Social media networks have become a significant aspect of people's lives, serving as a platform for their ideas, opinions and emotions. Consequently, automated sentiment analysis (SA) is critical for recognising people's feelings in ways that other information sources cannot. The analysis of these feelings revealed various applications, including brand evaluations, YouTube film reviews and healthcare applications. As social media continues to develop, people post a massive amount of information in different forms, including text, photos, audio and video. Thus, traditional SA algorithms have become limited, as they do not consider the expressiveness of other modalities. By including such characteristics from various material sources, these multimodal data streams provide new opportunities for optimising the expected results beyond text-based SA. Our study focuses on the forefront field of multimodal SA, which examines visual and textual data posted on social media networks. Many people are more likely to utilise this information to express themselves on these platforms. To serve as a resource for academics in this rapidly growing field, we introduce a comprehensive overview of textual and visual SA, including data pre-processing, feature extraction techniques, sentiment benchmark datasets, and the efficacy of multiple classification methodologies suited to each field. We also provide a brief introduction of the most frequently utilised data fusion strategies and a summary of existing research on visual-textual SA. Finally, we highlight the most significant challenges and investigate several important sentiment applications.
翻译:社交媒体网络已成为人们生活的一个重要方面,成为人们思想、意见和情感的平台,因此,自动化情绪分析(SA)对于以其他信息来源无法做到的方式认识人们的感受至关重要。对这些感觉的分析揭示了各种应用,包括品牌评价、YouTube电影审查和医疗保健应用。随着社交媒体的继续发展,人们以不同形式发布大量信息,包括文本、照片、音像和视频。因此,传统的SA算法已经变得有限,因为他们不考虑其他模式的表达性。通过纳入各种材料来源的这些特征,这些多式联运数据流为优化基于文本的SA以外的预期结果提供了新的机会。我们的研究重点是Mondoral SA的前沿领域,该领域审查了社会媒体网络上张贴的视觉和文字数据。许多人更有可能利用这些信息在这些平台上表达自己。为了成为这个迅速增长的领域的学术界资源,我们对文本和视觉SA进行了全面的概述,包括数据预处理、特征提取技术、情绪基准数据集以及适合每个领域多种分类方法的功效提供了新的机会。最后,我们还简要地介绍了当前重要的视觉应用策略。