A STUDY ON SOFTWARE TOOLS FOR DETECTING FRAME ERRORS AND BOUNDARY DISTORTIONS IN VIDEO STREAMS

Main Article Content

Аннотация:

Video quality is crucial in ensuring the successful delivery and consumption of digital content across various platforms, such as streaming services, broadcasting, and surveillance systems. However, visual distortions and frame errors can significantly degrade the quality of video streams, affecting both the user experience and automated processing systems. This paper reviews various software tools for detecting and analyzing frame errors and boundary distortions in video streams.

Article Details

Как цитировать:

Puziy, A. ., Arabboev, M. ., & Begmatov, S. (2024). A STUDY ON SOFTWARE TOOLS FOR DETECTING FRAME ERRORS AND BOUNDARY DISTORTIONS IN VIDEO STREAMS. Центральноазиатский журнал академических исследований, 2(10 Part 2), 42–55. извлечено от https://in-academy.uz/index.php/cajar/article/view/38918

Библиографические ссылки:

“MSU Video Quality Measurement Tool,” Moscow State University Graphics & Media Lab. [Online].

Available: http://www.compression.ru/video/quality_measure/video_measurement_tool_en.html.

“FFmpeg Documentation,” FFmpeg Official Website. [Online]. Available: https://ffmpeg.org/documentation.html.

X. Wu, P. Qu, S. Wang, L. Xie, and J. Dong, “Extend the FFmpeg Framework to Analyze Media Content,” arXiv, 2021.

H. S. Singha and J. Bhuvana, “A Study on FFmpeg Multimedia Framework,” Int. J. Trend Sci. Res. Dev., vol. 5, no. 4, pp. 580–584, 2021.

. Li, “Special Treatment of Video Image Based on FFmpeg,” in 2018 Joint International Advanced Engineering and Technology Research Conference (JIAET 2018), 2018, vol. 137, no. Jiaet, pp. 266–271.

H. Zeng, Z. Zhang, and L. Shi, “Research and Implementation of Video Codec Based on FFmpeg,” 2016 Int. Conf. Netw. Inf. Syst. Comput., pp. 184–188, 2017.

OpenCV documentation,” OpenCV Official Website. [Online]. Available: https://docs.opencv.org.

Shubham Mishra, Mrs. Versha Verma, Dr. Nikhat Akhtar, Shivam Chaturvedi, and Dr. Yusuf Perwej, “An Intelligent Motion Detection Using OpenCV,” Int. J. Sci. Res. Sci. Eng. Technol., no. March, pp. 51–63, 2022.

“PySceneDetect Documentation,” PySceneDetect. [Online]. Available: https://pyscenedetect.readthedocs.io.

Z. Shou et al., “Online Detection of Action Start in Untrimmed, Streaming Videos,” Lect. Notes Comput. Sci. (including Subser. Lect. Notes Artif. Intell. Lect. Notes Bioinformatics), vol. 11207 LNCS, pp. 551–568, 2018.

“VLC Media Player Documentation,” VideoLAN Organization. [Online]. Available: https://www.videolan.org/doc/.

“AviSynth - Script-Based Video Editing,” AviSynth Official Site. [Online]. Available: http://avisynth.nl/index.php/Main_Page.

“SSIMPlus - Video Quality Metrics for Streaming,” SSIMWave. [Online]. Available: https://www.ssimwave.com/.

L. Zhang, “Image Quality Assessment and Saliency Detection: human visual perception modeling and applications. Signal and Image Processing. Université de Rennes 1 (UR1),” 2020.

Z. Duanmu, K. Zeng, K. Ma, A. Rehman, and Z. Wang, “A Quality-of-Experience Index for Streaming Video,” IEEE J. Sel. Top. Signal Process., vol. 11, no. 1, pp. 154–166, 2017.

Z. Duanmu, K. Ma, and Z. Wang, “Quality-of-experience of adaptive video streaming: Exploring the space of adaptations,” MM 2017 - Proc. 2017 ACM Multimed. Conf., pp. 1752–1760, 2017.

A. Rehman, K. Zeng, and Z. Wang, “Display Device-Adapted Video Quality-of-Experience Assessment,” vol. 9394, 2015.

S. Saranya and A. A. Priya, “Object Detection and Tracking from Video Sequence using MATLAB,” Int. J. Innov. Res. Sci. Technol., vol. 4, no. 3, pp. 43–47, 2017.

U. P. Nagane and A. O. Mulani, “Moving Object Detection and Tracking Using Matlab,” J. Sci. Technol., vol. 6, no. 01, pp. 63–66, 2021.

L. S. Alandkar and S. R. Gengaje, “Study of Object Detection Implementation Using Matlab,” Int. J. Res. Eng. Technol., vol. 05, no. 08, pp. 109–114, 2016.

“DaVinci Resolve,” Blackmagic Design. [Online]. Available: https://www.blackmagicdesign.com/products/davinciresolve/.