Treffer: A Clustering-Based Framework for Improving the Performance of JPEG Quantization Step Estimation.

Title:
A Clustering-Based Framework for Improving the Performance of JPEG Quantization Step Estimation.
Authors:
Yang, Jianquan1 jq.yang@siat.ac.cn, Zhang, Yulan1 yl.zhang@siat.ac.cn, Zhu, Guopu1 gp.zhu@siat.ac.cn, Kwong, Sam2 cssamk@cityu.edu.hk
Source:
IEEE Transactions on Circuits & Systems for Video Technology. Apr2021, Vol. 31 Issue 4, p1661-1672. 12p.
Database:
Business Source Premier

Weitere Informationen

Quantization plays a pivotal role in JPEG compression with respect to the tradeoff between image fidelity and storage size, and the blind estimation of quantization parameters has attracted considerable interest in the fields of image steganalysis and forensics. Existing estimation methods have made great progress, but they usually suffer a sharp decline in accuracy when addressing small-size JPEG decompressed bitmaps due to the insufficiency of coefficients. Aiming to alleviate this issue, this paper proposes a generic clustering-based framework to improve the performance of the existing methods. The core idea is to gather as many coefficients as possible by clustering subbands before feeding them into a step estimator. The proposed framework is implemented using hierarchical clustering with two kinds of histogram-like features. Extensive experiments are conducted to validate the effectiveness of the proposed framework on a variety of images of different sizes and quality factors, and the results show that notable improvements can be achieved. In addition to quantization step estimation, we believe the idea behind the proposed framework might provide inspiration for other forensic tasks to alleviate their performance issues induced by sample insufficiency. [ABSTRACT FROM AUTHOR]

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