Swift response to the detection of endangered minors is an ongoing concern for law enforcement. Many child-focused investigations hinge on digital evidence discovery and analysis. Automated age estimation techniques are needed to aid in these investigations to expedite this evidence discovery process, and decrease investigator exposure to traumatic material. Automated techniques also show promise in decreasing the overflowing backlog of evidence obtained from increasing numbers of devices and online services. A lack of sufficient training data combined with natural human variance has been long hindering accurate automated age estimation -- especially for underage subjects. This paper presented a comprehensive evaluation of the performance of two cloud age estimation services (Amazon Web Service's Rekognition service and Microsoft Azure's Face API) against a dataset of over 21,800 underage subjects. The objective of this work is to evaluate the influence that certain human biometric factors, facial expressions, and image quality (i.e. blur, noise, exposure and resolution) have on the outcome of automated age estimation services. A thorough evaluation allows us to identify the most influential factors to be overcome in future age estimation systems.
翻译:许多以儿童为重点的调查取决于数字证据的发现和分析,需要自动化年龄估计技术来协助这些调查,以加快这一证据发现过程,减少调查员接触创伤材料的机会。自动化技术还表明,有可能减少从越来越多的装置和在线服务中获取的积压证据。缺乏足够的培训数据,加上自然人类差异,长期以来一直妨碍准确的自动年龄估计,特别是对未成年对象的自动年龄估计。本文全面评价了两个云层年龄估计服务(Amazon Web Service rekognition Service和微软Azure Face API)对21 800多名未成年对象的数据组合的绩效。这项工作的目的是评价某些人类生物鉴别因素、面部表现和图像质量(即模糊、噪音、暴露和分辨率)对自动年龄估计服务结果的影响。一个彻底的评价使我们能够查明未来年龄估计系统需要克服的最有影响的因素。