Dense RepPoints: Representing Visual Objects with Dense Point Sets

  • Ze Yang ,
  • Yinghao Xu ,
  • Han Xue ,
  • Zheng Zhang ,
  • Raquel Urtasun ,
  • Liwei Wang ,
  • ,
  • Han Hu

European Conference on Computer Vision (ECCV) |

We present a new object representation, called Dense RepPoints, that utilizes a large set of points to describe an object at multiple levels, including both box level and pixel level. Techniques are proposed to efficiently process these dense points, maintaining near-constant complexity with increasing point numbers. Dense RepPoints is shown to represent and learn object segments well, with the use of a novel distance transform sampling method combined with set-to-set supervision. The distance transform sampling combines the strengths of contour and grid representations, leading to performance that surpasses counterparts based on contours or grids.