Using Computer Vision to Detect E-cigarette Content in TikTok Videos

Author:

Murthy Dhiraj1ORCID,Ouellette Rachel R2,Anand Tanvi3,Radhakrishnan Srijith4,Mohan Nikhil C4,Lee Juhan2,Kong Grace2ORCID

Affiliation:

1. Moody College of Communication, University of Texas at Austin , Austin, TX , USA

2. Department of Psychiatry, Yale School of Medicine , New Haven, CT , USA

3. Cockrell School of Engineering, University of Texas at Austin , Austin, TX , USA

4. Department of Information and Communication Technology, Manipal Institute of Technology , Manipal, Karnataka , India

Abstract

Abstract Introduction Previous research has identified abundant e-cigarette content on social media using primarily text-based approaches. However, frequently used social media platforms among youth, such as TikTok, contain primarily visual content, requiring the ability to detect e-cigarette-related content across large sets of videos and images. This study aims to use a computer vision technique to detect e-cigarette-related objects in TikTok videos. Aims and Methods We searched 13 hashtags related to vaping on TikTok (eg, #vape) in November 2022 and obtained 826 still images extracted from a random selection of 254 posts. We annotated images for the presence of vaping devices, hands, and/or vapor clouds. We developed a YOLOv7-based computer vision model to detect these objects using 85% of extracted images (N = 705) for training and 15% (N = 121) for testing. Results Our model’s recall value was 0.77 for all three classes: vape devices, hands, and vapor. Our model correctly classified vape devices 92.9% of the time, with an average F1 score of 0.81. Conclusions The findings highlight the importance of having accurate and efficient methods to identify e-cigarette content on popular video-based social media platforms like TikTok. Our findings indicate that automated computer vision methods can successfully detect a range of e-cigarette-related content, including devices and vapor clouds, across images from TikTok posts. These approaches can be used to guide research and regulatory efforts. Implications Object detection, a computer vision machine learning model, can accurately and efficiently identify e-cigarette content on a primarily visual-based social media platform by identifying the presence of vaping devices and evidence of e-cigarette use (eg, hands and vapor clouds). The methods used in this study can inform computational surveillance systems for detecting e-cigarette content on video- and image-based social media platforms to inform and enforce regulations of e-cigarette content on social media.

Funder

National Institute on Drug Abuse

U.S. Food and Drug Administration

Center for Tobacco Products

Publisher

Oxford University Press (OUP)

Reference37 articles.

1. Notes from the field: E-cigarette use among middle and high school students—United States, 2022;Cooper;MMWR Morb Mortal Wkly Rep.,2022

2. Effects of social media on adolescents’ willingness and intention to use e-cigarettes: an experimental investigation;Vogel;Nicotine Tob Res.,2020

3. Exposure to e-cigarette content on social media and e-cigarette use: an ecological momentary assessment study;Pokhrel;Addict Behav Rep.,2021

4. Association between social media use and vaping among Florida adolescents, 2019;Lee;Prev Chronic Dis.,2021

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