Symmetry (Aug 2021)

Automatic, Illumination-Invariant and Real-Time Green-Screen Keying Using Deeply Guided Linear Models

  • Hanxi Li,
  • Wenyu Zhu,
  • Haiqiang Jin,
  • Yong Ma

DOI
https://doi.org/10.3390/sym13081454
Journal volume & issue
Vol. 13, no. 8
p. 1454

Abstract

Read online

The conventional green screen keying method requires users’ interaction to guide the whole process and usually assumes a well-controlled illumination environment. In the era of “we-media”, millions of short videos are shared online every day, and most of them are produced by amateurs in relatively poor conditions. As a result, a fully automatic, real-time, and illumination-robust keying method would be very helpful and commercially promising in this era. In this paper, we propose a linear model guided by deep learning prediction to solve this problem. The simple, yet effective algorithm inherits the robustness of the deep-learning-based segmentation method, as well as the high matting quality of energy-minimization-based matting algorithms. Furthermore, thanks to the introduction of linear models, the proposed minimization problem is much less complex, and thus, real-time green screen keying is achieved. In the experiment, our algorithm achieved comparable keying performance to the manual keying software and deep-learning-based methods while beating other shallow matting algorithms in terms of accuracy. As for the matting speed and robustness, which are critical for a practical matting system, the proposed method significantly outperformed all the compared methods and showed superiority over all the off-the-self approaches.

Keywords