We analyze the special structure of the relevance feedback learning problem, focusing particularly on the effects of image selection by partial relevance on the clustering behavior of feedback examples. We propose a scheme, aspect-based relevance learning, which guarantees that feedback on feature values is accepted only once evidential support that the feedback was intended by the user is sufficiently strong. The scheme additionally allows for natural simulation of the relevance feedback process. By means of simulation we analyze retrieval performance, search regularity and sensitivity to feature errors
We propose a relative relevance feedback method for image retrieval systems. Relevance feedback is a...
The main objective of this work is to study and implement techniques for visual content retrieval us...
Effective retrieval of images from databases can be attained by adopting relevance feedback mechanis...
In this paper we focus on a number of issues regarding special structure in the relevance feedback l...
In this paper we focus on a number of issues regarding special structure in the relevance feedback ...
Relevance feedback is an effective scheme bridging the gap between high-level semantics and low-leve...
High-retrieval precision in content-based image retrieval can be attained by adopting relevance feed...
User Relevance feedback techniques based on learning methods such as Artificial Neural Networks and ...
The increasing availability of large archives of digital images has pushed the need for effective im...
Relevance feedback approaches have been established as an important tool for interactive search, ena...
Abstract. We investigate models for content-based image retrieval with relevance feedback, in partic...
In image retrieval, relevance feedback uses information, obtained interactively from the user, to un...
Relevance feedback methods for content-based image retrieval have shown promise in a variety of imag...
In this paper we address several aspects of the learning problem in content-based image retrieval (C...
Relevance feedback has recently emerged as a solution to the problem of improving the retrieval perf...
We propose a relative relevance feedback method for image retrieval systems. Relevance feedback is a...
The main objective of this work is to study and implement techniques for visual content retrieval us...
Effective retrieval of images from databases can be attained by adopting relevance feedback mechanis...
In this paper we focus on a number of issues regarding special structure in the relevance feedback l...
In this paper we focus on a number of issues regarding special structure in the relevance feedback ...
Relevance feedback is an effective scheme bridging the gap between high-level semantics and low-leve...
High-retrieval precision in content-based image retrieval can be attained by adopting relevance feed...
User Relevance feedback techniques based on learning methods such as Artificial Neural Networks and ...
The increasing availability of large archives of digital images has pushed the need for effective im...
Relevance feedback approaches have been established as an important tool for interactive search, ena...
Abstract. We investigate models for content-based image retrieval with relevance feedback, in partic...
In image retrieval, relevance feedback uses information, obtained interactively from the user, to un...
Relevance feedback methods for content-based image retrieval have shown promise in a variety of imag...
In this paper we address several aspects of the learning problem in content-based image retrieval (C...
Relevance feedback has recently emerged as a solution to the problem of improving the retrieval perf...
We propose a relative relevance feedback method for image retrieval systems. Relevance feedback is a...
The main objective of this work is to study and implement techniques for visual content retrieval us...
Effective retrieval of images from databases can be attained by adopting relevance feedback mechanis...