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CMU-CS-04-169
Computer Science Department
School of Computer Science, Carnegie Mellon University
CMU-CS-04-169
User-Powered "Content-Free" Approach to Image Retrieval
Takeo Kanade, Shingo Uchihashi
October 2004
CMU-CS-04-169.ps
CMU-CS-04-169.pdf
Keywords: Image retrieval, collaborative computing, information
filtering
Consider a stereotypical image-retrieval problem; a user submits a set
of query images to a system and through repeated interactions during
which the system presents its current choices and the user gives
his/her preferences to them, the choices are narrowed to the image(s)
that satisfies the user. The problem obviously must deal with image
content, i.e., interpretation and preference. For this purpose,
conventional so-called content-based image retrieval (CBIR) approach
uses image-processing and computer-vision techniques, and tries to
understand the image content. Such attempts have produced good but
limited success, mainly be-cause image interpretation is a highly
complicated perceptive process. We propose a new approach to this
problem from a totally different angle. It attempts to exploit the
human s perceptual capabilities and certain common, if not identical,
tendencies that must exist among people s interpretation and
preference of images. Instead of processing images, the system simply
accumulates records of user feedback and recycles them in the form
of collaborative filtering, just like a purchase recommendation system
such as Amazon.com. To emphasize the point that it does not deal with
image pixel information, we dub the approach by a term content-free
image retrieval (CFIR). We discuss various issues of image retrieval,
argue for the idea of CFIR, and present results of preliminary experiment.
The results indicate that the performance of CFIR improves with the
number of accumulated feedbacks, outperforming a basic but typical
conventional CBIR system.
16 pages
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