Hierarchical facial expression animation by motion capture data

ICME(2014)

引用 5|浏览28
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摘要
Mapping facial tracking data to avatars is very challenging and time consuming, where a simple, yet efficient approach is strongly required. State-of-the-art methods are either vulnerable to noise or heavily reliant on complicated sensor devices. To deal with the noisy data, and without using a motion capture device, we present a novel vision-based facial expression animation framework by applying facial hierarchical model on pre-processed Motion Capture (MoCap) data. Our approach uses a facial tracking algorithm to extract rigid head pose and a set of expression motion parameters from each video frame. We factorize the MoCap data as prior knowledge to filter the low-quality 2D signals. In addition, a facial hierarchical model is established by the Hierarchical Gaussian Process Latent Variable Model (HGPLVM) to synthesize the holistic facial expression. Experimental results demonstrate the effectiveness of our system.
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关键词
hierarchical facial expression animation,facial tracking algorithm,facial expression animation framework,preprocessed motion capture,face recognition,facial expression,motion parameters,complicated sensor devices,mocap data,hierarchical gaussian process latent variable model,facial hierarchical model,motion capture data,mapping facial tracking data,image sensors,animation,holistic facial expression,gaussian processes,motion capture device,avatars,head pose,hgplvm,noisy data,state-of-the-art methods,video frame,image motion analysis,databases,face,tracking,shape
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