Semantic Context and Attention-driven Framework for Predicting Visual Description Utilizing a Deep Neural Network and Natural Language Processing

K. Annapoorneshwari Shetty, Subrahmanya S. Bhat
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Abstract

Background/Purpose: This literature review's goal is to inspect various machine learning algorithms for visual description and their applications to prediction. Examining the numerous approaches mentioned in this area brings up a fresh avenue for expanding the current research methods. Design/Methodology/Approach: The study results that are provided in different scholarly works are acquired from secondary sources, such as scholarly journal publications. This review study analyses these articles and highlights their interpretations. Findings/Result: This research focuses on several cataloguing methods for isolated identifying images and visions. When developing research topics in the idea of inaccessible detecting geographic information systems, the gaps discovered during analysis using various methodologies have made things simpler. Research limitations/implications: This study examined a range of AI tool uses. The scope of this work is rivetted to a assessment of the many machine-learning implementation strategies for analysis and prediction. More research might be done on the many deep learning constructions for image and video classification. Originality/Value: The articles chosen for this study's review are from academic journals and are cited by other authors in their works. The articles that were selected for the examination have a connection to the investigation and research plan described in the paper. Paper Type: Literature review paper.
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利用深度神经网络和自然语言处理预测视觉描述的语义上下文和注意驱动框架
背景/目的:本文献综述的目的是考察各种机器学习算法的视觉描述及其在预测中的应用。研究这一领域中提到的众多方法,为扩展现有的研究方法提供了一条新的途径。设计/方法/方法:在不同的学术著作中提供的研究结果是从二手来源获得的,例如学术期刊出版物。本文将对这些文章进行回顾分析,并强调其解释。发现/结果:本研究重点研究了几种独立识别图像和视觉的分类方法。当在不可访问的检测地理信息系统的思想中开发研究主题时,使用各种方法在分析过程中发现的差距使事情变得简单。研究局限性/启示:本研究考察了一系列人工智能工具的使用。这项工作的范围是对许多用于分析和预测的机器学习实施策略的评估。对于图像和视频分类的许多深度学习结构,可以做更多的研究。原创性/价值:本研究综述中选择的文章来自学术期刊,并被其他作者在其作品中引用。被选中进行审查的文章与论文中描述的调查和研究计划有关。论文类型:文献综述论文。
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