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首页> 外文期刊>Information Forensics and Security, IEEE Transactions on >Using a Knowledge-Based Approach to Remove Blocking Artifacts in Skin Images for Forensic Analysis
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Using a Knowledge-Based Approach to Remove Blocking Artifacts in Skin Images for Forensic Analysis

机译:使用基于知识的方法去除皮肤图像中的伪影以进行法医分析

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摘要

Identifying individuals in evidence images, where their faces are covered or obstructed, is a challenging task. In the legal case, United States v. Michael Joseph Pepe (2008), Craft and Kong, who served as expert witnesses, used pigmented skin marks to identify a suspect in evidence images. Their expert opinions were challenged, partially because the blocking artifacts generated by the standard JPEG algorithm adversely affect the visibility of the small skin marks. In addition to this case, a huge amount of JPEG-compressed child pornography is posted online every day. Although many methods have been developed to remove blocking artifacts, they are ineffective for our target application. In this paper, a knowledge-based (KB) approach, which simultaneously removes JPEG blocking artifacts, and recovers skin features, is proposed. Given a training set containing both original and compressed skin images, the relationship between original blocks and compressed blocks can be established. This prior information is used to infer the original blocks of compressed evidence images. A Markov-model-based algorithm and a faster one-pass algorithm were developed to make inference, and a block synthesis algorithm was developed to handle the cases where compressed blocks are not contained in the training set. An indexing mechanism was also proposed to deal with large datasets efficiently. Extensive experiments were conducted on images with different characteristics and compression ratios. Both subjective and objective evaluations demonstrated that the KB approach is more effective than other methods. In summary, the KB approach is capable of removing blocking artifacts to recover useful skin features.
机译:在证据图像中识别面部被遮盖或遮挡的个人是一项艰巨的任务。在法律案件中,作为专家证人的美国诉Michael Joseph Pepe(2008),Craft and Kong使用色素沉着的皮肤痕迹来识别证据图像中的嫌疑人。他们的专家意见受到了挑战,部分原因是标准JPEG算法生成的块状伪像会对小皮肤标记的可见性产生不利影响。除了这种情况外,每天都会在线发布大量JPEG压缩的儿童色情内容。尽管已开发出许多方法来消除阻塞伪像,但它们对我们的目标应用程序无效。在本文中,提出了一种基于知识的(KB)方法,该方法可同时消除JPEG块伪像并恢复皮肤特征。给定既包含原始皮肤图像又包含压缩皮肤图像的训练集,则可以建立原始块与压缩块之间的关系。该先验信息用于推断压缩证据图像的原始块。开发了基于马尔可夫模型的算法和更快的单程算法来进行推理,并且开发了块合成算法来处理训练集中不包含压缩块的情况。还提出了一种索引机制来有效地处理大型数据集。对具有不同特征和压缩率的图像进行了广泛的实验。主观和客观评估都表明,知识库方法比其他方法更有效。总而言之,KB方法能够消除阻塞伪像以恢复有用的皮肤特征。

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