Nearest-neighbour classifiers in natural scene analysis
β Scribed by Sameer Singh; John Haddon; Markos Markou
- Publisher
- Elsevier Science
- Year
- 2001
- Tongue
- English
- Weight
- 650 KB
- Volume
- 34
- Category
- Article
- ISSN
- 0031-3203
No coin nor oath required. For personal study only.
β¦ Synopsis
It is now well-established that k nearest-neighbour classi"ers o!er a quick and reliable method of data classi"cation. In this paper we extend the basic de"nition of the standard k nearest-neighbour algorithm to include the ability to resolve con#icts when the highest number of nearest neighbours are found for more than one training class (model-1). We also propose model-2 of nearest-neighbour algorithm that is based on "nding the nearest average distance rather than nearest maximum number of neighbours. These new models are explored using image understanding data. The models are evaluated on pattern recognition accuracy for correctly recognising image texture data of "ve natural classes: grass, trees, sky, river re#ecting sky and river re#ecting trees. On noise contaminated test data, the new nearest neighbour models show very promising results for further studies. We evaluate their performance with increasing values of neighbours (k) and discuss their future in scene analysis research.
π SIMILAR VOLUMES
This paper applies nearest-neighbour analysis to analysis the clustering of tourist attractions in Macedonia and thus represents a case study for this type of application. From the results suggestions are made about how to best develop tourism in the area surrounding Prespes. The model indicates tha
Nearest Neighboum nearest neighbour or spatial methods in the design and analysis of comparative experiments. The interest ranges from theoretical concepts like combinatoriel construction of appropriate designs (MOFLGAN & CHAKRAVARTI, 1988) to practical data analysis techniques for agricultural fiel