

In large-scale camera networks, label information for person re-identification is usually not available under a large amount of cameras due to expensive human labor efforts. The proposed S2MAID is verified and the experimental result shows that the proposed S2MAID has a better classification performance. Finally, the experiment is carried out on imbalanced data with containing only a few labeled samples, and semi-supervised learning process is simulated. Fourthly, an ensemble technology is used to generate a strong classifier. Thirdly, a kind of over sampling algorithm SMOTE-density is provided to make the imbalanced data set become balance set. Secondly, a safe supervised-learning method is used to mark unlabeled sample and expand the labeled sample.

Firstly, a kind of under sampling algorithm UD-density is provided to select samples with high information content from majority class set for semi-supervised learning.

In order to improve the classification performance of this kind of problem, this paper proposes a semi-supervised learning algorithm based on mixed sampling for imbalanced data classification (S2MAID), which combines semi-supervised learning, over sampling, under sampling and ensemble learning. In practical application, there are a large amount of imbalanced data containing only a small number of labeled data.
