Image Retrieval Berdasarkan Fitur Warna, Bentuk, dan Tekstur

Authors

  • Rita Layona Bina Nusantara University
  • Yovita Tunardi Bina Nusantara University
  • Dian Felita Tanoto Bina Nusantara University

DOI:

https://doi.org/10.21512/comtech.v5i2.2369

Keywords:

CBIR, Color Histogram, SIFT, Gabor

Abstract

Along with the times, information retrieval is no longer just on textual data, but also the visual data. The technique was originally used is Text-Based Image Retrieval (TBIR), but the technique still has some shortcomings such as the relevance of the picture successfully retrieved, and the specific space required to store meta-data in the image. Seeing the shortage of Text-Based Image Retrieval techniques, then other techniques were developed, namely Image Retrieval based on content or commonly called Content Based Image Retrieval (CBIR). In this research, CBIR will be discussed based on color, shape and texture using a color histogram, Gabor and SIFT. This study aimed to compare the results of image retrieval with some of these techniques. The results obtained are by combining color, shape and texture features, the performance of the system can be improved.

Dimensions

Plum Analytics

References

Acharya, T., Ray, A. K. (2005). Image Processing Principles and Applications. Canada: John Wiley & Sons Inc.

Dimai, A. (1999). Rotation Invariant Texture Description using General Moment Invariants and Gabor Filters. Proc. Of the 11th Scandinavian Conf. on Image Analysis. 1: 391-398.

Howarth, P., Ruger, S. (2004). Evaluation of Texture Features for Content-Based Image Retrieval. Berlin: Springer-Verlag Berlin Heidelberg.

Jain, N., Sharma, S., Sairam, R. M. (2013, March). Content Base Image Retrieval using Combination of Color, Shape and Texture FeaturesContent Base Image Retrieval using Combination of Color, Shape and Texture Features. International Journal of Advanced Computer Research, 3(8): 70-77.

Kamath, M., Punjabi, D., Sabnis, T., Upadhyay, D., Shrawne, S. (2012). Improving Content Based Image Retrieval using Scale Invariant Feature Transform. International Journal of Engineering and Advanced Technology (IJEAT). 1(5): 19-21.

Kebapci, H., Yanikoglu, B., Unal, G. (2010). Plant Image Retrieval Using Color, Shape and Texture Features. The Computer Journal. April 9, 2010. Oxford University

Kumar, A. R., Saravanan, D. (2013). Content Based Image Retrieval Using Color Histogram. International Journal of Computer Science and Information Technologies: 242 - 245.

Manjunath, B. S., Ma, W. Y. (1996). Texture features for browsing and retrieval of large image data. IEEE Transactions on Pattern Analysis and Machine Intelligence. 18(8), 1996.

Rao, C., Kumar, S., Mohan, B. (2010). Content Based Image Retrieval using Exact Legendre Moments and Support Vector Machine. The International Journal of Multimedia & Its Applications (IJMA). 2 (2): 69-79.

Singh, S. M., Hemachandran, K. (2012, September). Content-Based Image Retrieval using Color Moment and Gabor Texture Feature. IJCSI International Journal of Computer Science. 9(5): 299-309.

Suhasini, P. S., Krishna, K. S., Krishna, I. V. (2009). CBIR Using Color Histogram Processing. Journal of Theoretical and Applied Information Technology. 6 (1): 116-122.

Zhang, D., Wong, A., Indrawan, M., Lu, G. (n.d.). Content-based Image Retrieval Using Gabor Texture Features. Diakses pada 28 Mei 2014, dari pdf.aminer.org: http://pdf.aminer.org/000/318/796/rotation_invariant_texture_features_using_rotated_complex_wavelet_for_content.pdf

Zhang, R. F., Zhang, Z. F. (2004). A Robust Color Object Analysis Approach to Efficient Image Retrieval. EURASIP Journal on Applied Signal Processing. 6: 871–885.

Downloads

Published

2014-12-01

Issue

Section

Articles
Abstract 431  .
PDF downloaded 476  .