标注无约束的人脸图像:一种可扩展的方法

Emma Taborsky, Kristen C. Allen, Austin Blanton, Anil K. Jain, Brendan Klare
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引用次数: 9

摘要

随着无约束人脸识别数据集从包含可由商品人脸检测器自动检测到具有完整姿态变化的人脸图像发展到必须手动定位,开发基准数据集需要大量的注释工作。在这项工作中,我们描述了一个系统的方法来注释完全无约束的面部图像使用众包劳动。对于这样的数据准备,执行一系列众包任务,首先是对图像和视频中包含的所有人脸进行边界框注释,然后识别这些图像中标记的感兴趣的人,最后是关键面部基准点的地标注释。为了允许这种注释扩展到大量的图像,提供了一种软件系统架构,可以实现每小时30,000个注释的持续速率(或每分钟500个手动注释)。虽然以前文献中描述的众包指导通常涉及多项选择题或文本输入,但我们的任务要求注释者提供图像中的几何原语(矩形和点)。因此,提供了将图像的多个注释组合为单个结果并自动测量给定注释质量的算法。最后,为提高众包图像标注用于人脸检测与识别的准确性和可扩展性提供了其他指导。
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Annotating Unconstrained Face Imagery: A scalable approach
As unconstrained face recognition datasets progress from containing faces that can be automatically detected by commodity face detectors to face imagery with full pose variations that must instead be manually localized, a significant amount of annotation effort is required for developing benchmark datasets. In this work we describe a systematic approach for annotating fully unconstrained face imagery using crowdsourced labor. For such data preparation, a cascade of crowdsourced tasks are performed, which begins with bounding box annotations on all faces contained in images and videos, followed by identification of the labelled person of interest in such imagery, and, finally, landmark annotation of key facial fiducial points. In order to allow such annotations to scale to large volumes of imagery, a software system architecture is provided which achieves a sustained rate of 30,000 annotations per hour (or 500 manual annotations per minute). While previous crowdsourcing guidance described in the literature generally involved multiple choice questions or text input, our tasks required annotators to provide geometric primitives (rectangles and points) in images. As such, algorithms are provided for combining multiple annotations of an image into a single result, and automatically measuring the quality of a given annotation. Finally, other guidance is provided for improving the accuracy and scalability of crowdsourced image annotation for face detection and recognition.
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