accuracy under the top-view situation. TFD is available at https://github.com/huang1204510135/D FD.
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