Title :
Learning sparse latent representation and distance metric for image retrieval
Author :
Tu Dinh Nguyen ; Truyen Tran ; Dinh Phung ; Venkatesh, Svetha
Author_Institution :
Center for Pattern Recognition & Data Analytics, Deakin Univ., Geelong, VIC, Australia
Abstract :
The performance of image retrieval depends critically on the semantic representation and the distance function used to estimate the similarity of two images. A good representation should integrate multiple visual and textual (e.g., tag) features and offer a step closer to the true semantics of interest (e.g., concepts). As the distance function operates on the representation, they are interdependent, and thus should be addressed at the same time. We propose a probabilistic solution to learn both the representation from multiple feature types and modalities and the distance metric from data. The learning is regularised so that the learned representation and information-theoretic metric will (i) preserve the regularities of the visual/textual spaces, (ii) enhance structured sparsity, (iii) encourage small intra-concept distances, and (iv) keep inter-concept images separated. We demonstrate the capacity of our method on the NUS-WIDE data. For the well-studied 13 animal subset, our method outperforms state-of-the-art rivals. On the subset of single-concept images, we gain 79:5% improvement over the standard nearest neighbours approach on the MAP score, and 45.7% on the NDCG.
Keywords :
image representation; image retrieval; learning (artificial intelligence); probability; NUS-WIDE data; animal subset; distance function; distance metric; image retrieval; image similarity estimation; information-theoretic metric; inter-concept image separation; metric learning; probabilistic solution; semantic representation; single-concept image subset; small intra-concept distances; sparse latent representation; structured sparsity enhancement; textual features; textual space regularity preservation; visual features; visual space regularity preservation; Abstracts; Australia; Rabbits; Whales; Image retrieval; Mixed-Variate; NUS-WIDE; Restricted Boltzmann Machines; metric learning; sparsity;
Conference_Titel :
Multimedia and Expo (ICME), 2013 IEEE International Conference on
Conference_Location :
San Jose, CA
DOI :
10.1109/ICME.2013.6607435