A Comparative Study of In-Domain vs Cross-Domain Learning for Porn Cartoon Classification

Nouar Aldahoul, H. A. Karim, A. Wazir, Mhd Adel Momo, Mohd Haris Lye Abdullah
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Abstract

Detection of adult contents such as pornography, sex, and nudity has been investigated extensively in the literature. Recently, content moderator is a significant component for social platforms to be integrated in their software applications and services. Cartoon content moderator is a specific kind of moderators that should be highly accurate to reduce the classification error and increase the model’s sensitivity to adult contents. This paper aims to compare the models pre-trained on natural adult images and called cross-domain learning models with ones pre-trained on cartoon images and called in-domain learning models for adult content detection in cartoons. The paper utilized pre-trained convolutional neural networks such as ResNet and EfficientNet to extract features that were applied to support vector machine for porn/normal classification. It was found that in-domain models outperformed cross-domain model in terms of performance metrics to improve the accuracy by 13 %, recall by 2 %, precision by 18 %, F1 score by 14 %, false negative rate by 2 %, and false positive rate by 16 %.
色情漫画分类的领域内与跨领域学习比较研究
检测成人内容,如色情,性和裸体已被广泛的研究在文献中。最近,内容版主成为社交平台集成在其软件应用和服务中的重要组成部分。卡通内容版主是一种特定的版主,需要具有较高的准确率,以减少分类误差,提高模型对成人内容的敏感性。本文旨在比较基于自然成人图像的预训练模型(称为跨领域学习模型)与基于卡通图像的预训练模型(称为域内学习模型)在卡通成人内容检测中的应用。本文利用预训练的卷积神经网络(如ResNet和effentnet)提取特征,应用于支持向量机进行色情/正常分类。研究发现,在性能指标方面,域内模型优于跨域模型,准确率提高了13%,召回率提高了2%,精确度提高了18%,F1分数提高了14%,假阴性率提高了2%,假阳性率提高了16%。
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