Ansari | Machine Learning in Forensic Evidence Examination | Buch | 978-1-032-58236-8 | sack.de

Buch, Englisch, 250 Seiten, Format (B × H): 156 mm x 234 mm

Ansari

Machine Learning in Forensic Evidence Examination

A New Era
1. Auflage 2025
ISBN: 978-1-032-58236-8
Verlag: Taylor & Francis Ltd

A New Era

Buch, Englisch, 250 Seiten, Format (B × H): 156 mm x 234 mm

ISBN: 978-1-032-58236-8
Verlag: Taylor & Francis Ltd


The availability of machine learning algorithms, and the immense computational power required to develop robust models with high accuracy, has driven researchers to conduct extensive studies in forensic science, particularly in the identification and examination of evidence found at crime scenes. Machine Learning in Forensic Evidence Examination discusses methodologies for the application of machine learning to the field of forensic science.

Evidence analysis is the cornerstone of forensic investigations, examined for either classification or individualization based on distinct characteristics. Artificial intelligence offers a powerful advantage by efficiently processing large datasets with multiple features, enhancing accuracy and speed in forensic analysis to potentially mitigate human errors. Algorithms have the potential to identify patterns and features in evidence such as firearms, explosives, trace evidences, narcotics, body fluids, etc. and catalogue them in various databases. Additionally, they can be useful in reconstruction and detection of complex events, such as accidents and crimes, both during and after the event. This book provides readers with consolidated research data on the potential applications and use of machine learning for analyzing various types of evidence. Chapters focus on different methodologies of machine learning applied in different domains of forensic sciences such as biology, serology, physical sciences, fingerprints, trace evidences, ballistics, anthropology, odontology, digital forensics, chemistry and toxicology, as well as the potential use of big data analytics in forensics. Exploring recent advancements in machine learning, coverage also addresses the challenges faced by experts during routine examinations and how machine learning can help overcome these challenges.

Machine Learning in Forensic Evidence Examination is a valuable resource for academics, forensic scientists, legal professionals and those working on investigations and analysis within law enforcement agencies.

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Zielgruppe


Professional Practice & Development and Professional Reference


Autoren/Hrsg.


Weitere Infos & Material


Introduction 1 Understanding the Fundamentals of Machine Learning and its Applications in Forensic Evidence Examination 2 Scope of Machine Learning in Forensic Trace Evidence Examination 3 Potential Applications of Machine Learning in Forensic Questioned Document Examination 4 Application of Machine Learning in the Field of Forensic Medicine 5 Application of Machine Learning in the Field of Forensic Biology and Serological Evidence Identification 6 A Machine Learning Approach in Toxicological Studies and Analysis of Forensic Exhibits 7 Application of Machine Learning in the Field of Forensic Fingerprint Sciences 8 A Machine Learning Approach for the Digital Forensics 9 From Teeth to Technology 10 Potential Application of Machine Learning in Forensic Anthropology 11 Potential Application of Machine Learning in Forensic Ballistics 12 Application of Machine Learning in Big Data Analysis


Niha Ansari is Assistant Professor at the National Forensic Science University in Gandhinagar. She earned her Ph.D. in Forensic Science from Gujarat University, where she conducted the pioneering research ‘Study on Changes in Vitreous Humours concerning Time since Death’, utilising nano sensor smartphone applications and microfluidic devices. Dr Ansari has also held positions at Jain University in Bangalore. She has published a number of chapters in edited volumes, and 14 articles in peer-reviewed international journal publications. Her research interests encompass forensic nanotechnology, microfluidics, and smartphone-based sensors. She has participated in numerous conferences, workshops, and training sessions, imparting knowledge and skills to professionals and students alike. Among her accolades, Dr Ansari has been awarded the Maulana Azad National Fellowship by the University Grant Commission and the Best PhD Thesis Award by CHARUSAT. She is a part of the Editorial board of The Science publishing group.



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