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Video frame interpolation via down–up scale generative adversarial networks

Quang Nhat Tran, Shih‐Hsuan Yang

2022Computer Vision and Image Understanding18 citationsDOIOpen Access PDF

Abstract

Frame interpolation finds many applications in video applications, including frame rate up-conversion and video compression. Deep learning-based methods have been proposed for frame interpolation, but a long runtime is typically required to achieve good visual quality. In this paper, we introduce an efficient frame interpolation method based on a modified generative adversarial network. The proposed framework consists of a generator with a pair of down–up scale modules, where the down-scaled-input module attempts to capture the overall structure of the scene while the original-scale-input module aims to restore finer textures. Skip connections and an input processing block are further incorporated into the minimal two-scale generator design to expedite processing without losing image features. The difference between the synthesized frame and the ground truth is measured by a combined loss function, including one adversarial loss and three reconstruction losses. Compared to the state-of-the-art motion compensation and deep-learning based frame interpolation approaches, the proposed framework achieves the most satisfactory trade-off between the synthesis quality and runtime.

Topics & Concepts

Motion interpolationComputer scienceInterpolation (computer graphics)Frame (networking)Artificial intelligenceComputer visionInter frameGenerator (circuit theory)Deep learningResidual frameFrame rateAlgorithmMotion (physics)Video trackingVideo processingBlock-matching algorithmReference frameTelecommunicationsPower (physics)Quantum mechanicsPhysicsAdvanced Image Processing TechniquesAdvanced Vision and ImagingGenerative Adversarial Networks and Image Synthesis