基于AB/DL图像的神经网络描述。对法医性学的可能启示。

Wojciech Oronowicz-Jaśkowiak, Piotr Wasilewski
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引用次数: 0

摘要

目的:神经网络可能是法医案件中儿童性虐待材料分类的一种合适的解决方案。本研究的目的是提出一个神经网络模型,该模型可以对CSAM中可见的物体和行为进行分类,使用视觉上类似于CSAM (AB/DL)的图片,涉及那些对观看成年女性或成年男性穿得像孩子或参与典型的儿童活动(如玩耍)有恋童癖偏好的人。方法:数据集由2251张照片组成,分为5类。随机使用1914张照片进行神经网络的训练,使用337张照片进行后期验证。的快。ai和PyTorch库使用ResNet152模型对神经网络进行训练。我们使用了五个类,其中两个是从sexACT数据集导入的,另外三个是为本研究收集的。结果:该模型能够以较高的准确率(95%)对选定的类别进行分类;另一方面,考虑到最终的验证损失适中(0.17),网络还需要进一步改进。结论:所提出的模型可能对一些色情类别(“恋童癖”、“性活动”、“裸女”、“穿衣服的女人”、“性活动-打屁股”)中呈现的一些对象和行为进行有效分类。由于结果令人满意,因此有必要对实际CSAM进行进一步的研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Description of the neural network based on AB/DL pictures. Possible implications for forensic sexology.

Description of the neural network based on AB/DL pictures. Possible implications for forensic sexology.

Description of the neural network based on AB/DL pictures. Possible implications for forensic sexology.

Description of the neural network based on AB/DL pictures. Possible implications for forensic sexology.

Purpose: Neural networks might be an appropriate solution for the categorization of child sexual abuse materials (CSAM) in forensic cases. The aim of this study was to present a neural network model that may be able to categorize objects and behaviors, which are visible in CSAM, using pictures visually similar to CSAM (AB/DL), involving persons who have paraphilic preferences for watching adult women or men dressed like children or involved in activities typical for children, such as playing.

Methods: The dataset consisted of 2251 photos divided into five classes. 1914 photos were randomly used for the training of the neural network, while 337 photos were used for its later validation. The Fast.ai and PyTorch libraries were used for the training of the neural network using the ResNet152 model. We used five classes, two of which were imported from the sexACT dataset, and three of which that were collected for this study.

Results: The model was able to classify selected classes with a relatively high accuracy (95%); on the other hand, further improvement of the network is needed, considering the fact that the final validation loss was moderate (0.17).

Conclusions: The model presented might be effective in the classification of several objects and behaviors presented in a number of pornography categories ("paraphilic infantilism", "sexual activity", "nude women", "dressed women", "sexual activity - spanking"). As the results are promising, further research on real CSAM is justified.

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