In this paper, we present a mechanism called the Markov Model Mediator (MMM) to facilitate the effective retrieval for content-based image retrieval (CBIR). Different from the common methods in content-based image retrieval, our stochastic mechanism not only takes into consideration the low-level image content features, but also learns high-level concepts from a set of training data, such as access frequencies and access patterns of the images. The advantage of our proposed mechanism is that it exploits the structured description of visual contents as well as the relative affinity measurements among the images. Consequently, it provides the capability to bridge the gap between the low-level features and high-level concepts. Our experimental...
The growth in size and accessibility of multimedia databases have changed our approach to informatio...
The World Wide Web (WWW) has become one of the fastest growing applications on the Internet today. M...
Content-based image retrieval is still a challenging issue due to the inherent complexity of images ...
Recent research effort in Content-Based Image Retrieval (CBIR) focuses on bridging the gap between l...
In this demonstration, we present an image retrieval system to support multimedia authoring and pres...
Recent progress in high-speed communication networks, large capacity storage devices, digitalized me...
One of the main tasks in content-based image retrieval (CBIR) is to reduce the gap between low-level...
Abstract — Information mining is now emerging term in recent days. This helps the user to gain knowl...
In this paper, we propose a direct image retrieval framework based on Markov Random Fields (MRFs) th...
In this paper a relevance feedback (RF) approach for content based image retrieval (CBIR) is describ...
In this work the problem of content-based information retrieval is approached from a new perspective...
Ongoing expansion of digital images requires newmethods for sorting, browsing, and search-ing throug...
Learning in the form relevance feedback is popular for bridging the semantic gap in content based im...
www.ietdl.orgAbstract: A new relevance feedback (RF) approach for content-based image retrieval is p...
In this paper we address several aspects of the learning problem in content-based image retrieval (C...
The growth in size and accessibility of multimedia databases have changed our approach to informatio...
The World Wide Web (WWW) has become one of the fastest growing applications on the Internet today. M...
Content-based image retrieval is still a challenging issue due to the inherent complexity of images ...
Recent research effort in Content-Based Image Retrieval (CBIR) focuses on bridging the gap between l...
In this demonstration, we present an image retrieval system to support multimedia authoring and pres...
Recent progress in high-speed communication networks, large capacity storage devices, digitalized me...
One of the main tasks in content-based image retrieval (CBIR) is to reduce the gap between low-level...
Abstract — Information mining is now emerging term in recent days. This helps the user to gain knowl...
In this paper, we propose a direct image retrieval framework based on Markov Random Fields (MRFs) th...
In this paper a relevance feedback (RF) approach for content based image retrieval (CBIR) is describ...
In this work the problem of content-based information retrieval is approached from a new perspective...
Ongoing expansion of digital images requires newmethods for sorting, browsing, and search-ing throug...
Learning in the form relevance feedback is popular for bridging the semantic gap in content based im...
www.ietdl.orgAbstract: A new relevance feedback (RF) approach for content-based image retrieval is p...
In this paper we address several aspects of the learning problem in content-based image retrieval (C...
The growth in size and accessibility of multimedia databases have changed our approach to informatio...
The World Wide Web (WWW) has become one of the fastest growing applications on the Internet today. M...
Content-based image retrieval is still a challenging issue due to the inherent complexity of images ...