• Corpus ID: 16194556

DIGITAL IMAGE PROCESSING: SUPERVISED CLASSIFICATION USING GENETIC ALGORITHM IN MATLAB TOOLBOX

@inproceedings{Furtado2010DIGITALIP,
  title={DIGITAL IMAGE PROCESSING: SUPERVISED CLASSIFICATION USING GENETIC ALGORITHM IN MATLAB TOOLBOX},
  author={Joaquim Jose Furtado and Zhihua Cai and Li Xiaobo},
  year={2010}
}
Digital Image Processing (DIP) is a multidisciplinary science. The applications of image processing include: astronomy, ultrasonic imaging, remote sensing, medicine, space exploration, surveillance, automated industry inspection and many more areas. Different types of an image can be discriminated using some image classification algorithms using spectral features, the brightness and "color" information contained in each pixel. The classification procedures can be "supervised" or "unsupervised… 

An Integrated Adaptive Histogram Equalization Based Genetic Algorithm for Performance Enhancement of Colored Images

TLDR
The comparison among the geneti c algorithm and proposed technique has shown that the proposed technique outperforms over the genetic alg orithm based image enhancement.

Genetic Linear Averaging Algorithm for Zooming Digital Images

In this paper, the hypernation of linear averaging algorithm for zooming images is achieved with genetic algorithm. It's applied on a number of samples of images that lack the indistinction of the

Development of Diagnostic Classifier for Ultrasound Liver Lesion Images

TLDR
This study focuses on Development of Diagnostic Classifier for Ultrasound liver lesion, a fully automatic machine learning system for developing this classifier to identify the liver cancer in non invasive method.

Classical Image Based Classification of Coffee Beans on Their Botanical Origins in Tongo and Wambara, Benishangul Gumuz, Ethiopia

Ethiopia is a homeland of coffee. Coffee is a major export commodity of Ethiopia, which has a significant role in earning foreign currency. This research was conducted with the objective of

Study of the Fly algorithm for 2-D and 3-D image reconstruction

The aim of this study is to investigate the behaviour and application of an evolutionary algorithm (EA) based on a particular approach of cooperative co-evolution algorithm (CCEA), the Parisian

Image Classification to Support Emergency Situation Awareness

TLDR
This paper investigates image classification in the context of a bush fire emergency in the Australian state of NSW where images associated with Tweets during the emergency were used to train and test classification approaches.

Improved Genetic K-Means Algorithm Comprises Mean Absolute Percentage Error for Brain Tumor Extraction form MRI images

The proposed work uses improved Genetic K-Means algorithm which comprises mean absolute percentage error (IGKMAPE) to extract brain tumor from magnetic resonance imaging scan. This paper is the

Mapping Landcover/Landuse and Coastline Change in the Eastern Mekong Delta (Viet Nam) from 1989 to 2002 using Remote Sensing

There has been rapid change in the landcover/landuse in the Mekong delta, Viet Nam. The landcover/landuse has changed very fast due to intense population pressure, agriculture/aquaculture farming and

References

SHOWING 1-10 OF 37 REFERENCES

Effective image compression using evolved wavelets

TLDR
A method based on the coevolutionary genetic algorithm introduced in [11] is used to evolve specialized wavelets for fingerprint images that consistently outperform the hand-designed wavelet currently used by the FBI to compress fingerprints.

Fundamentals of Image Processing

TLDR
This chapter examines the fundamental principles and methods that guide the transformation of remotely sensed data into information and can explore how these methods connect to the analysis and assessment of Earth’s environmental system and gain a clearer understanding of the value of remote sensing technology when applied.

Image processing

TLDR
Parts of image processing are discussed--specifically: the mathematical operations one is likely to encounter, and ways of implementing them by optics and on digital computers; image description; and image quality evaluation.

Computer-aided pipeline operation using genetic algorithms and rule learning. PART I: Genetic algorithms in pipeline optimization

  • D. Goldberg
  • Computer Science
    Engineering with Computers
  • 2005
TLDR
In this two-paper series, techniques connected with artificial intelligence and genetics are applied to achieve computer-based control of gas pipeline systems to solve two classical pipeline optimization problems, the steady serial line problem, and the single transient line problem.

An introduction to genetic algorithms

TLDR
An Introduction to Genetic Algorithms focuses in depth on a small set of important and interesting topics -- particularly in machine learning, scientific modeling, and artificial life -- and reviews a broad span of research, including the work of Mitchell and her colleagues.

Remarks on Hardware Implementation of Image Processing Algorithms

  • Marek Wnuk
  • Computer Science
    Int. J. Appl. Math. Comput. Sci.
  • 2008
TLDR
The paper discusses particular features of the pipelined architecture and presents selected techniques of implementing early image processing procedures in hardware, which can realize many simple, still time-consuming operations in a parallel or a pipelining manner.

IMAGE PROCESSING FOR EVERYONE

TLDR
Novel LabVIEW-based image processing demonstrations that, when supplemented with web-based class lectures, illustrate the power and beauty of image processing algorithms.

Scalable Optimization via Probabilistic Modeling: From Algorithms to Applications (Studies in Computational Intelligence)

TLDR
This work discusses linkage Learning via Probabilistic Modeling in the Extended Compact Genetic Algorithm and Hierarchical Bayesian Optimization Algorithm, as well as multiobjective Estimation of Distribution Algorithms.

Application of Genetic Algorithms to Data Mining

TLDR
This paper explores how GAs are being used to improve the performance of Data Mining clustering and classifica- tion algorithms and examines strategies for improving these approaches.

Remote sensing and image interpretation

Concepts and Foundations of Remote Sensing Elements of Photographic Systems Basic Principles of Photogrammetry Introduction to Visual Image Interpretation Multispectral, Thermal, and Hyperspectral