RETIN |
An Interactive Content-Based Image Retrieval SystemContent-Based Image Retrieval (CBIR) systems have attracted large amounts of research attention since 1990's. Contrary to the early systems, focused on full-automatic strategies, recent approaches introduce human-computer interaction into CBIR. RETIN is the on-line image search system developed in the ETIS lab (ENSEA, France). A web version of the software is available (beta version)!
![]() RETIN: how to The search engine will return the images it thinks are most relevant, together with a number of images that might be used to improve the search. ![]() RETIN: how to We believe that combining rich image description with learning techniques may provide good solutions for image retrieval tasks. We focused on user interaction systems because it is a natural way to get examples for learning (what the user is looking for). Our RETIN system adapts machine learning techniques and statistical modeling to CBIR. Relevance feedback is modeled as a binary classification. Kernel functions and kernel-based reduction and classification techniques are used. RETIN is designed to grasp a user's query concept quickly despite time and sample constraints. Active learning framework is proposed to optimize this user interaction. See our publications for detailed explanations.
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