Abstract
The article begins by identifying the limitations of traditional survey methods, including inefficiencies and inaccuracies, and positions Deep Learning and Vision AI as transformative tools. Key applications highlighted include automated age, gender, and ethnicity estimation, as well as environmental and sentiment analysis.
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