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JACIII Vol.14 No.4 pp. 390-395
doi: 10.20965/jaciii.2010.p0390
(2010)

Paper:

Web-Based Intelligent Photograph Management System Enhancing Browsing Experience

Yuki Orii, Takayuki Nozawa, and Toshiyuki Kondo

Tokyo University of Agriculture and Technology, 2-24-16 Naka-cho, Koganei-shi, Tokyo 184-8588, Japan

Received:
December 7, 2009
Accepted:
March 8, 2010
Published:
May 20, 2010
Keywords:
photograph management system, photograph browsing system, clustering method
Abstract

We developed a web-based intelligent photograph browsing system that enables automatic clustering of unstructured digital photograph collection. We conducted a user study to assess the effectiveness of developed photograph browsing system em APC and APCCT). The user task adopted here was finding some target photographs indicated by the experimenter. The results suggest that the clustering method of the photograph browsing systems should be changed according to whether or not the photographs had been taken by the user.

Cite this article as:
Yuki Orii, Takayuki Nozawa, and Toshiyuki Kondo, “Web-Based Intelligent Photograph Management System Enhancing Browsing Experience,” J. Adv. Comput. Intell. Intell. Inform., Vol.14, No.4, pp. 390-395, 2010.
Data files:
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