Understanding Videos at Scale: How to Extract Insights for Business Research

13 Pages Posted: 10 Nov 2020 Last revised: 30 Nov 2020

See all articles by Jasper Schwenzow

Jasper Schwenzow

University of Hamburg

Jochen Hartmann

TUM School of Management,Technical University of Munich

Amos Schikowsky

University of Hamburg

Mark Heitmann

University of Hamburg

Date Written: September 22, 2020

Abstract

Video content has become a major component of total internet traffic. Growing bandwidth and computational power conspire with an increasing number of video editing tools, smartphones, and online platforms that have facilitated video production, distribution, and consumption by businesses and consumers alike. This makes video content relevant across business research disciplines. However, analyzing videos can be a cumbersome manual task. Automated techniques are scattered across technical publications and are often not directly accessible to business researchers. This article synthesizes the current state of the art and provides a consolidated tool to efficiently extract 109 video-based variables, requiring no programming knowledge. The variables include structural video characteristics such as colorfulness as well as advanced content-related features such as scene cuts or human face detection. The authors discuss the research potential of video mining, the types of video features of likely interest and illustrate application using a practical example.

Keywords: video mining; image analysis; object detection; deep learning; computer vision; unstructured data

Suggested Citation

Schwenzow, Jasper and Hartmann, Jochen and Schikowsky, Amos and Heitmann, Mark, Understanding Videos at Scale: How to Extract Insights for Business Research (September 22, 2020). Available at SSRN: https://ssrn.com/abstract=3524350 or http://dx.doi.org/10.2139/ssrn.3524350

Jasper Schwenzow (Contact Author)

University of Hamburg ( email )

Allende-Platz 1
Hamburg, 20146
Germany

Jochen Hartmann

TUM School of Management,Technical University of Munich ( email )

Arcisstrasse 21
Munchen, 80333
Germany

Amos Schikowsky

University of Hamburg ( email )

Allende-Platz 1
Hamburg, 20146
Germany

Mark Heitmann

University of Hamburg ( email )

Allende-Platz 1
Hamburg, 20146
Germany

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