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Tackling Rare False-Positives in Face Recognition: A Case Study

机译:解决面部识别中的稀有假阳性案例研究

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In this study, we take on one of the most common challenges in facial recognition, i.e. reducing the False Positives in the recognition phase, through studying performance of a standard Deep Learning Convolutional network in real-life, real-time, and large-scale identity surveillance application. This application involved designing a queue management system that uses facial recognition, for an airport in the UK. Our approach was to capture the faces of passengers as they enter through Boarding Pass Gates (BPG) and as they exit Security Gates (SG). Thereafter, we compare the faces captured, within 15 minutes time, from BPG against the ones from SG. When there is a match, we are able to calculate the time that someone has spent inside the security area, using the capture time of matched face. We call this the security queue time. Like any other facial recognition application, we have to deal with reducing the number of false positives, i.e. incorrectly matched faces. In this application false positives are statistically rare events. That is, the same or similar pair of images is unlikely to occur in a foreseeable time. To deal with this problem, we utilized several approaches including applying the Dlib library to improve the quality of the detected faces. Specifically, by taking advantage of Dlib's Facial Landmarks, we created a scoring system similar to Dlib's scoring system to chose the best frontal pose among all faces attributed to a single person. Our large-scale trials show that the approach does measurably reduce the rate of false positives in such systems.
机译:在这项研究中,我们通过研究标准的深度学习卷积网络在现实生活中,实时和大规模的性能,来面对面部识别中最常见的挑战之一,即在识别阶段减少误报身份监控应用程序。该应用程序涉及为英国的一个机场设计使用面部识别的队列管理系统。我们的方法是捕获乘客通过登机口登机口(BPG)以及离开安全门(SG)时的面孔。此后,我们将在15分钟内从BPG捕获的面部与从SG捕获的面部进行比较。发生匹配时,我们可以使用匹配的面部的捕获时间来计算某人在安全区域内度过的时间。我们将此称为安全队列时间。像任何其他面部识别应用程序一样,我们必须处理减少误报的数量,即错误匹配的面部。在此应用中,误报在统计上是罕见的事件。即,在可预见的时间内不太可能发生相同或相似的图像对。为了解决这个问题,我们采用了几种方法,包括应用Dlib库来提高检测到的面部质量。具体来说,通过利用Dlib的面部标志,我们创建了与Dlib的评分系统类似的评分系统,以在归因于一个人的所有面孔中选择最佳的正面姿势。我们的大规模试验表明,该方法确实可以显着降低此类系统中的误报率。

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