Applying relevance feedback to a photo archival system

Abstract
Relevance feedback techniques have been success fully applied to document retrieval systems (DRS) to refine queries and document representations. This paper represents a first attempt to apply and optimise relevance feedback techniques to improve retrieval in a text-based image archival system. The design exploits the rapid assessment possible with image data to facilitate query refinement and collect large amounts of relevance feedback data This data can then be used to extend incomplete image descriptions, thus ameliorat ing problems associated with text annotation of images. Visu ally oriented relevance feedback and query modification is implemented using direct mampulation of icons. An algorithm designed for dynamic modification of image descriptions based on relevance feedback is proposed, implemented, and experi mentally tested. Initial experiments show significant improve ments and demonstrate the potential of using these tech niques for image retrieval applications.

This publication has 8 references indexed in Scilit: