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Papers/Skeleton-aided Articulated Motion Generation

Skeleton-aided Articulated Motion Generation

Yichao Yan, Jingwei Xu, Bingbing Ni, Xiaokang Yang

2017-07-04Motion GenerationVideo Generation
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Abstract

This work make the first attempt to generate articulated human motion sequence from a single image. On the one hand, we utilize paired inputs including human skeleton information as motion embedding and a single human image as appearance reference, to generate novel motion frames, based on the conditional GAN infrastructure. On the other hand, a triplet loss is employed to pursue appearance-smoothness between consecutive frames. As the proposed framework is capable of jointly exploiting the image appearance space and articulated/kinematic motion space, it generates realistic articulated motion sequence, in contrast to most previous video generation methods which yield blurred motion effects. We test our model on two human action datasets including KTH and Human3.6M, and the proposed framework generates very promising results on both datasets.

Results

TaskDatasetMetricValueModel
HandNTU Hand DigitAMT2.6SAMG
HandNTU Hand DigitIS2.4919SAMG
HandNTU Hand DigitPSNR28.0185SAMG
HandSenz3DAMT2.3SAMG
HandSenz3DIS3.3285SAMG
HandSenz3DPSNR26.9545SAMG

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