Color and Edge Histograms Based Medicinal Plants' Image Retrieval

Full Text (PDF, 633KB), PP.24-35

Views: 0 Downloads: 0

Author(s)

Basavaraj S. Anami 1,* Suvarna S Nandyal 2,3 A Govardhan 4

1. K.L.E. Institute of Technology, Hubli-580030,Karnataka, INDIA

2. JNT University, Hyderabad, India

3. Department of Computer Science & Engg, P.D.A. College of Engineering, Gulbarga-585103,Karnataka, INDIA

4. JNTUH College of Engineering, -505501,AndraPradesh, INDIA

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2012.08.04

Received: 13 Apr. 2012 / Revised: 16 May 2012 / Accepted: 20 Jun. 2012 / Published: 8 Aug. 2012

Index Terms

Medicinal plant retrieval, Herbs, Shrubs, Trees, Color histogram, Edge histogram

Abstract

In this paper, we propose a methodology for color and edge histogram based medicinal plants image retrieval. The medicinal plants are divided into herbs, shrubs and trees. The medicinal plants are used in ayurvedic medicines. Manual identification of medicinal plants requires a priori knowledge. Automatic recognition of medicinal plants is useful. We have considered medicinal plant species, such as Papaya, Neem, Tulasi and Aloevera are considered for identification and retrieval. The color histograms are obtained in RGB, HSV and YCbCr color spaces. The number of valleys and peaks in the color histograms are used as features. But, these features alone are not helpful in discriminating plant images, since majority plant images are green in color. We have used edge and edge direction histograms in the work to get edges in the stem and leafy parts. Finally, these features are used in retrieval of medicinal plant images. Absolute distance, Euclidean distance and mean square error, similarity distance measures are deployed in the work. The results show an average retrieval efficiency of 94% and 98% for edge and edge direction features respectively.

Cite This Paper

Basavaraj S. Anami, Suvarna S Nandyal, Govardhan. A.,"Color and Edge Histograms Based Medicinal Plants' Image Retrieval", IJIGSP, vol.4, no.8, pp.24-35, 2012. DOI: 10.5815/ijigsp.2012.08.04

Reference

[1]Basavaraj S. Anami, Suvarna S. Nandyal, A. Govardhan. A Combined Color, Texture and Edge Features Based Approach for Identification and Classification of Indian Medicinal plants. International Journal of Computer Applications, 2010, 6(12): 45-51. 

[2]Basavaraj S. Anami, Suvarna Nandyal, A. Govardhan, P.S.Hiremath. Aspect Ratio Based Identification and Classification of Medicinal Plants in Indian Context.CiiT International Journal of Digital Image Processing, 2011, 3(11): 698-704.

[3]D Shi, L Xu, L Han. Image retrieval using both color and texture features. The Journal of China Universities of Posts and Telecommunications, 2008, 14:94-99.

[4]Dong Kwon Park, Yoon Seok Jeon, Chee Sun Won. Efficient Use of Local Edge Histogram Descriptor. International Multimedia Conference Proceedings of ACM workshops on Multimedia, 2000:51-54.

[5]Dong-cheng Shi, Lan Xu and Ling-yan Han. Image retrieval using both color and texture features. The Journal of China Universities of Posts and Telecommunications. 2007: 94-99.

[6]Dong-cheng Shi, Lan Xu and Ling-yan Han. Image retrieval using both color and edge histogram. Electronic Imaging and Multimedia Technology, 2008, 6833(2): 6833361-6833367.

[7]H.J. Tico, M, K. P. A method of Color histogram creation for image retrieval. Proceedings of Nordic Signal Processing Symposium (NORSIG),2000: 157-160.

[8]Hanife Kebapci, Berrin yanikoglu, Gozde Unal. Plant image Retrieval Using Color and Texture features. The Computer Journal, 2010: 1-16. 

[9]Jianlin Zhang, Wensheng Zou. Content- Based Image Retrieval using Color and Edge direction features. 2nd International Conference on Advanced Computer Control, 2010, 5: 459-462. 

[10]Justin Domke and Yiannis Aloimonos. Deformation and Viewpoint Invariant Color Histograms. Proceedings of British Machine VisionConference(BMVC),2006: 267-270.

[11]K. Singh, M. Ma, and D.W. Park. Histogram Approach for Content-based Image Retrieval. Proceedings in Visualization, Imaging, and Image Processing.2003, 396: 803-810.

[12]Kondekar V. H., Kolkure V. S., Kore S.N. Image Retrieval Techniques based on Image Features: A State of Art approach for CBIR. International Journal of Computer Science and Information Security, (IJCSIS), 2010, 7(1): 69-75. 

[13]L. Cinque, S. Levialdi, A. Pellicanò, K.A. Olsen. Color-Based Image Retrieval Using Spatial-Chromatic Histograms. IEEE International Conference on Multimedia Computing and Systems (ICMCS'99), 1999, 2: 969-973. 

[14]R.Vijaya, Arjunan, V. Vijayakumar. Image classification in CBIR systems with colour histogram features. International Conference on Advances in Recent Technologies in Communication and computing, 2009:593-595.

[15]Shamik Sural, Gang Qian and Sakti Pramanik. Segmentation and histogram generation using the HSV color space for image retrieval. International Conference on Image Processing (ICIP), 2002, 2: 589-592.

[16]Sheng Yu, Chaobing Huang, Jingli Zhou. Color Image Retrieval Based On Color-Texture-Edge Feature Histograms. International Journal of Image and Graphics, 2006, 6(4): 583-598.