logo
banner

Journals & Publications

Journals Publications Papers

Papers

Joint Hierarchical Category Structure Learning and Large-Scale Image Classification
Oct 21, 2017Author:
PrintText Size A A

Title: Joint Hierarchical Category Structure Learning and Large-Scale Image Classification

 Authors: Qu, YY; Lin, L; Shen, FM; Lu, C; Wu, Y; Xie, Y; Tao, DC

 Author Full Names: Qu, Yanyun; Lin, Li; Shen, Fumin; Lu, Chang; Wu, Yang; Xie, Yuan; Tao, Dacheng

 Source: IEEE TRANSACTIONS ON IMAGE PROCESSING, 26 (9):4331-4346; 10.1109/TIP.2016.2615423 SEP 2017

 Language: English

 Abstract: We investigate the scalable image classification problem with a large number of categories. Hierarchical visual data structures are helpful for improving the efficiency and performance of large-scale multi-class classification. We propose a novel image classification method based on learning hierarchical inter-class structures. Specifically, we first design a fast algorithm to compute the similarity metric between categories, based on which a visual tree is constructed by hierarchical spectral clustering. Using the learned visual tree, a test sample label is efficiently predicted by searching for the best path over the entire tree. The proposed method is extensively evaluated on the ILSVRC2010 and Caltech 256 benchmark datasets. The experimental results show that our method obtains significantly better category hierarchies than other state-of-the-art visual treebased methods and, therefore, much more accurate classification.

 ISSN: 1057-7149

 eISSN: 1941-0042

 IDS Number: FA4EF

 Unique ID: WOS:000405395900007

*Click Here to View Full Record