Education, Science, Technology, Innovation and Life
Open Access
Sign In

Application of Computer Image Processing Technology in Media Based on New Media Era

Download as PDF

DOI: 10.23977/jipta.2025.080117 | Downloads: 1 | Views: 210

Author(s)

Ranggongbao Cai 1

Affiliation(s)

1 Department of Mass Communication and Advertising, Tongmyong University, Busan, 48520, Republic of Korea

Corresponding Author

Ranggongbao Cai

ABSTRACT

Electronic imaging technology, a new technology that utilizes the electromagnetic properties of materials to create images, is widely used in platemaking, proofing, printing, medicine, nondestructive testing, and other fields. This paper analyzes intelligent production practices in process industries and demonstrates that the proposed model can provide an effective new approach for knowledge integration in enterprise information decision-making. This paper first introduces the context of the new media era, then conducts academic research and summarizes the application of media and computer IPT in media, outlining the applications of electronic imaging. Based on an algorithmic model, various algorithms for the application of computer IPT in media are proposed based on the new media era. Related concepts are also introduced, and simulation experiments are conducted. Through the integration of content compatibility, resource integration, publicity integration, and computer IPT, average compatibility increased by 11.25%, and the number of users increased. With good resource integration and high mutual integration value, this paper has practical significance for this type of research, helping to promote academic progress and providing a reference.

KEYWORDS

Image Processing Technology, New Media Era, Electronic Imaging Magazine, Media Applications

CITE THIS PAPER

Ranggongbao Cai, Application of Computer Image Processing Technology in Media Based on New Media Era. Journal of Image Processing Theory and Applications (2025) Vol. 8: 144-152. DOI: http://dx.doi.org/10.23977/jipta.2025.080117.

REFERENCES

[1] Zhang, Lina, Lijuan Zhang, and Liduo Zhang. "Application research of digital media image processing technology based on wavelet transform." EURASIP Journal on Image and Video Processing, 2018.1 (2018): 1-10.
[2] Carpio, Joy N. "Traffic Congestion and Speed Assessment using Image Processing Technology Accessible via Internet through Smart Devices." International Journal of Simulation: Systems, ence & Technology, 19.3, (2018): 9.1-9.6.
[3] Monga, Vishal, Yuelong Li, and Yonina C. Eldar. "Algorithm unrolling: Interpretable, efficient deep learning for signal and image processing." IEEE Signal Processing Magazine, 38.2 (2021): 18-44.
[4] Bruns, Axel. "After the 'APIcalypse': Social media platforms and their fight against critical scholarly research." Information, Communication & Society, 22.11 (2019): 1544-1566.
[5] Liu, Dong. "Digital communication media use and psychological well-being: A meta-analysis." Journal of Computer-Mediated Communication, 24.5 (2019): 259-273.
[6] Al‐Naji, Ali, Sang‐Heon Lee, and Javaan Chahl. "Quality index evaluation of videos based on fuzzy interface system." IET Image Processing, 11.5 (2017): 292-300.
[7] Ortega, Antonio. "Graph signal processing: Overview, challenges, and applications." Proceedings of the IEEE, 106.5 (2018): 808-828.
[8] Guo, Meng-Hao. "Pct: Point cloud transformer." Computational Visual Media, 7.2 (2021): 187-199.
[9] Feezell, Jessica T. "Agenda setting through social media: The importance of incidental news exposure and social filtering in the digital era." Political Research Quarterly, 71.2 (2018): 482-494.
[10] Khamis, Susie, Lawrence Ang, and Raymond Welling. "Self-branding,‘micro-celebrity’and the rise of social media influencers." Celebrity studies, 8.2 (2017): 191-208.
[11] Light, Ben, Jean Burgess, and Stefanie Duguay. "The walkthrough method: An approach to the study of apps." New media & society, 20.3 (2018): 881-900.
[12] Fardouly, Jasmine, Brydie K. Willburger, and Lenny R. Vartanian. "Instagram use and young women's body image concerns and self-objectification: Testing mediational pathways." New media & society, 20.4, (2018): 1380-1395.
[13] Hesamian, Mohammad Hesam. "Deep learning techniques for medical image segmentation: achievements and challenges." Journal of digital imaging, 32.4 (2019): 582-596.
[14] Fu, Xueyang. "Clearing the skies: A deep network architecture for single-image rain removal." IEEE Transactions on Image Processing, 26.6 (2017): 2944-2956.

Downloads: 2457
Visits: 172559

Sponsors, Associates, and Links


All published work is licensed under a Creative Commons Attribution 4.0 International License.

Copyright © 2016 - 2031 Clausius Scientific Press Inc. All Rights Reserved.