Share

Export Citation

APA
MLA
Chicago
Harvard
Vancouver
BIBTEX
RIS
Universitas Hasanuddin
Research output:Contribution to journalArticlepeer-review

Content based image retrieval and support vector machine methods for face recognition

Prabuwono A.S.

TEM Journal

Q3
Published: 2019Citations: 7

Abstract

The development of biometrics is growing rapidly. The recognition as non-trivial element in biometrics is not only using fingerprints, but also human face. The purpose of this research is to implement both Content Based Image Retrieval (CBIR) and Support Vector Machine (SVM) methods in the face recognition system with a combination of features extraction. CBIR method interprets images by exploiting several features. The feature usually consists of texture, color, and shape. This research utilizes color, texture, shape and shape coordinate features of the image. The proposed algorithms are HSV Color Histogram, Color Level Co-Occurrence Matrix (CLCM), Eccentricity, Metric, and Hierarchical Centroid. SVM method is used to train and classify the extracted vectors. The result shows that the proposed system is 95% accurate in recognizing faces with different resolutions.

Access to Document

10.18421/TEM82-10

Other files and links

Fingerprint

Artificial intelligenceSciences
Pattern recognition (psychology)Sciences
Computer scienceSciences
CentroidSciences
Support vector machineSciences
Computer visionSciences
Content-based image retrievalSciences
Face (sociological concept)Sciences
BiometricsSciences
HistogramSciences
Feature vectorSciences
Facial recognition systemSciences
Feature extractionSciences
Image retrievalSciences
Image (mathematics)Sciences
SociologySciences
Social scienceSciences