Analysis of Multimodal Data Using Deep Learning and Machine Learning
DOI:
https://doi.org/10.18034/ajhal.v4i2.658Keywords:
Multimodal Analytics, Machine Learning, Deep LearningAbstract
A modality is an event or experience. Life is multimodal, see, hear, smell, feel, and taste. Multimodal experiences involve some world modalities. Artificial intelligence must grasp multimodal views to understand our surroundings. Multimodal machine learning models interact and correlate input from several modalities. It's a multi-disciplinary field with great potential. In this study, we analyze emerging multimodal machine learning technologies and categorize them scientifically rather than focusing on specific multimodal applications. Multimodal machine learning offers more potential and problems than classifications. Most multimodal learning research collects quantitative data from polls and surveys. This research reviews a detailed library of observational studies on multimodal data (MMD) skills for human learning using artificial intelligence-powered approaches including Machine Learning and Deep Learning. This research also describes how MMD has improved learning and in what environments. This paper discusses multimodal learning and its ongoing improvements and approaches to improving learning. Finally, future researchers should carefully consider building a system that aligns multimodal aspects with the study and learning plan. These elements could enhance multimodal learning by facilitating theory and practice activities. This research lays the groundwork for multimodal data use in future learning technologies and development.
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Copyright (c) 2017 Sai Srujan Gutlapalli
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.