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浅析公安机关侦查审讯中犯罪嫌疑人的微表情 被引量:4

On the Suspects' Micro-expressions during Interrogation
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摘要 俗语说"出门看天色,进门看脸色",此"色"俗指人类常常表现出的一种细微表情,是人们在不经意间通过一些表情把内心的想法表达给对方的一种行为方式。公安机关在侦查审讯中有效地运用微表情观察技巧,能够在辨认被讯问人员是否有隐藏犯罪行为时起到突破作用,是审讯过程中抓住其最真实心理活动的有效手段。虽然这些信息存在的时间极短,但就是因为这些举动是不经意的,往往会在侦查讯问中起到"四两拨千斤"的奇效,使讯问有针对性、目的性,避免冤假错案,有助于提高审讯工作的效率和效果。 The proverb tells us to look at the weather when you step out and look at men's expressions when you step in. Here, the men's expressions refer to the micro-expressions which human beings often display and a pattern of behavior through which people communicate their innermost thoughts to others unconsciously. The effective observation of "micro-expression" in investigation and interrogation can play a key role in determining whether the suspects have hidden their criminal crimes or not. It is an effective way to help police officers understand the suspects' mental activities during interrogation. Although the micro-expression exists for an instant, the unconsciousness of the expression often skillfully helps the interrogation in an effective way, making the interrogation more specific and purposeful, reducing the possibility of unjust, false and erroneous cases and enhancing the efficiency and effectiveness of interrogation.
作者 胡建伟
机构地区 福建警察学院
出处 《北京警察学院学报》 2014年第1期66-70,共5页 Journal of Beijing Police College
关键词 公安机关 侦查讯问 微表情 实际应用 police agencies investigation and interrogation micro-expression practical application
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  • 10郑淑新.查办经济案件中对违纪嫌疑人谈话的方法与策略之研究[J].经济师,2008(7):70-71. 被引量:1

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