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Chapter 8 Forensic Reasoning upon Pre-Obtained Surveillance Metadata Using Uncertain Spatio-Temporal Rules and Subjective Logic

机译:第8章使用不确定的时空规则和主观逻辑预先获得监视元数据的法医推理

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摘要

This chapter presents an approach to modeling uncertain contextual rules using subjective logic for forensic visual surveillance. Unlike traditional real-time visual surveillance, forensic analysis of visual surveillance data requires mating of high level contextual cues with observed evidential metadata where both the specification of the context and the metadata suffer from uncertainties. To address this aspect, there has been work on the use of declarative logic formalisms to represent and reason about contextual knowledge, and on the use of different uncertainty handling formalisms. In such approaches, uncertainty attachment to logical rules and facts are crucial. However, there are often cases that the truth value of rule itself is also uncertain thereby, uncertainty attachment to rule itself should be rather functional. The more X then the more Y type of knowledge is one of the examples. To enable such type of rule modeling, in this chapter, we propose a reputational subjective opinion function upon logic programming, which is similar to fuzzy membership function but can also take into account uncertainty of membership value itself. Then we further adopt subjective logic's fusion operator to accumulate the acquired opinions over time. To verify our approach, we present a preliminary experimental case study on reasoning likelihood of being a good witness that uses metadata extracted by a person tracker and evaluates the relationship between the tracked persons. The case study is further extended to demonstrate more complex forensic reasoning by considering additional contextual rules.
机译:本章介绍了一种使用主体逻辑建模不确定的上下文规则,以进行法医视觉监视。与传统的实时视觉监控不同,视觉监控数据的法医分析需要使用观察到的证据元数据交配,其中上下文的规范和元数据患有不确定性。为了解决这个方面,已经有助于使用声明性逻辑形式主义来代表和对语境知识的原因,以及使用不同的不确定性处理形式主义。在这种方法中,对逻辑规则和事实的不确定性依恋至关重要。然而,通常存在规则本身的真实值也不确定,因此不确定地附着到规则本身应该是相当稳定的。 x越多,越多的知识就是一个例子。为了使此类规则建模类型,在本章中,我们提出了在逻辑编程时提出了声誉主观意见函数,这类似于模糊会员函数,但也可以考虑成员价值本身的不确定性。然后我们进一步采用主观逻辑的融合运营商随着时间的推移累积获得的意见。为了验证我们的方法,我们提出了一个初步的实验案例,了解是一种使用人跟踪器提取的元数据并评估跟踪人员之间关系的良好证人的初步实验案例研究。案例研究进一步扩展到通过考虑额外的上下文规则来展示更复杂的法医原理。

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