Ha‐Eun AhnJinwoo JeongJe Woo Kim
Visual quality and algorithm efficiency are two main interests in video frame interpolation. We propose a hybrid task-based convolutional neural network for fast and accurate frame interpolation of 4K videos. The proposed method synthesizes low-resolution frames, then reconstructs high-resolution frames in a coarse-to-fine fashion. We also propose edge loss, to preserve high-frequency information and make the synthesized frames look sharper. Experimental results show that the proposed method achieves state-of-the-art performance and performs 2.69x faster than the existing methods that are operable for 4K videos, while maintaining comparable visual and quantitative quality.
Varghese MathaiArun BabyAkhila SabuJeexson JoseBineeth Kuriakose
Arief Bramanto Wicaksono PutraAchmad Fanany Onnilita GaffarMuhammad Taufiq SumadiLisa Setiawati
Zhifeng ZhangLi SongRang XieLi Chen
Aynur KoçakMustafa AlkanSüleyman Muhammed Arıkan
Chenguang LiDonghao GuXueyan MaKai YangShaohui LiuFeng Jiang