Title :
Ordinal Distance Metric Learning for Image Ranking
Author :
Changsheng Li ; Qingshan Liu ; Jing Liu ; Hanqing Lu
Author_Institution :
IBM Res. - China, Beijing, China
Abstract :
Recently, distance metric learning (DML) has attracted much attention in image retrieval, but most previous methods only work for image classification and clustering tasks. In this brief, we focus on designing ordinal DML algorithms for image ranking tasks, by which the rank levels among the images can be well measured. We first present a linear ordinal Mahalanobis DML model that tries to preserve both the local geometry information and the ordinal relationship of the data. Then, we develop a nonlinear DML method by kernelizing the above model, considering of real-world image data with nonlinear structures. To further improve the ranking performance, we finally derive a multiple kernel DML approach inspired by the idea of multiple-kernel learning that performs different kernel operators on different kinds of image features. Extensive experiments on four benchmarks demonstrate the power of the proposed algorithms against some related state-of-the-art methods.
Keywords :
image processing; learning (artificial intelligence); DML algorithm; image classification; image clustering; image features; image ranking task; image retrieval; kernel operators; linear ordinal Mahalanobis DML model; local geometry information; multiple kernel DML approach; nonlinear DML method; ordinal distance metric learning; Aging; Complexity theory; Face; Geometry; Kernel; Linear programming; Measurement; Distance metric learning (DML); image ranking; local geometry structure; ordinal relationship;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2339100