Automating Media Production Workflows: The Role of AI in Streamlining Post-Production, Editing, and Distribution
DOI:
https://doi.org/10.32628/IJSRCE248514Keywords:
Artificial Intelligence in Media, Post-Production Automation, Video and Audio Editing, Media Distribution Optimization, Ethical AI IntegrationAbstract
The integration of artificial intelligence (AI) into media production workflows has revolutionized the industry, addressing traditional challenges and driving unprecedented efficiencies. This paper explores AI's transformative role in streamlining post-production, editing, and distribution processes. In post-production, AI technologies such as machine learning and computer vision automate complex tasks like video stitching, color grading, and sound design, reducing costs and timelines while enhancing creativity. In editing, intelligent systems enable precise scene detection, facial recognition, and subtitle generation, improving accessibility and minimizing manual intervention. The paper also examines how automation optimizes media distribution through personalized recommendation algorithms, automated metadata generation, and adaptive streaming, ensuring a seamless audience experience. While the benefits of AI are undeniable, the paper emphasizes the importance of ethical integration, advocating for transparency, data privacy, and the augmentation of human creativity. By responsibly leveraging AI, the media industry can continue to innovate while maintaining its commitment to inclusivity and artistic integrity.
Downloads
References
Alam, A., Ullah, I., & Lee, Y.-K. (2020). Video big data analytics in the cloud: A reference architecture, survey, opportunities, and open research issues. IEEE Access, 8, 152377-152422.
Anantrasirichai, N., & Bull, D. (2022). Artificial intelligence in the creative industries: a review. Artificial Intelligence Review, 55(1), 589-656.
Arda, D. (2024). Investigation of Artificial Intelligence Tools in Design Process and Creativity. Middle East Technical University,
Audry, S. (2021). Art in the age of machine learning: Mit Press.
Chan-Olmsted, S. M. (2019). A review of artificial intelligence adoptions in the media industry. International journal on media management, 21(3-4), 193-215.
Ehidiamen, A. J., & Oladapo, O. O. (2024a). Enhancing ethical standards in clinical trials: A deep dive into regulatory compliance, informed consent, and participant rights protection frameworks. World Journal of Biology Pharmacy and Health Sciences, 20(1), 309–320. Retrieved from https://doi.org/10.30574/wjbphs.2024.20.1.0788
Ehidiamen, A. J., & Oladapo, O. O. (2024b). Innovative approaches to risk management in clinical research: Balancing ethical standards, regulatory compliance, and intellectual property concerns. World Journal of Biology Pharmacy and Health Sciences, 20(1), 349–363. Retrieved from https://doi.org/10.30574/wjbphs.2024.20.1.0791.
Ehidiamen, A. J., & Oladapo, O. O. (2024c). The intersection of clinical trial management and patient advocacy: How research professionals can promote patient rights while upholding clinical excellence.
Ehidiamen, A. J., & Oladapo, O. O. (2024d). Optimizing contract negotiations in clinical research: Legal strategies for safeguarding sponsors, vendors, and institutions in complex trial environments. World Journal of Biology Pharmacy and Health Sciences, 20(1), 335-348. Retrieved from https://doi.org/10.30574/wjbphs.2024.20.1.0790
Ehidiamen, A. J., & Oladapo, O. O. (2024e). The role of electronic data capture systems in clinical trials: Streamlining data integrity and improving compliance with FDA and ICH/GCP guidelines.
Elouataoui, W. (2024). AI-Driven Frameworks for Enhancing Data Quality in Big Data Ecosystems: Error_Detection, Correction, and Metadata Integration. arXiv preprint arXiv:2405.03870.
FAVERO, M. (2024). AI driven generation and classification of short sound messages for Internet of Audio Things.
Fayyaz, Z., Ebrahimian, M., Nawara, D., Ibrahim, A., & Kashef, R. (2020). Recommendation systems: Algorithms, challenges, metrics, and business opportunities. applied sciences, 10(21), 7748.
Fernandes, A. F. A., Dórea, J. R. R., & Rosa, G. J. d. M. (2020). Image analysis and computer vision applications in animal sciences: an overview. Frontiers in Veterinary Science, 7, 551269.
Gill, S. S., Tuli, S., Xu, M., Singh, I., Singh, K. V., Lindsay, D., . . . Jain, U. (2019). Transformative effects of IoT, Blockchain and Artificial Intelligence on cloud computing: Evolution, vision, trends and open challenges. Internet of Things, 8, 100118.
Huang, Y., Lv, S., Tseng, K.-K., Tseng, P.-J., Xie, X., & Lin, R. F.-Y. (2023). Recent advances in artificial intelligence for video production system. Enterprise Information Systems, 17(11), 2246188.
Kar, T., Kanungo, P., Mohanty, S. N., Groppe, S., & Groppe, J. (2024). Video shot-boundary detection: issues, challenges and solutions. Artificial Intelligence Review, 57(4), 104.
Lu, Y. (2019). Artificial intelligence: a survey on evolution, models, applications and future trends. Journal of Management Analytics, 6(1), 1-29.
Momot, I. (2022). Artificial intelligence in filmmaking process: future scenarios.
Olteanu, A., Castillo, C., Diaz, F., & Kıcıman, E. (2019). Social data: Biases, methodological pitfalls, and ethical boundaries. Frontiers in big data, 2, 13.
Polyzos, D. (2022). Critical Examination of the Use of Artificial Intelligence as a Creative Tool in Editing and its Potential as a Creator in its own.
Raza, S., & Ding, C. (2022). News recommender system: a review of recent progress, challenges, and opportunities. Artificial Intelligence Review, 1-52.
Roy, D., & Dutta, M. (2022). A systematic review and research perspective on recommender systems. Journal of Big Data, 9(1), 59.
Sayers, D., Sousa-Silva, R., Höhn, S., Ahmedi, L., Allkivi-Metsoja, K., Anastasiou, D., . . . Catala, A. (2021). The Dawn of the Human-Machine Era: A forecast of new and emerging language technologies.
Schiller, D., Hallmen, T., Don, D. W., André, E., & Baur, T. (2024). DISCOVER: A Data-driven Interactive System for Comprehensive Observation, Visualization, and ExploRation of Human Behaviour. arXiv preprint arXiv:2407.13408.
Shittu, R. A., Ehidiamen, A. J., Ojo, O. O., & Christophe, S. J. (2024). The role of business intelligence tools in improving healthcare patient outcomes and operations.
Sohail, S. S., Farhat, F., Himeur, Y., Nadeem, M., Madsen, D. Ø., Singh, Y., . . . Mansoor, W. (2023). Decoding ChatGPT: a taxonomy of existing research, current challenges, and possible future directions. Journal of King Saud University-Computer and Information Sciences, 101675.
Trivedi, K. S. (2023). Fundamentals of Natural Language Processing. In Microsoft Azure AI Fundamentals Certification Companion: Guide to Prepare for the AI-900 Exam (pp. 119-180): Springer.
Zhang, X., Li, Y., Han, Y., & Wen, J. (2022). AI video editing: A survey.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution 4.0 International License.
https://creativecommons.org/licenses/by/4.0