| Article ID | Journal | Published Year | Pages | File Type |
|---|---|---|---|---|
| 526777 | Image and Vision Computing | 2012 | 17 Pages |
Most dominant point detection methods require heuristically chosen control parameters. One of the commonly used control parameter is maximum deviation. This paper uses a theoretical bound of the maximum deviation of pixels obtained by digitization of a line segment for constructing a general framework to make most dominant point detection methods non-parametric. The derived analytical bound of the maximum deviation can be used as a natural bench mark for the line fitting algorithms and thus dominant point detection methods can be made parameter-independent and non-heuristic. Most methods can easily incorporate the bound. This is demonstrated using three categorically different dominant point detection methods. Such non-parametric approach retains the characteristics of the digital curve while providing good fitting performance and compression ratio for all the three methods using a variety of digital, non-digital, and noisy curves.
► Bound of the max. deviation of pixels from a digitized line segment is derived. ► The bound is used as a natural benchmark for dominant point detection (DPD) methods. ► DPD methods can be made parameter-free and non-heuristic using it. ► Three different DPD methods have been made parameter independent.
