Effects of Edge Detection on Least-squares Model-image Fitting Algorithm

  • Wang, Sendo (Department of Geomatics, National Cheng Kung University) ;
  • Tseng, Yi-Hsing (Department of Geomatics, National Cheng Kung University) ;
  • Liou, Yan-Shiou (Department of Geomatics, National Cheng Kung University)
  • Published : 2003.11.03

Abstract

Fitting the projected wire-frame model to the detected edge pixels on images by using least-squares approach, called Least-squares Model-image Fitting (LSMIF), is the key of the Model-based Building Extraction (MBBE). It is implemented by iteratively adjusting the model parameters to minimize the squares sum of distances from the extracted edge pixels to the projected wire-frame. This paper describes a series of experiments and studies on various factors affect the fitting results, including the edge detectors, the weighting rules, the initial value of parameters, and the number of overlapped images. The experimental result is not only helpful to clarify the influences of each factor, but is also able to enhance the robustness of the LSMIF algorithm.

Keywords