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Brown Hands Aren't Terrorists: Challenges in Image Classification of Violent Extremist Content

机译:棕色手不是恐怖分子:暴力极端主义内容的图像分类中的挑战

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The Internet eases the broadcasting of data, information, and propaganda. The availability of myriad social media has turned the spotlight on violent extremism and expanded the scope and impact of ideology-oriented acts of violence. Automated image classification for this content is a highly sought-after goal, yet raises the question of potential bias and discrimination in case of incorrect classification. A requirement for addressing, and potentially counter-acting, bias, is the existence of a reliable training dataset. To demonstrate how such a dataset can be developed for highly sensitive topics, this article operationalizes the process of human-coding images posted on the open social web by violent religious extremists into four master categories and four subcategories. We concentrate on the group ISIS due to their prolific digital content creation. The developed training dataset is used to train a convolutional neural network to automatically detect extremist visual content on social media and determine its category. Using inter-coder reliability, we show that the training data can be reliably coded despite highly nuanced data and the existence of various categories and subcategories.
机译:互联网简化了数据,信息和宣传的广播。无数的社交媒体的可用性转向了暴力极端主义的聚光灯,并扩大了思想导向的暴力行为的范围和影响。这种内容的自动图像分类是一个高度追捧的目标,但在错误分类的情况下提出了潜在的偏见和歧视问题。寻址和潜在反作用,偏置的要求是存在可靠的训练数据集。为了演示如何为高度敏感的主题开发这种数据集,本文通过暴力宗教极端分子进入四个大型类别和四个子类别,运作了在开放社交网上发布的人工编码图像的过程。由于他们的多产数字内容创造,我们专注于集团ISIS。开发的训练数据集用于训练卷积神经网络,以自动检测社交媒体上的极端情况视觉内容并确定其类别。使用帧间编码器可靠性,我们表明,尽管具有高度细分的数据和各种类别和子类别的存在,但训练数据可以可靠地编码。

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