文件名称:article
-
所属分类:
- 标签属性:
- 上传时间:2014-07-23
-
文件大小:263.49kb
-
已下载:0次
-
提 供 者:
-
相关连接:无下载说明:别用迅雷下载,失败请重下,重下不扣分!
介绍说明--下载内容来自于网络,使用问题请自行百度
Nowadays, Content-Based Image Retrieval (CBIR) is the
mainstay of image retrieval systems. To understand the query
semantics and users expectations so as to communicate faithful
results in terms of accuracy, Relevance Feedback (RF) was
incorporated to CBIR systems. By allowing the user to assess
iteratively the answers as relevant/irrelevant or even giving
him/her the opportunity to specify a degree of relevance (user’s
feedbacks) , the system creates a new query that better captures
the user s needs, hence raising the opportunity to get more
relevant image results.
In this paper, we have focused on CBIR and basic concepts
pertaining to it, as well as Relevance Feedback and its various
mechanisms. An important contribution in this work is a
comparative analysis of CBIR systems using reference feedback:
major models and approaches are discussed in detail from early
heuristic methods to recently optimal learning algorithms, with
more emphasize on their advantages and weaknesses.-Nowadays, Content-Based Image Retrieval (CBIR) is the
mainstay of image retrieval systems. To understand the query
semantics and users expectations so as to communicate faithful
results in terms of accuracy, Relevance Feedback (RF) was
incorporated to CBIR systems. By allowing the user to assess
iteratively the answers as relevant/irrelevant or even giving
him/her the opportunity to specify a degree of relevance (user’s
feedbacks) , the system creates a new query that better captures
the user s needs, hence raising the opportunity to get more
relevant image results.
In this paper, we have focused on CBIR and basic concepts
pertaining to it, as well as Relevance Feedback and its various
mechanisms. An important contribution in this work is a
comparative analysis of CBIR systems using reference feedback:
major models and approaches are discussed in detail from early
heuristic methods to recently optimal learning algorithms, with
more emphasize on their advantages and weaknesses.
mainstay of image retrieval systems. To understand the query
semantics and users expectations so as to communicate faithful
results in terms of accuracy, Relevance Feedback (RF) was
incorporated to CBIR systems. By allowing the user to assess
iteratively the answers as relevant/irrelevant or even giving
him/her the opportunity to specify a degree of relevance (user’s
feedbacks) , the system creates a new query that better captures
the user s needs, hence raising the opportunity to get more
relevant image results.
In this paper, we have focused on CBIR and basic concepts
pertaining to it, as well as Relevance Feedback and its various
mechanisms. An important contribution in this work is a
comparative analysis of CBIR systems using reference feedback:
major models and approaches are discussed in detail from early
heuristic methods to recently optimal learning algorithms, with
more emphasize on their advantages and weaknesses.-Nowadays, Content-Based Image Retrieval (CBIR) is the
mainstay of image retrieval systems. To understand the query
semantics and users expectations so as to communicate faithful
results in terms of accuracy, Relevance Feedback (RF) was
incorporated to CBIR systems. By allowing the user to assess
iteratively the answers as relevant/irrelevant or even giving
him/her the opportunity to specify a degree of relevance (user’s
feedbacks) , the system creates a new query that better captures
the user s needs, hence raising the opportunity to get more
relevant image results.
In this paper, we have focused on CBIR and basic concepts
pertaining to it, as well as Relevance Feedback and its various
mechanisms. An important contribution in this work is a
comparative analysis of CBIR systems using reference feedback:
major models and approaches are discussed in detail from early
heuristic methods to recently optimal learning algorithms, with
more emphasize on their advantages and weaknesses.
(系统自动生成,下载前可以参看下载内容)
下载文件列表
article.pdf
本网站为编程资源及源代码搜集、介绍的搜索网站,版权归原作者所有! 粤ICP备11031372号
1999-2046 搜珍网 All Rights Reserved.