bullet Sensors & Transducers Journal

    (ISSN 1726- 5479)

205.767

2008 e-Impact Factor

25 Top Downloaded Articles

Best Selling Articles 2012

Journal Subscription 2013

Editorial Calendar 2013

Submit an Article

Editorial Board

Current Issue

S&T journal's cover

Sensors & Transducers Journal 2011

Sensors & Transducers Journal 2010

Sensors & Transducers Journal 2009

Sensors & Transducers Journal 2008

Sensors & Transducers Journal 2007

2000-2002 S&T e-Digest Contents

2003 S&T e-Digest Contents

2004 S&T e-Digest Contents

2005 S&T e-Digest Contents

2006 S&T e-Digest Contents

 

Best Articles 2011

 

 

 

Vol. 157, Issue 10, October 2013, pp. 263-271

 

Bullet

 

Study of Image Retrieval Method Based on Salient Points and Comprehensive Characteristics
 
Chen Yatian

College of Humanities, Changshu Institute of Technology, Changshu Jiangsu 215500, China
E-mail: yatianchen@cslg.cn

 

Received: 14 August 2013   /Accepted: 25 September 2013   /Published: 31 October 2013

Digital Sensors and Sensor Sysstems

 

Abstract: Technology has been a very good development in the past twenty or thirty years, content-based image retrieval, many low-level visual features is proposed for image retrieval, real-time problem in image retrieval has got great attention of researchers, content-based image retrieval technique has been widely used in medical, education, digital library, industrial and commercial fields and based on the military field. This paper describes the image retrieval technology research background and significance, introduces the current research situation and research hotspot in content-based image retrieval, the basic method of image retrieval based on content and key problems are explained in detail. The image can cause visual attention point, known as the significant point. The literature and presents a new method for automatic extraction of salient points, and on this basis to achieve significant point based image retrieval. Find the analysis of experimental results: the foreground and background are distinct and image background color of a single, can extract salient points effectively, the recall rate and correct rate was higher; the background image is not obvious, is not conducive to the significant point. Extraction, the retrieval precision rate and recall rate is low.

 

Keywords: Automatic, Pattern recognition, Algorithm, Image.

 

Acrobat reader logo Click <here> or title of paper to download the full pages article in pdf format

 

 

Download <here> the Library Journal Recommendation Form

 

 

 

 

 


1999 - 2018 Copyright , International Frequency Sensor Association (IFSA). All Rights Reserved.


Home - News - Links - Archives - Tools - Voltage-to-Frequency Converters - Standardization - Patents - Marketplace - Projects - Wish List - e-Shop - Sensor Jobs - Membership - Videos - Publishing - Site Map - Subscribe - Search

 Members Area -Sensors Portal -Training Courses - S&T Digest - For advertisers - Bookstore - Forums - Polls - Submit Press Release - Submit White Paper - Testimonies - Twitter - Facebook - LinkedIn