TY - JOUR
T1 - On the design and exploitation of user's personal and public information for semantic personal digital photograph annotation
AU - Sarin, Supheakmungkol
AU - Nagahashi, Toshinori
AU - Miyosawa, Tadashi
AU - Kameyama, Wataru
PY - 2008
Y1 - 2008
N2 - Automating the process of semantic annotation of digital personal photographs is a crucial step towards efficient and effective management of this increasingly high volume of content. However, this is still a highly challenging task for the research community. This paper proposes a novel solution. Our solution integrates all contextual information available to and from the users, such as their daily emails, schedules, chat archives, web browsing histories, documents, online news, Wikipedia data, and so forth. We then analyze this information and extract important semantic terms, using them as semantic keyword suggestions for their photos. Those keywords are in the form of named entities, such as names of people, organizations, locations, and date/time as well as high frequency terms. Experiments conducted with 10 subjects and a total of 313 photos proved that our proposed approach can significantly help users with the annotation process. We achieved a 33 gain in annotation time as compared to manual annotation. We also obtained very positive results in the accuracy rate of our suggested keywords.
AB - Automating the process of semantic annotation of digital personal photographs is a crucial step towards efficient and effective management of this increasingly high volume of content. However, this is still a highly challenging task for the research community. This paper proposes a novel solution. Our solution integrates all contextual information available to and from the users, such as their daily emails, schedules, chat archives, web browsing histories, documents, online news, Wikipedia data, and so forth. We then analyze this information and extract important semantic terms, using them as semantic keyword suggestions for their photos. Those keywords are in the form of named entities, such as names of people, organizations, locations, and date/time as well as high frequency terms. Experiments conducted with 10 subjects and a total of 313 photos proved that our proposed approach can significantly help users with the annotation process. We achieved a 33 gain in annotation time as compared to manual annotation. We also obtained very positive results in the accuracy rate of our suggested keywords.
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U2 - 10.1155/2008/592690
DO - 10.1155/2008/592690
M3 - Article
AN - SCOPUS:47649086912
SN - 1687-5680
VL - 2008
JO - Advances in Multimedia
JF - Advances in Multimedia
M1 - 592690
ER -