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首页> 外文期刊>ITB Journal of Information and Communication Technology >A Robust Algorithm for Emoji Detection in Smartphone Screenshot Images
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A Robust Algorithm for Emoji Detection in Smartphone Screenshot Images

机译:智能手机屏幕截图图像中的EMOJI检测稳健算法

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The increasing use of smartphones and social media apps for communication results in a massive number of screenshot images. These images enrich the written language through text and emojis. In this regard, several studies in the image analysis field have considered text. However, they ignored the use of emojis. In this study, a robust two-stage algorithm for detecting emojis in screenshot images is proposed. The first stage localizes the regions of candidate emojis by using the proposed RGB-channel analysis method followed by a connected component method with a set of proposed rules. In the second verification stage, each of the emojis and non-emojis are classified by using proposed features with a decision tree classifier. Experiments were conducted to evaluate each stage independently and assess the performance of the proposed algorithm completely by using a self-collected dataset. The results showed that the proposed RGB-channel analysis method achieved better performance than the Niblack and Sauvola methods. Moreover, the proposed feature extraction method with decision tree classifier achieved more satisfactory performance than the LBP feature extraction method with all Bayesian network, perceptron neural network, and decision table rules. Overall, the proposed algorithm exhibited high efficiency in detecting emojis in screenshot images.
机译:智能手机和社交媒体应用程序的使用越来越多地利用通信导致大量的屏幕截图图像。这些图像通过文本和表情符号丰富了书面语言。在这方面,图像分析领域的几项研究已经考虑了文本。但是,他们忽略了Emojis的使用。在本研究中,提出了一种用于检测截图图像中的EMOJIS的鲁棒两阶段算法。第一阶段通过使用所提出的RGB频道分析方法本地定位候选EMOJI的区域,然后通过具有一组提出的规则进行连接的分量方法。在第二验证阶段,通过使用具有决策树分类器的提出的特征来分类每个表EMOJI和非EMOJI。进行实验以独立评估每个阶段,并通过使用自收集的数据集来评估所提出的算法的性能。结果表明,所提出的RGB沟道分析方法比Niblack和Sauvola方法实现了更好的性能。此外,具有决策树分类器的所提出的特征提取方法比具有所有贝叶斯网络,Perceptron神经网络和决策表规则的LBP特征提取方法实现了更令人满意的性能。总的来说,该算法在屏幕截图图像中检测Emojis的高效率。

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