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Title Empirical Evaluation of Dissimilarity Measures for 3D Object Retrieval with Application to Multi-feature Retrieval
Authors Robert Gregor, Andreas Lamprecht, Ivan Sipiran (alum), Tobias Schreck, Benjamin Bustos
Publication date 2015
Abstract A common approach for implementing content-based
multimedia retrieval tasks resorts to extracting high-dimensional feature
vectors from the multimedia objects. In combination with an appropriate
dissimilarity function, such as the well-known Lp functions or statistical
measures like chi-square, one can rank objects by dissimilarity with respect
to a query. For many multimedia retrieval problems, a large number of
feature extraction methods have been proposed and experimentally evaluated
for their effectiveness. Much less work has been done to systematically
study the impact of the choice of dissimilarity function on the retrieval
effectiveness.
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Inspired by previous work which compared dissimilarity functions for image
retrieval, we provide an extensive comparison of dissimilarity measures for
3D object retrieval. Our study is based on an encompassing set of feature
extractors, dissimilarity measures and benchmark data sets. We identify the
best performing dissimilarity measures and in turn identify dependencies
between well-performing dissimilarity measures and types of 3D features.
Based on these findings, we show that the effectiveness of 3D retrieval can
be improved by a feature-dependent measure choice. In addition, we apply
different normalization schemes to the dissimilarity distributions in order
to show improved retrieval effectiveness for late fusion of multi-feature
combination. Finally, we present preliminary findings on the correlation of
rankings for dissimilarity measures, which could be exploited for further
improvement of retrieval effectiveness for single features as well as
combinations.
Pages 1-6
Conference name International Workshop on Content-Based Multimedia Indexing
Publisher IEEE Press (Piscataway, NJ, USA)
Reference URL View reference page