MODEL FOR PROCESSING IMAGES OF ONLINE SOCIAL NETWORKS USED TO RECOGNIZE POLITICAL EXTREMISM

Pub Date : 2023-09-01 DOI:10.26577/jmmcs2023v119i3a8
K. Bagitova
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Abstract

The scientific research is devoted to solving the important scientific and practical problem of recognizing calls for political extremism in online social networks, which today, due to their high popularity, are one of the main ways of spreading such calls. It is shown that modern means of detecting calls for political extremism in online social networks are mainly focused on the semantic analysis of text messages contained in them. At the same time, in modern online social networks, graphic resources have become widespread, which provide ample opportunities for the implementation of such calls. The possibility of detecting destructive content in images and video materials using neural network analysis is considered. The possibility of increasing the efficiency of neural network recognition has been determined due to the developed image pre-processing model, which makes it possible to adjust the brightness and contrast of images, as well as eliminate typical interference during video recording. The originality of the model lies in the use of a wavelet transform apparatus for filtering typical noise, as well as in the developed mathematical apparatus for adaptive contrast correction based on the local contrast of the neighborhood. It is shows that the use of the developed model for pre-processing images makes it possible to increase the accuracy of neural network recognition of calls for extremism in images and videos posted on online social networks by approximately 12 percent. It is advisable to correlate the paths for further research with the development of a neural network model adapted to the wide variation in the sizes of images and videos in online social networks.
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用于识别政治极端主义的在线社交网络图像处理模型
该科学研究致力于解决在线社交网络中政治极端主义呼吁的识别这一重要的科学和实践问题,由于网络社交网络的高度普及,它是传播政治极端主义呼吁的主要途径之一。研究表明,在线社交网络中政治极端主义呼吁的现代检测手段主要集中在对其中包含的文本信息的语义分析上。与此同时,在现代在线社交网络中,图形资源已经广泛存在,这为实现这种呼叫提供了充足的机会。考虑了利用神经网络分析检测图像和视频材料中破坏性内容的可能性。由于开发了图像预处理模型,提高了神经网络识别效率的可能性,使得可以调整图像的亮度和对比度,并消除视频录制过程中的典型干扰。该模型的独创性在于使用小波变换装置过滤典型噪声,以及基于邻域的局部对比度进行自适应对比度校正的数学装置。研究表明,使用开发的模型对图像进行预处理,可以将神经网络识别在线社交网络上发布的图像和视频中极端主义呼吁的准确性提高约12%。建议将进一步研究的路径与神经网络模型的发展联系起来,以适应在线社交网络中图像和视频大小的广泛变化。
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