Scene classification using support vector machines

Autor: Venkata Naresh Mandhala, B. Renuka Devi, V. Sujatha
Rok vydání: 2014
Předmět:
Zdroj: 2014 IEEE International Conference on Advanced Communications, Control and Computing Technologies.
DOI: 10.1109/icaccct.2014.7019421
Popis: The classification of images into semantic categories is tough nowadays. This paper presents a system to classify real world scenes in four semantic groups of coast, forest, highways and street using support vector machines. Established classification approaches simplify badly on image classification tasks, when the classes are non-separable. In this paper we used Support Vector Machine for scene classification. Support Vector Machine is a supervised classification technique, has its extraction in geometric Learning Theory and have gained importance as they are strong, precise and are effective even after using a small training model. With their character Support Vector Machines are basically binary classifiers, though, they can be tailored to handle the manifold classification tasks general in scene classification. This proposed work shows that support vector machines can simplify well on hard scene classification problems. Support Vector Machines can execute well on a non-linear classification using kernel deception, completely mapping their inputs into high-dimensional feature spaces. In this paper 3 types of kernels (linear, polynomial and RBF kernels) are used with support vector machines. It is observed that Gaussian kernel outperform other types of kernels.
Databáze: OpenAIRE