Authors
Bin-Bin Gao, Chao Xing, Chen-Wei Xie, Jianxin Wu, Xin Geng
Publication date
2017/3/30
Journal
IEEE Transactions on Image Processing
Volume
26
Issue
6
Pages
2825-2838
Publisher
IEEE
Description
Convolutional neural networks (ConvNets) have achieved excellent recognition performance in various visual recognition tasks. A large labeled training set is one of the most important factors for its success. However, it is difficult to collect sufficient training images with precise labels in some domains, such as apparent age estimation, head pose estimation, multilabel classification, and semantic segmentation. Fortunately, there is ambiguous information among labels, which makes these tasks different from traditional classification. Based on this observation, we convert the label of each image into a discrete label distribution, and learn the label distribution by minimizing a Kullback-Leibler divergence between the predicted and ground-truth label distributions using deep ConvNets. The proposed deep label distribution learning (DLDL) method effectively utilizes the label ambiguity in both feature learning and …
Total citations
201720182019202020212022202320246344860919711247
Scholar articles
BB Gao, C Xing, CW Xie, J Wu, X Geng - IEEE Transactions on Image Processing, 2017