題名: Selecting Forensic Features for Robust Source Camera Identification
作者: Hu, Yongjian Jr
Li, Chang-Tsun Jr
Zhou, Changhui Jr
關鍵字: Digital image forensics
camera identification
image feature selection
robust camera classifier
pattern classification
期刊名/會議名稱: 2010 ICS會議
摘要: Statistical image features play an important role in forensic identification. Current source camera identification schemes select image features mainly based on classification accuracy and computational efficiency. For forensic investigation purposes, however, these selection criteria are not enough. Consider most real-world photos may have undergone common image processing due to various reasons, source camera classifiers must have the capability to deal with those processed photos. In this work, we first build a sample camera classifier using a combination of popular image features, and then reveal its deficiency. Based on our experiments, suggestions for the design of robust camera classifiers are given.
日期: 2011-01-21T00:59:49Z
分類:1995年 NCS 全國計算機會議

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