Query formulation and efficient navigation through data to reach relevant results are undoubtedly major challenges for image or video retrieval. Queries of good quality are typically not available and the search process needs to rely on relevance feedback given by the user, which makes the search process iterative. Giving explicit relevance feedback is laborious, not always easy, and may even be impossible in ubiquitous computing scenarios. A central question then is: Is it possible to replace or complement scarce explicit feedback with implicit feedback inferred from various sensors not specifically designed for the task? In this paper, we present preliminary results on inferring the relevance of images based on implicit feedback about use...
Objective. Methods from brain–computer interfacing (BCI) open a direct access to the mental processe...
Users react differently to non-relevant and relevant tags associated with content. These spontaneous...
Satisfying a user's actual underlying needs in the image retrieval process is a difficult challenge ...
Searching for images from a large collection is a difficult task for automated algorithms. Many curr...
In order to help users navigate an image search system, one could provide explicit information on a ...
This report presents a literature survey conducted to review the current state of the art in researc...
This report considers the task of inferring implicit relevance feedback from eye movements in image ...
Abstract. Our goal in this study was to explore the potentials of extracting features from eye-track...
This thesis studies interfaces for browsing and searching for images. A novel gaze-based interface ...
This paper investigates the role of gaze movements as implicit user feedback during interactive vide...
We study whether it is possible to infer from eye movements measured during reading what is relevant...
Abstract—In this paper, a gaze-based Relevance Feedback (RF) approach to region-based image retrieva...
In order to help users navigate an image search system, one could provide explicit rank information ...
International audienceThe major method for evaluating Information Retrieval systems still relies now...
This report explores the possible solutions for image annotation and retrieval by implicitly monitor...
Objective. Methods from brain–computer interfacing (BCI) open a direct access to the mental processe...
Users react differently to non-relevant and relevant tags associated with content. These spontaneous...
Satisfying a user's actual underlying needs in the image retrieval process is a difficult challenge ...
Searching for images from a large collection is a difficult task for automated algorithms. Many curr...
In order to help users navigate an image search system, one could provide explicit information on a ...
This report presents a literature survey conducted to review the current state of the art in researc...
This report considers the task of inferring implicit relevance feedback from eye movements in image ...
Abstract. Our goal in this study was to explore the potentials of extracting features from eye-track...
This thesis studies interfaces for browsing and searching for images. A novel gaze-based interface ...
This paper investigates the role of gaze movements as implicit user feedback during interactive vide...
We study whether it is possible to infer from eye movements measured during reading what is relevant...
Abstract—In this paper, a gaze-based Relevance Feedback (RF) approach to region-based image retrieva...
In order to help users navigate an image search system, one could provide explicit rank information ...
International audienceThe major method for evaluating Information Retrieval systems still relies now...
This report explores the possible solutions for image annotation and retrieval by implicitly monitor...
Objective. Methods from brain–computer interfacing (BCI) open a direct access to the mental processe...
Users react differently to non-relevant and relevant tags associated with content. These spontaneous...
Satisfying a user's actual underlying needs in the image retrieval process is a difficult challenge ...