Abstract
Content-based image retrieval (CBIR) has attracted much attention during the past decades for its potential practical applications to image database management. A variety of relevance feedback (RF) schemes have been designed to bridge the gap between low-level visual features and high-level semantic concepts for an image retrieval task. In the process of RF, it would be impractical or too expensive to provide explicit class label information for each image. Instead, similar or dissimilar pairwise constraints between two images can be acquired more easily. However, most of the conventional RF approaches can only deal with training images with explicit class label information. In this paper, we propose a novel discriminative semantic subspace analysis (DSSA) method, which can directly learn a semantic subspace from similar and dissimilar pairwise constraints without using any explicit class label information. In particular, DSSA can effectively integrate the local geometry of labeled similar images, the discriminative information between labeled similar and dissimilar images, and the local geometry of labeled and unlabeled images together to learn a reliable subspace. Compared with the popular distance metric analysis approaches, our method can also learn a distance metric but perform more effectively when dealing with high-dimensional images. Extensive experiments on both the synthetic data sets and a real-world image database demonstrate the effectiveness of the proposed scheme in improving the performance of the CBIR.
Highlights
C ONTENT-based image retrieval (CBIR) has attracted much attention during the past decades [1], [2], [3], [4], [5]
We propose a novel discriminative semantic subspace analysis (DSSA) method to bridge the gap between low-level visual features and high-level semantic concepts by exploiting the training images with pairwise constraints in Relevance feedback (RF)
DSSA can effectively integrate the local geometry of labeled similar images, the discriminative information between labeled similar and dissimilar images, and the local geometry of unlabeled images together to learn a reliable subspace
Summary
C ONTENT-based image retrieval (CBIR) has attracted much attention during the past decades [1], [2], [3], [4], [5]. In RF, it is not appropriate to directly measure the similarity between two images based on the Euclidean distance metric in a high-dimensional multiple semantic concept space (e.g., color, texture and shape) due to the semantic gap. It is more attractive to learn a semantic concept subspace directly from the similar and dissimilar pairwise constraints without using the explicit image class label information. We propose a novel discriminative semantic subspace analysis (DSSA) method to bridge the gap between low-level visual features and high-level semantic concepts by exploiting the training images with pairwise constraints in RF. The proposed DSSA method can effectively learn a reliable subspace both from labeled and unlabeled images with similar and dissimilar pairwise constraints without using any explicit class label information.
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