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    EFFICIENT MANIFOLD LEARNING FOR 3D MODEL RETRIEVAL BY USING CLUSTERING-BASED TRAINING SAMPLE REDUCTION

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    Retrieval accuracy in content-based multimedia retrieval can be improved by using distance metric learned from distribution of features in input feature space. One way to achieve this is by dimension reduction via manifold-learning, such as Locally Linear Embedding [8]. While effective in improving retrieval accuracy, these algorithms have high computational cost that depends on feature dimensionality d and number of training samples N. In this paper, we explore a clustering-based approach to reduce number of training samples; it uses L cluster centers (L<<N) computed from N input features as training samples. We propose to use extremely randomized clustering tree [3] for clustering. Experiments showed that the proposed approach produces better retrieval performance than random sampling, and that the randomized tree is much faster than the k-means algorithm. Index Terms β€” Content-based 3D model retrieval, distance metric learning, manifold learning, randomized tree clustering. 1
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