Semantic-oriented 3d shape retrieval using relevance feedback
George Leifman, Ron Meir, Ayellet Tal
In The Visual Computer, 21(8-10), 2005.
Abstract: Shape-based retrieval of 3D models has become an important challenge in computer graphics. Object similarity, however, is a subjective matter, dependent on the human viewer, since objects have semantics and are not mere geometric entities. Relevance feedback aims at addressing the subjectivity of similarity. This paper presents a novel relevance feedback algorithm that is based on supervised as well as unsupervised feature extraction techniques. It also proposes a novel signature for 3D models, the sphere projection. A Web search engine that realizes the signature and the relevance feedback algorithm is presented. We show that the proposed approach produces good results and outperforms previous techniques.
Keyword(s): 3D retrieval, search engine, relevance feedback
@article{Leifman:2005:S3S,
author = {George Leifman and Ron Meir and Ayellet Tal},
title = {Semantic-oriented 3d shape retrieval using relevance feedback},
journal = {The Visual Computer},
volume = {21},
number = {8-10},
pages = {865--875},
year = {2005},
}
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