We introduce a method for image retrieval that leverages the implicit information about object importance conveyed by the list of keyword tags a person supplies for an image. We propose an unsupervised learning procedure based on Kernel Canonical Correlation Analysis that discovers the relationship between how humans tag images (e.g., the order in which words are mentioned) and the relative importance of objects and their layout in the scene. Using this discovered connection, we show how to boost accuracy for novel queries, such that the search results may more closely match the user's mental image of the scene being sought. We evaluate our approach on two datasets, and show clear improvements over both an approach relying on image fea...
Learning in the form relevance feedback is popular for bridging the semantic gap in content based im...
textAn image retrieval system needs to be able to communicate with people using a common language, i...
People perceive any kind of information with different level of attention and involvement. It is due...
We introduce an approach to image retrieval and auto-tagging that leverages the implicit information...
Associating keywords with images automatically is an approachable and useful goal for visual recogni...
The paper addresses how relevance feedback can be used to improve the performance of content-based i...
Users of image retrieval systems often find it frustrating that the image they are looking for is no...
Recent work in the computational modeling of visual attention has demonstrated that a purely bottom-...
We observe that everyday images contain dozens of objects, and that humans, in describing these imag...
Searching for an image in a database is important in different applications; hence, many algorithms ...
In a typical content-based image retrieval (CBIR) system, target images (images in the database) are...
Learning what a specific user is exactly looking for, during a session of image search and retrieval...
Image annotation provides several keywords automatically for a given image based on various tags to ...
User feedback helps an image search system refine its relevance predictions, tailoring the search to...
Users of image retrieval systems often find it frustrating that the image they are looking for is no...
Learning in the form relevance feedback is popular for bridging the semantic gap in content based im...
textAn image retrieval system needs to be able to communicate with people using a common language, i...
People perceive any kind of information with different level of attention and involvement. It is due...
We introduce an approach to image retrieval and auto-tagging that leverages the implicit information...
Associating keywords with images automatically is an approachable and useful goal for visual recogni...
The paper addresses how relevance feedback can be used to improve the performance of content-based i...
Users of image retrieval systems often find it frustrating that the image they are looking for is no...
Recent work in the computational modeling of visual attention has demonstrated that a purely bottom-...
We observe that everyday images contain dozens of objects, and that humans, in describing these imag...
Searching for an image in a database is important in different applications; hence, many algorithms ...
In a typical content-based image retrieval (CBIR) system, target images (images in the database) are...
Learning what a specific user is exactly looking for, during a session of image search and retrieval...
Image annotation provides several keywords automatically for a given image based on various tags to ...
User feedback helps an image search system refine its relevance predictions, tailoring the search to...
Users of image retrieval systems often find it frustrating that the image they are looking for is no...
Learning in the form relevance feedback is popular for bridging the semantic gap in content based im...
textAn image retrieval system needs to be able to communicate with people using a common language, i...
People perceive any kind of information with different level of attention and involvement. It is due...