论文标题
评估儿童性虐待检测的成人色情分类器的表现
Evaluating Performance of an Adult Pornography Classifier for Child Sexual Abuse Detection
论文作者
论文摘要
信息技术革命促进了为每个人提供色情材料,包括最脆弱的未成年人,以防万一他们受到虐待。准确性和时间性能是针对儿童性虐待检测的法医工具所需的功能,其主要组件可能依赖图像或视频分类器。在本文中,我们确定哪些是可能影响法医工具性能的硬件和软件要求。我们将Yahoo提出的成人色情分类器基于深度学习评估了两种不同的OS和四个硬件配置,分别具有两个和四个不同的CPU和GPU。 Ubuntu操作系统上的分类速度分别比Windows 10分别使用CPU和GPU时快〜5 $和$ 〜2美元。我们证明了基于GPU的机器而不是基于CPU的机器的优势,价格$ 7 $至$ 8 $ $倍。最后,我们证明在调整输入图像时进行的向上和向下插值过程不会影响所选预测模型的性能。
The information technology revolution has facilitated reaching pornographic material for everyone, including minors who are the most vulnerable in case they were abused. Accuracy and time performance are features desired by forensic tools oriented to child sexual abuse detection, whose main components may rely on image or video classifiers. In this paper, we identify which are the hardware and software requirements that may affect the performance of a forensic tool. We evaluated the adult porn classifier proposed by Yahoo, based on Deep Learning, into two different OS and four Hardware configurations, with two and four different CPU and GPU, respectively. The classification speed on Ubuntu Operating System is $~5$ and $~2$ times faster than on Windows 10, when a CPU and GPU are used, respectively. We demonstrate the superiority of a GPU-based machine rather than a CPU-based one, being $7$ to $8$ times faster. Finally, we prove that the upward and downward interpolation process conducted while resizing the input images do not influence the performance of the selected prediction model.