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Current Forensic Science

Editor-in-Chief

ISSN (Print): 2666-4844
ISSN (Online): 2666-4852

Review Article

Artificial Intelligence: An Advanced Evolution In Forensic and Criminal Investigation

Author(s): Saurav Yadav, Shalini Yadav, Preeti Verma, Smriti Ojha and Sudhanshu Mishra*

Volume 1, 2023

Published on: 11 October, 2022

Article ID: e190822207706 Pages: 8

DOI: 10.2174/2666484401666220819111603

Price: $65

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Abstract

It is aimed, with the use of modern sciences and technologies and also the use of new, latest and future technologies, such as artificial intelligence, to develop enhanced and extended ways to promote the technology for forensics of all its sectors (AI). A program or computer program is capable of carrying out human functions such as visual awareness, voice recognition, cognitive reasoning, strategic thinking, understanding from experiences, and solving complicated issues at a greater rate and with smaller mistake rates than humans. AI is also the most developing sector for advances in the field of forensics and the system of justice. In today's situation, specialists are faced with numerous problems because of enormous quantities of data, minute facts in the chaotic and complex environment, traditional lab architecture, and sometimes inadequate information, which might fail to do an inquiry or a miscarriage of justice. AI is a waffle to combat the difficulties of machine learning and profound learning. Case-based reasoning for error-free and objective outcomes in many forensic areas, neural networks, and reproductive results. The study discusses AI's current and potential future uses in forensic science. Artificial intelligence may be used in a variety of applications, including blood pattern recognition and analysis, crime scene reconstruction, digital forensics, image processing, and, of course, satellite monitoring.

Keywords: Artificial Intelligence, Machine Learning, Deep Learning, Forensics, Criminal Investigation.

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