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MoCoGAN: Decomposing Motion and Content for Video Generation

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arxiv 1707.04993 v2 pith:CNFYUIYK submitted 2017-07-17 cs.CV

MoCoGAN: Decomposing Motion and Content for Video Generation

classification cs.CV
keywords contentmotionvideopartframeworkmocoganadversarialdifferent
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Visual signals in a video can be divided into content and motion. While content specifies which objects are in the video, motion describes their dynamics. Based on this prior, we propose the Motion and Content decomposed Generative Adversarial Network (MoCoGAN) framework for video generation. The proposed framework generates a video by mapping a sequence of random vectors to a sequence of video frames. Each random vector consists of a content part and a motion part. While the content part is kept fixed, the motion part is realized as a stochastic process. To learn motion and content decomposition in an unsupervised manner, we introduce a novel adversarial learning scheme utilizing both image and video discriminators. Extensive experimental results on several challenging datasets with qualitative and quantitative comparison to the state-of-the-art approaches, verify effectiveness of the proposed framework. In addition, we show that MoCoGAN allows one to generate videos with same content but different motion as well as videos with different content and same motion.

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Forward citations

Cited by 5 Pith papers

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