Image Retrieval with Relational Semantic Indexing Color and Gray Images

Dr. S.Sutha
Dr. S.Sutha
Mr. C.A.Kandasamy
Mr. C.A.Kandasamy
Mr. N.Prakash
Mr. N.Prakash
Anna University, Chennai Anna University, Chennai

Send Message

To: Author

Image Retrieval with Relational Semantic Indexing Color and Gray Images

Article Fingerprint

ReserarchID

CSTITFLYNP

Image Retrieval with Relational Semantic Indexing Color and Gray Images Banner

AI TAKEAWAY

Connecting with the Eternal Ground
  • English
  • Afrikaans
  • Albanian
  • Amharic
  • Arabic
  • Armenian
  • Azerbaijani
  • Basque
  • Belarusian
  • Bengali
  • Bosnian
  • Bulgarian
  • Catalan
  • Cebuano
  • Chichewa
  • Chinese (Simplified)
  • Chinese (Traditional)
  • Corsican
  • Croatian
  • Czech
  • Danish
  • Dutch
  • Esperanto
  • Estonian
  • Filipino
  • Finnish
  • French
  • Frisian
  • Galician
  • Georgian
  • German
  • Greek
  • Gujarati
  • Haitian Creole
  • Hausa
  • Hawaiian
  • Hebrew
  • Hindi
  • Hmong
  • Hungarian
  • Icelandic
  • Igbo
  • Indonesian
  • Irish
  • Italian
  • Japanese
  • Javanese
  • Kannada
  • Kazakh
  • Khmer
  • Korean
  • Kurdish (Kurmanji)
  • Kyrgyz
  • Lao
  • Latin
  • Latvian
  • Lithuanian
  • Luxembourgish
  • Macedonian
  • Malagasy
  • Malay
  • Malayalam
  • Maltese
  • Maori
  • Marathi
  • Mongolian
  • Myanmar (Burmese)
  • Nepali
  • Norwegian
  • Pashto
  • Persian
  • Polish
  • Portuguese
  • Punjabi
  • Romanian
  • Russian
  • Samoan
  • Scots Gaelic
  • Serbian
  • Sesotho
  • Shona
  • Sindhi
  • Sinhala
  • Slovak
  • Slovenian
  • Somali
  • Spanish
  • Sundanese
  • Swahili
  • Swedish
  • Tajik
  • Tamil
  • Telugu
  • Thai
  • Turkish
  • Ukrainian
  • Urdu
  • Uzbek
  • Vietnamese
  • Welsh
  • Xhosa
  • Yiddish
  • Yoruba
  • Zulu
Font Type
Font Size
Font Size
Bedground

Abstract

Due to the development of digital technology large number of image is available in web and personal database and it take more time to classify and organize them. In AIA assigns label to image content with this image is automatically classified and desired image can be retrieved. Image retrieval is the one of the growing research area. To retrieve image Text and content based methods used. In recent research focus on annotation based retrieval. Image annotation represents assigning keywords to image based on its contents and it use machine learning techniques. Using image content with more relevant keywords leads fast indexing and retrieval of image from large collection of image database. Many techniques have been proposed for the last decades and it gives some improvement in retrieval performance. In this proposed work Relational Semantic Indexing (RSI) based LQT technique reduces the search time and increase the retrieval performance. This proposed method includes segmentation, feature extraction, classification, and RSI based annotation steps. This proposed method compared against IAIA, and LSH algorithms.

References

20 Cites in Article
  1. M Lew,N Sebe,C Djeraba,R Jain (2006). Content-based multimedia information retrieval: State of the art and challenges.
  2. C Yang,M Dong,J Hua (2006). Region-based image annotation using asymmetrical support vector machine-based multiple-instance learning.
  3. Gustavo Carneiro,Antoni Chan,Pedro Moreno,Nuno Vasconcelos (2007). Supervised Learning of Semantic Classes for Image Annotation and Retrieval.
  4. Yohan Jin,Kibum Jin,B Latifurkhan,Prabhakaran (2008). The Randomized Approximating Graph Algorithm for Image Annotation Refinement Problem.
  5. Liangliang Cao,Jiebo Luo,Henry Kautz,Thomas Huang (2009). Image Annotation Within the Context of Personal Photo Collections Using Hierarchical Event and Scene Models.
  6. Ruth Bergman,Hila Nachlieli (2011). Perceptual Segmentation: Combining Image Segmentation With Object Tagging.
  7. Jaykrishna Joshi,Dattatray Bade,Kashyap Joshi (2012). Fuzzy Color Histogram Based Content Based Image Retrieval of Query Images.
  8. Yi Yang,Fei Wu,Feiping Nie,H Shen,Yueting Zhuang,Alexander Hauptmann (2012). Web and Personal Image Annotation by Mining Label Correlation With Relaxed Visual Graph Embedding.
  9. Jinhui Tang,Chunxia Shuicheng Yan,Zhao,Ramesh Tat-Seng Chua,Jain (2012). Label-specific training set construction from web resource for image annotation.
  10. N Puviarasan,Dr Bhavani,A Vasanthi (2014). Image Retrieval Using Combination of Texture and Shape Features.
  11. Peixiang Dong,Kuizhi Mei,Nanning Zheng,Hao Lei,Jianping Fan (2013). Training inter-related classifiers for automatic image classification and annotation.
  12. Himali Chaudhari,D Prof,Patil (2014). A Survey on Automatic Annotation and Annotation Based Image Retrieval.
  13. Anna Dr,S Saro Vijendran,Vinod Kumar (2015). A New Content Based Image Retrieval System by HOG of Wavelet Sub Bands.
  14. Lawrence Ray (2015). Book Rvw: Image Processing, Analysis and Machine Vision. By Milan Sonka, Vaclav Hlavac, and Roger Boyle.
  15. A Smeulders,M Worring,S Santini,A Gupta,R Jain (2000). Content-based image retrieval at the end of the early years.
  16. P Duygulu,K Barnard,J De Freitas,D Forsyth (2002). Object Recognition as Machine Translation: Learning a Lexicon for a Fixed Image Vocabulary.
  17. Gustavo Carneiro,Antoni Chan,Pedro Moreno,Nuno Vasconcelos (2007). Supervised Learning of Semantic Classes for Image Annotation and Retrieval.
  18. K Hemachandran Content Based Image Retrieval using Color and Texture Manimala Singha* and.
  19. F Albregtsen,B Nielsen,H Danielsen (null). Adaptive gray level run length features from class distance matrices.
  20. Robert Haralick,K Shanmugam,Its'hak Dinstein (1973). Textural Features for Image Classification.

Funding

No external funding was declared for this work.

Conflict of Interest

The authors declare no conflict of interest.

Ethical Approval

No ethics committee approval was required for this article type.

Data Availability

Not applicable for this article.

How to Cite This Article

Dr. S.Sutha. 2020. \u201cImage Retrieval with Relational Semantic Indexing Color and Gray Images\u201d. Global Journal of Computer Science and Technology - H: Information & Technology GJCST-H Volume 20 (GJCST Volume 20 Issue H1).

Download Citation

Journal Specifications

Crossref Journal DOI 10.17406/gjcst

Print ISSN 0975-4350

e-ISSN 0975-4172

Keywords
Classification
GJCST-H Classification I.6.m
Version of record

v1.2

Issue date
October 16, 2020

Language
en
Experiance in AR

Explore published articles in an immersive Augmented Reality environment. Our platform converts research papers into interactive 3D books, allowing readers to view and interact with content using AR and VR compatible devices.

Read in 3D

Your published article is automatically converted into a realistic 3D book. Flip through pages and read research papers in a more engaging and interactive format.

Article Matrices
Total Views: 4389
Total Downloads: 1050
2026 Trends
Related Research
Our website is actively being updated, and changes may occur frequently. Please clear your browser cache if needed. For feedback or error reporting, please email [email protected]

Request Access

Please fill out the form below to request access to this research paper. Your request will be reviewed by the editorial or author team.
X

Quote and Order Details

Contact Person

Invoice Address

Notes or Comments

This is the heading

Lorem ipsum dolor sit amet, consectetur adipiscing elit. Ut elit tellus, luctus nec ullamcorper mattis, pulvinar dapibus leo.

High-quality academic research articles on global topics and journals.

Image Retrieval with Relational Semantic Indexing Color and Gray Images

Dr. S.Sutha
Dr. S.Sutha <p>Anna University, Chennai</p>
Mr. C.A.Kandasamy
Mr. C.A.Kandasamy
Mr. N.Prakash
Mr. N.Prakash

Research Journals