Shah Neil, Bhagat Nandish, Shah Manan
Department of Computer Engineering, Sal Institute of Technology and Engineering Research, Ahmedabad, Gujarat, 380060, India.
Department of Chemical Engineering, School of Technology, Pandit Deendayal Energy University, Gandhinagar, Gujarat, 382426, India.
Vis Comput Ind Biomed Art. 2021 Apr 29;4(1):9. doi: 10.1186/s42492-021-00075-z.
A crime is a deliberate act that can cause physical or psychological harm, as well as property damage or loss, and can lead to punishment by a state or other authority according to the severity of the crime. The number and forms of criminal activities are increasing at an alarming rate, forcing agencies to develop efficient methods to take preventive measures. In the current scenario of rapidly increasing crime, traditional crime-solving techniques are unable to deliver results, being slow paced and less efficient. Thus, if we can come up with ways to predict crime, in detail, before it occurs, or come up with a "machine" that can assist police officers, it would lift the burden of police and help in preventing crimes. To achieve this, we suggest including machine learning (ML) and computer vision algorithms and techniques. In this paper, we describe the results of certain cases where such approaches were used, and which motivated us to pursue further research in this field. The main reason for the change in crime detection and prevention lies in the before and after statistical observations of the authorities using such techniques. The sole purpose of this study is to determine how a combination of ML and computer vision can be used by law agencies or authorities to detect, prevent, and solve crimes at a much more accurate and faster rate. In summary, ML and computer vision techniques can bring about an evolution in law agencies.
犯罪是一种蓄意行为,会造成身体或心理伤害,以及财产损害或损失,并可根据犯罪的严重程度导致国家或其他权威机构的惩罚。犯罪活动的数量和形式正以惊人的速度增长,迫使各机构开发有效的预防措施方法。在当前犯罪迅速增加的情况下,传统的破案技术由于节奏缓慢且效率较低而无法取得成效。因此,如果我们能够想出在犯罪发生前详细预测犯罪的方法,或者想出一种能够协助警察的“机器”,这将减轻警方的负担并有助于预防犯罪。为了实现这一目标,我们建议纳入机器学习(ML)和计算机视觉算法及技术。在本文中,我们描述了使用此类方法的某些案例的结果,这些案例促使我们在该领域进行进一步研究。犯罪侦查与预防发生变化的主要原因在于当局使用此类技术前后的统计观察结果。本研究的唯一目的是确定执法机构或当局如何能够使用机器学习和计算机视觉的组合,以更准确、更快的速度侦查、预防和解决犯罪。总之,机器学习和计算机视觉技术能够给执法机构带来一场变革。