Article ID Journal Published Year Pages File Type
526777 Image and Vision Computing 2012 17 Pages PDF
Abstract

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.

Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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