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Detection of Armed Assailants in Hostage Situations- A Machine Learning based approach

机译:检测人质情况下的武装袭击者 - 基于机器学习的方法

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Innocent persons may be captivated by a criminal abductors and may threaten the person’s employer, government, relatives, etc. To exploit unlawfully for their advantage after expiration of an ultimatum. Abducting people and threatening is a criminal act or act of terrorism. It is important to distinguish the assailants from the hostages. The rescuer has milliseconds to distinguish and any slight mistake in identifying a person might cost the lives of all the innocent hostages in that situation. To help the rescuers with this a model is developed in this research work that can identify if a person is an assailant or the hostage in a hostage situation. The proposed model takes the real time video as input and detects the assailant by making a rectangular bounding box on his/her face. YOLO (You only look once) and OpenPose algorithms are used in the proposed system and both algorithms are object detection systems targeted for real-time processing for both classification and localizing the object using bounding boxes and Heat maps.
机译:无辜的人可能被刑事绑架者迷住,可能会威胁到该人的雇主,政府,亲戚等,以在最终到期后非法剥削他们的优势。绑架人民和威胁是犯罪行为或恐怖主义行为。将攻击者与人质区分开来很重要。救援人员在识别一个人可能会在这种情况下识别一个人可能会花费所有无辜人质的生命来区分和任何轻微错误。为了帮助救援人员在本研究工作中开发了一种模型,可以识别一个人是人质情况的攻击者或人质。所提出的模型将实时视频作为输入,通过在他/她的脸上制作矩形边界盒来检测攻击者。在所提出的系统中使用yolo(您只有一次)和调转算法,并且两种算法是针对分类的实时处理的对象检测系统,并使用边界框和热图定向对象。

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