Real Time Burning Image Classification Using Support Vector Machine

Abstract

Burning image classification is critical and attempted problems in medical image processing. This paper has proposed the real time image classification for burning image to automatically identify the degrees of burns in three levels: II, III, and IV. The proposed model uses the multi-colour channels extraction and binary based on adaptive threshold. The proposed model uses One-class Support Vector Machine instead of traditional Support Vector Machine (SVM) because of unbalanced degrees of burns images database. The classifying precision 77.78% shows the feasibility of our proposed model.

Authors and Affiliations

T. S. Hai, L. M. Triet, L. H. Thai, N. T. Thuy

Keywords

Related Articles

Understanding the Role of Data-Centric Social Context in Personalized Mobile Applications

Context-awareness in personalized mobile applications is a growing area of study. Social context is one of the most important sources of information in human-activity based applications. In this paper, we mainly focus on...

AndroCon: An Android-Based Context-Aware Middleware Framework

Mobile devices have become major sources of context-aware data due to their ubiquity and sensing capabilities. However, deploying mobile devices as dynamic, unabridged context data provider either locally or remotely is...

Face recognition based on LDA in manifold subspace

Although LDA has many successes in dimensionality reduction and data separation, it also has disadvantages, especially the small sample size problem in training data because the "within-class scatter" matrix may not be a...

Context-based Project Management

Context-based computing has become an integral part of the software infrastructure of modern society. Better software are made adaptive to suit the surrounding environment. Context-based applications best fit into enviro...

Coupling equation based models and agent-based models: example of a multi-strains and switch SIR toy model

Modeling in ecol ogy or epidemiol ogy gener all y opposes tw o classes of models, Equa tion Based Models and Agent Based Models. Mathema tical models all ow predicting the long- term dynamics of the studied systems. How...

Download PDF file
  • EP ID EP45795
  • DOI http://dx.doi.org/10.4108/eai.6-7-2017.152760
  • Views 249
  • Downloads 0

How To Cite

T. S. Hai, L. M. Triet, L. H. Thai, N. T. Thuy (2017). Real Time Burning Image Classification Using Support Vector Machine. EAI Endorsed Transactions on Context-aware Systems and Applications, 4(12), -. https://europub.co.uk/articles/-A-45795