Color and Texture Based Identification and Classification of food Grains using different Color Models and Haralick features

Journal Title: International Journal on Computer Science and Engineering - Year 2011, Vol 3, Issue 12

Abstract

This paper presents the study on identification and classification of food grains using different color models such as L*a*b, HSV, HSI and YCbCr by combining color and texture features without performing preprocessing. The K-NN and minimum distance classifier are used to identify and classify the different types of food grains using local and global features. Texture and color features are the important features used in the classification of different objects. The local features like Haralick features are computed from co-occurrence matrix as texture features and global features from cumulative histogram are computed along with color features. The experiment was carried out on different food grains classes. The non-uniformity of RGB color space is eliminated by L*a*b, HSV, HSI and YCbCr color space. The correct classification result achieved for different color models is quite good.

Authors and Affiliations

Neelamma K. Patil , Virendra S. Malemath , Ravi M. Yadahalli

Keywords

Related Articles

Handwritten Tamil Character Recognition and Conversion using Neural Network

Hand written Tamil Character recognition refers to the process of conversion of handwritten Tamil character into Unicode Tamil character. The scanned image is segmented into paragraphs using spatial space detection techn...

An Artificial Immune System Model for Multi Agents Resource Sharing in Distributed Environments

Natural Immune system plays a vital role in the survival of the all living being. It provides a mechanism to defend itself from external predates making it consistent systems, capable of adapting itself for survival inca...

A SURVEY:”MALNUTRITION FOR WOMEN” 

The term malnutrition generally refers both to under nutrition and over nutrition Many factors can cause malnutrition, most of which relate to poor diet or severe and repeated infections, particularly in underprivileged...

Robust Algorithm for Impulse Noise Reduction

This Paper presents highly efficient two phase schema for removing impulse noise. In the first phase, robust algorithm for noise detection is used to identify noisy pixels. In the second phase, the image is restored usin...

Product Assembly Sequence Optimization Based on Genetic Algorithm

Genetic algorithm (GA) is a search technique used in computing to find approximate solution to optimization and search problem based on the theory of natural selection. This study investigates the application of GA in op...

Download PDF file
  • EP ID EP97565
  • DOI -
  • Views 142
  • Downloads 0

How To Cite

Neelamma K. Patil, Virendra S. Malemath, Ravi M. Yadahalli (2011). Color and Texture Based Identification and Classification of food Grains using different Color Models and Haralick features. International Journal on Computer Science and Engineering, 3(12), 3669-3680. https://europub.co.uk./articles/-A-97565