Sparse Contextual Activation for Efficient Visual Re-Ranking | IEEE Journals & Magazine | IEEE Xplore

Sparse Contextual Activation for Efficient Visual Re-Ranking


Abstract:

In this paper, we propose an extremely efficient algorithm for visual re-ranking. By considering the original pairwise distance in the contextual space, we develop a feat...Show More

Abstract:

In this paper, we propose an extremely efficient algorithm for visual re-ranking. By considering the original pairwise distance in the contextual space, we develop a feature vector called sparse contextual activation (SCA) that encodes the local distribution of an image. Hence, re-ranking task can be simply accomplished by vector comparison under the generalized Jaccard metric, which has its theoretical meaning in the fuzzy set theory. In order to improve the time efficiency of re-ranking procedure, inverted index is successfully introduced to speed up the computation of generalized Jaccard metric. As a result, the average time cost of re-ranking for a certain query can be controlled within 1 ms. Furthermore, inspired by query expansion, we also develop an additional method called local consistency enhancement on the proposed SCA to improve the retrieval performance in an unsupervised manner. On the other hand, the retrieval performance using a single feature may not be satisfactory enough, which inspires us to fuse multiple complementary features for accurate retrieval. Based on SCA, a robust feature fusion algorithm is exploited that also preserves the characteristic of high time efficiency. We assess our proposed method in various visual re-ranking tasks. Experimental results on Princeton shape benchmark (3D object), WM-SRHEC07 (3D competition), YAEL data set B (face), MPEG-7 data set (shape), and Ukbench data set (image) manifest the effectiveness and efficiency of SCA.
Published in: IEEE Transactions on Image Processing ( Volume: 25, Issue: 3, March 2016)
Page(s): 1056 - 1069
Date of Publication: 05 January 2016

ISSN Information:

PubMed ID: 26742133

Funding Agency:

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I. Introduction

Contextual similarity/dissimilarity [1]–[3] has been extensively exploited recently due to its effectiveness in various visual retrieval tasks, such as natural image search, shape retrieval, biological information retrieval, analysis of time series, etc.. Unlike traditional Content-based Image Retrieval (CBIR) systems that consider only pairwise dissimilarity measure for ranking and indexing, the approaches about contextual dissimilarity measure are proposed to explore the contextual information from the database instances, and enhance and refine the dissimilarity measure to improve the retrieval performance, which is usually considered as an unsupervised re-ranking procedure based on the given distance measure.

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