Joint Object and Part Segmentation Using Deep Learned Potentials

@article{Wang2015JointOA,
  title={Joint Object and Part Segmentation Using Deep Learned Potentials},
  author={Peng Wang and Xiaohui Shen and Zhe L. Lin and Scott Cohen and Brian L. Price and Alan L. Yuille},
  journal={2015 IEEE International Conference on Computer Vision (ICCV)},
  year={2015},
  pages={1573-1581}
}
Segmenting semantic objects from images and parsing them into their respective semantic parts are fundamental steps towards detailed object understanding in computer vision. In this paper, we propose a joint solution that tackles semantic object and part segmentation simultaneously, in which higher object-level context is provided to guide part segmentation, and more detailed part-level localization is utilized to refine object segmentation. Specifically, we first introduce the concept of… CONTINUE READING
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