FI-Net: A Lightweight Video Frame Interpolation Network Using Feature-Level Flow

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12 Scopus citations

Abstract

Video frame interpolation is a classic computer vision task that aims to generate in-between frames given two consecutive frames. In this paper, a flow-based interpolation method (FI-Net) is proposed. FI-Net is a lightweight end-to-end neural network that takes two frames in arbitrary size as input and outputs the estimated intermediate frame. Novelly, it computes optical flow at feature level instead of image level. Such practice can increase the accuracy of estimated flow. Multi-scale technique is utilized to handle large motions. For training, a comprehensive loss function that contains a novel content loss (Sobolev loss) and a semantic loss is introduced. It forces the generated frame to be close to the ground truth one at both pixel level and semantic level. We compare FI-Net with previous methods and it achieves higher performance with less time consumption and much smaller model size.

Original languageEnglish
Article number8808916
Pages (from-to)118287-118296
Number of pages10
JournalIEEE Access
Volume7
DOIs
StatePublished - 2019

Keywords

  • Sobolev loss
  • Video frame interpolation
  • feature-level flow
  • lightweight network

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