A Binary Relevance Adaptive Model-Selection for Ensemble Steganalysis
Title | A Binary Relevance Adaptive Model-Selection for Ensemble Steganalysis |
Publication Type | Conference Paper |
Year of Publication | 2020 |
Authors | Abazar, T., Masjedi, P., Taheri, M. |
Conference Name | 2020 17th International ISC Conference on Information Security and Cryptology (ISCISC) |
Date Published | Sept. 2020 |
Publisher | IEEE |
ISBN Number | 978-1-7281-8569-9 |
Keywords | adaptive filtering, Binary Relevance, Cognition, Ensemble, feature extraction, FLD, Gabor filters, Information security, Labeling, Metrics, Model-Selection, pubcrawl, resilience, Resiliency, Scalability, steganalysis, Task Analysis, Training |
Abstract | Steganalysis is an interesting classification problem in order to discriminate the images, including hidden messages from the clean ones. There are many methods, including deep CNN networks to extract fine features for this classification task. Nevertheless, a few researches have been conducted to improve the final classifier. Some state-of-the-art methods try to ensemble the networks by a voting strategy to achieve more stable performance. In this paper, a selection phase is proposed to filter improper networks before any voting. This filtering is done by a binary relevance multi-label classification approach. The Logistic Regression (LR) is chosen here as the last layer of network for classification. The large-margin Fisher's linear discriminant (FLD) classifier is assigned to each one of the networks. It learns to discriminate the training instances which associated network is suitable for or not. Xu-Net, one of the most famous state-of-the-art Steganalysis models, is chosen as the base networks. The proposed method with different approaches is applied on the BOSSbase dataset and is compared with traditional voting and also some state-of-the-art related ensemble techniques. The results show significant accuracy improvement of the proposed method in comparison with others. |
URL | https://ieeexplore.ieee.org/document/9261910 |
DOI | 10.1109/ISCISC51277.2020.9261910 |
Citation Key | abazar_binary_2020 |