Abstract
This study retrieved relevant literature on color-based image retrieval in the Web of Science core database, and used bibliometrics and CiteSpace 6.1.R2 software to visually analyze the authors, institutions, and keywords of literature published in this field from 2005 to 2023. This study summarized the current status and development trend of color-based image retrieval and combined information extraction to select and include 716 articles for analysis. The results showed that: (1) In the last 20 years, the number of publications in this field has gone through a slow budding phase, a fluctuating growth phase, and an explosive growth phase; research in this area has been highly active in recent three years. (2) The authors of this field have a relatively even distribution of publications and some authors have formed close collaborative groups. (3) The research institutions mainly include research institutes and comprehensive universities, which have close collaborations with each other. (4) Co-occurrence and clustering analysis of keywords showed that research in this field is mainly focused on the main paths, research methods, and technological tools of color-based image retrieval, as well as key objects and potential influencing factors in the technological process. (5) Emerging keywords analysis predicted that more precise color description and extraction technology will be the focus of future research. In conclusion, color-based image retrieval is still in a hot research and technology explosion phase, and cooperation between countries, institutions, and authors should be strengthened to conduct more in-depth research.
Reference32 articles.
1. Ammatmanee, C. , & Lu, G. . (2021). A ten-year literature review of content-based image retrieval (cbir) studies in the tourism industry. The Electronic Library.
2. Manjula, K. , Monisha, A. , Reshma, K. , Swetha, P. , & Vijayarekha, K. . (2016). Content based image retrieval systems: a review. Research Journal of Pharmaceutical, Biological and Chemical Sciences, 7(6), 1915-1921.
3. Chan, Y. K. , & Liu, Y. T. . (2008). An image retrieval system based on the image feature of color differences on edges in spiral scan order. International Journal of Pattern Recognition & Artificial Intelligence, 17(08), 1417-1429.
4. Wang, X. Y. , Chen, Z. F. , & Yun, J. J. . (2011). A novel two-level color image retrieval method. International Journal of Image and Graphics, 11(03), 1100418-.
5. Park, Y. , Park, K . , & Kim, G. . (2013). Content-based image retrieval using colour and shape features. International Journal of Computer Applications in Technology, 48(2), 155-161.