SAS-UNet:用于图像中淫秽内容分割的改进编码器-解码器网络

Sonali Samal, T. Gadekallu, Pankaj Rajput, Yu-dong Zhang, Bunil Kumar Balabantaray
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引用次数: 1

摘要

网络平台上的淫秽内容可能在几个方面对社会有害。首先,它会对观看或接触它的个人,特别是儿童和弱势群体的心理健康产生负面影响。其次,它可能导致非法内容的传播,如儿童色情或复仇色情,这可能会对受害者造成重大伤害。最后,它会创造一个有毒和不安全的网络环境,在那里网络欺凌、骚扰和仇恨言论蓬勃发展,最终导致社会分裂和对社区的伤害。因此,促进负责任和尊重地使用网络平台以防止此类伤害是很重要的。因此,在社交媒体平台上分割图像中出现的这些淫秽区域是很重要的。为了解决这个问题,我们提出了一种改进的基于编码器-解码器的技术,称为沙玻璃块编码器与注意跳跃和基于猪的瓶颈(SAS-UNet),用于裸体/淫秽图像的淫秽分割。我们提出的方法SASUNet在U-Net的编码器部分使用沙漏块,在瓶颈处使用旋转变压器,并在跳过连接处包含CBAM。该模型在淫秽图像(SOI)数据集上进行了训练和验证。对收集到的淫秽图像进行精确分割,建立所有淫秽图像的二值掩码。本文提出的SAS-UNet的准确率为94.30%,召回率为93.22%,mDC值为92.31%,mIOU值为91.42%,均优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SAS-UNet: Modified encoder-decoder network for the segmentation of obscenity in images
Obscene content on online platforms can be harmful to society in several ways. Firstly, it can negatively impact the mental health of individuals who view or are exposed to it, particularly children and vulnerable individuals. Secondly, it can lead to the spread of illegal content such as child pornography or revenge porn, which can cause significant harm to the victims involved. Lastly, it can create a toxic and unsafe online environment, where cyberbullying, harassment, and hate speech thrive, ultimately leading to social division and harm to the community. As a result, it is important to promote the responsible and respectful use of online platforms to prevent such harm. Therefore, it is important to segment such obscene regions present in images across social media platforms. To deal with the issue, we have proposed a modified encoder-decoder-based technique entitled sandglass-block encoder with attention skip and swin-based bottleneck (SAS-UNet) for the segmentation of obscenity in nude/obscene images. Our proposed method SASUNet incorporates the usage of a sandglass block in the encoder section of U-Net, a swin transformer in the bottleneck, and CBAM inclusion at the skip connection. The proposed model is trained and validated with the segmented obscene image (SOI) dataset. The collected obscene images were segmented precisely to build a binary mask of all the obscene images. The proposed SAS-UNet achieved a precision of 94.30%, 93.22% recall, 92.31% of mDC value, and 91.42% of mIOU value which outperformed the existing algorithms.
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