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[Keyword] pictorial structure models(2hit)

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  • Occluded Appearance Modeling with Sample Weighting for Human Pose Estimation

    Yuki KAWANA  Norimichi UKITA  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2017/07/06
      Vol:
    E100-D No:10
      Page(s):
    2627-2634

    This paper proposes a method for human pose estimation in still images. The proposed method achieves occlusion-aware appearance modeling. Appearance modeling with less accurate appearance data is problematic because it adversely affects the entire training process. The proposed method evaluates the effectiveness of mitigating the influence of occluded body parts in training sample images. In order to improve occlusion evaluation by a discriminatively-trained model, occlusion images are synthesized and employed with non-occlusion images for discriminative modeling. The score of this discriminative model is used for weighting each sample in the training process. Experimental results demonstrate that our approach improves the performance of human pose estimation in contrast to base models.

  • Part-Segment Features with Optimized Shape Priors for Articulated Pose Estimation

    Norimichi UKITA  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2015/10/14
      Vol:
    E99-D No:1
      Page(s):
    248-256

    We propose part-segment (PS) features for estimating an articulated pose in still images. The PS feature evaluates the image likelihood of each body part (e.g. head, torso, and arms) robustly to background clutter and nuisance textures on the body. While general gradient features (e.g. HOG) might include many nuisance responses, the PS feature represents only the region of the body part by iterative segmentation while updating the shape prior of each part. In contrast to similar segmentation features, part segmentation is improved by part-specific shape priors that are optimized by training images with fully-automatically obtained seeds. The shape priors are modeled efficiently based on clustering for fast extraction of PS features. The PS feature is fused complementarily with gradient features using discriminative training and adaptive weighting for robust and accurate evaluation of part similarity. Comparative experiments with public datasets demonstrate improvement in pose estimation by the PS features.