National Natural Science Foundation of China (No.61502105);Fujian Province Science and Technology Plan Guiding Project (No.2017H0015);Young and Middle-aged Teachers Education Research Project of Education Department of Fujian Province (No.JA15075)
KE Xiao, ZOU Jia-wei, DU Ming-zhi, et al. The Automatic Image Annotation Based on Monte-Carlo Data Set Balance and Robustness Incremental Extreme Learning Machine[J]. Acta Electronica Sinica, 2017, 45(12): 2925-2935.
DOI:
KE Xiao, ZOU Jia-wei, DU Ming-zhi, et al. The Automatic Image Annotation Based on Monte-Carlo Data Set Balance and Robustness Incremental Extreme Learning Machine[J]. Acta Electronica Sinica, 2017, 45(12): 2925-2935. DOI: 10.3969/j.issn.0372-2112.2017.12.014.
The Automatic Image Annotation Based on Monte-Carlo Data Set Balance and Robustness Incremental Extreme Learning Machine
Aiming at the problem that the traditional image annotation model has long training time
sensitive to low-frequency words and other issues
this paper proposes a new automatic image annotation method based on Monte-Carlo dataset balance and robustness incremental extreme learning machine. First of all
training images of the public image library are segmented into different areas by this model and corresponding seed markup words are selected after segmentation
the areas are matched automatically based on comprehensive distance algorithm and the different keywords represent different areas. Then
for the huge difference of different annotated words' sizes in the public database
the Monte Carlo data set equalization algorithm is proposed to make the data size of each annotated word much the same. And a multi-scale feature fusion algorithm is proposed to extract effective features from different annotated images. Finally
the robustness incremental limit learning is proposed to improve the accuracy of the discriminant model for the problems of the consistency of the hidden layer nodes and the input vector weights existing in the traditional limit learning machine. The experimental results show that:compared with traditional algorithms of image automatic annotation
the methods proposed in this paper can implement the automatic image annotation quickly
and it is robust to low frequency words
and it is higher than most popular models of automatic image annotation in terms of average recall rate