评价最先进的对象检测器用于色情检测

Sui Lyn Hor, H. A. Karim, Mohd Haris Lye Abdullah, Nouar Aldahoul, Sarina Mansor, M. F. A. Fauzi, John See, A. Wazir
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引用次数: 4

摘要

随着互联网成为暴露色情和裸露内容的来源,视频中的色情和裸露内容检测变得越来越重要。最近的文献涉及使用深度学习技术(如卷积神经网络、对象检测模型和循环神经网络)以及这些方法的组合来识别色情内容。本文测试了三种预训练对象检测模型(YOLOv3、EfficientDet-d7x和以ResNet50为骨干的Faster R-CNN)的有效性,比较了它们在检测色情内容方面的性能。利用NPDI公开数据集的真人视频帧,对特定图像区域进行裁剪和增强,形成四类目标内容(女性乳房、女性下半身、男性下半身和裸人)。结果表明,coco预训练的effentdet -d7x模型总体检测准确率最高,为75.61%。有趣的是,人类对YOLOv3的检测可能依赖于图像质量和/或仅属于人类的外部身体部位的存在。
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An Evaluation of State-of-the-Art Object Detectors for Pornography Detection
Pornographic and nudity content detection in videos is gaining importance as Internet grows to become a source for exposure to such content. Recent literature involved pornography recognition using deep learning techniques such as convolutional neural network, object detection models and recurrent neural networks, as well as combinations of these methods. In this paper, the effectiveness of three pretrained object detection models (YOLOv3, EfficientDet-d7x and Faster R-CNN with ResNet50 as backbone) were tested to compare their performance in detecting pornographic contents. Video frames consisting of real humans from the public NPDI dataset were utilised to form four categories of target content (female breast, female lower body, male lower body and nude human) by cropping the specific image regions and augmenting them. Results demonstrated that COCO-pretrained EfficientDet-d7x model achieved the highest overall detection accuracy of 75.61%. Interestingly, human detection of YOLOv3 may be dependent on image quality and/or presence of external body parts that belong only to humans.
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