会议专题

Finding the Accurate Natural Contour of Non-rigid Objects in Video

  Non-rigid object tracking is an important task in computer vision,while its natural contour extraction is one of the most difficult problems during the process.Most tracking-by-detection methods are based on rectangular bounding-boxes,this will lead errors into subsequent detection.This paper present a novel superpixel-based detector for accurate natural contour extraction,there are three main contributions: 1) combining real-time superpixel segmentation with natural contour detection,2) proposing an object-oriented natural contour extraction method for non-rigid objects,3) proposing a non-rigid object detection method based on flexible scanning window.Compared with those bounding-box based detection methods,our detector can provide very accurate initial input of object model,then produce accurate natural contour output of the non-rigid object.Our detector broke the conventional detection method based on scanning rectangle,which greatly reduced the interference caused by background information.The experiments show that the proposed method outperforms the state-of-the-art algorithms not only on the contour accuracy but also on the computation cost.In addition,the initialization stage of our method overcomes the limitation of HT caused by the size of initial bounding-box.

superpixel non-rigid object natural contour extraction flexible scanning window

Gaoxuan Ying Sheng Liu Yiting Jin

College of Computer Science and Technology,Zhejiang University of Technology Hangzhou,310023,Zhejiang,P.R. China

国际会议

Chinese Conference on Pattern Recognition, CCPR(2014年全国模式识别学术会议)

长沙

英文

199-208

2014-11-01(万方平台首次上网日期,不代表论文的发表时间)