Information (May 2021)

Joint Subtitle Extraction and Frame Inpainting for Videos with Burned-In Subtitles

  • Haoran Xu,
  • Yanbai He,
  • Xinya Li,
  • Xiaoying Hu,
  • Chuanyan Hao,
  • Bo Jiang

DOI
https://doi.org/10.3390/info12060233
Journal volume & issue
Vol. 12, no. 6
p. 233

Abstract

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Subtitles are crucial for video content understanding. However, a large amount of videos have only burned-in, hardcoded subtitles that prevent video re-editing, translation, etc. In this paper, we construct a deep-learning-based system for the inverse conversion of a burned-in subtitle video to a subtitle file and an inpainted video, by coupling three deep neural networks (CTPN, CRNN, and EdgeConnect). We evaluated the performance of the proposed method and found that the deep learning method achieved high-precision separation of the subtitles and video frames and significantly improved the video inpainting results compared to the existing methods. This research fills a gap in the application of deep learning to burned-in subtitle video reconstruction and is expected to be widely applied in the reconstruction and re-editing of videos with subtitles, advertisements, logos, and other occlusions.

Keywords