Article ID Journal Published Year Pages File Type
392028 Information Sciences 2015 14 Pages PDF
Abstract

In recent times, multi-view representation of the 3D model has led to extensive research in view-based methods for 3D model retrieval. However, most approaches focus on feature extraction from 2D images while ignoring the spatial information of the 3D model. In order to improve the effectiveness of view-based methods on 3D model retrieval, this paper proposes a novel method for characteristic view extraction and similarity measurement. First, the graph clustering method is used for view grouping and the random-walk algorithm is applied to adaptively update the weight of each view. The spatial information of the 3D object is utilized to construct a view-graph model, thus enabling each characteristic view to represent the discriminative visual feature in terms of specific spatial context. Next, by considering the view set as a graph model, the similarity measurement of two models can be converted into a graph matching problem. This problem is solved by mathematically formulating it as a Rayleigh quotient maximization with affinity constraints for similarity measurement. Extensive comparison experiments were conducted on the popular ETH, NTU, PSB, and MV-RED 3D model datasets. The results demonstrate the superiority of the proposed method.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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