Situation-based ontologies for a computational framework for identity focusing on crime scenes

Marguerite McDaniel, Emma Sloan, Siobahn C. Day, James Mayes, A. Esterline, K. Roy, William Nick
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引用次数: 12

Abstract

We are interested in how evidence in a case fits together to support a judgment about the identity of an agent. We present a computational framework that extends to the cyber world although our current work focuses on physical evidence from a crime scene. We take Barwise's situation theory as a foundation. Situations support items of information and, by virtue of constraints, some carry information about other situations. In particular, an utterance situation carries information about a described situation. We provide an account of the support for an identity judgment (in an utterance situation called an id-situation) that looks at building a case (called an id-case), like a legal case, since identity cases can lead to multiple situations that impact the value of our evidence. We have developed a novel situation ontology on which we built an id-situation ontology. To capture our current focus, we developed a physical biometrics ontology, a law enforcement ontology, and several supporting stubs. We show how a case can be encoded in the RDF in conformance with our ontologies. We complement our id-situation ontology with SWRL rules to infer the agent in a crime scene and to classify situations and id-cases. Combining possibly conflicting evidence is handled with Dempster-Shafer theory, as reported elsewhere.
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以犯罪现场为重点的身份计算框架的基于情境的本体
我们感兴趣的是,一个案件中的证据如何组合在一起,以支持对代理人身份的判断。我们提出了一个扩展到网络世界的计算框架,尽管我们目前的工作主要集中在犯罪现场的物证上。我们以Barwise的情境理论为基础。情景支持信息项,并且由于约束,一些情景携带有关其他情景的信息。具体来说,话语情境包含了所描述情境的信息。我们提供了对身份判断(在称为id-situation的话语情况下)的支持的说明,该判断着眼于建立一个案件(称为id-case),就像一个法律案件一样,因为身份案件可能导致影响我们证据价值的多种情况。我们开发了一种新的情境本体,在此基础上我们建立了一个id-情境本体。为了抓住当前的重点,我们开发了一个物理生物识别本体、一个执法本体和几个支持存根。我们将展示如何按照我们的本体在RDF中编码用例。我们用SWRL规则来补充我们的id-situation本体,以推断犯罪现场中的主体,并对情境和id-case进行分类。结合可能相互矛盾的证据是用Dempster-Shafer理论处理的,正如其他地方报道的那样。
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