Criminal Identification in Color Skin Images Using Birth Marks and Fusion with Inferred Vein Patterns

Authors

  • Kumar Srinivas Reddy Department of Computer Science and Engineering, Woxsen University, Hyderabad, India
  • Prashant Reddy Department of Computer Science and Engineering, Woxsen University, Hyderabad, India

Keywords:

criminal tracking, criminal identification, fake detection, birthmark validation

Abstract

Criminal detection in recent time has become most challenging task. Most of the cases are acquired with non-facial body organs at crime scene. In this paper, semi-automated criminal detection system is introduced. The system projects on improvement with current RPPVSM approach for enhanced results. In this paper, hand vein clustering and region analysis is conducted as it is not acceptable under every scenario for back images. A clinical trial is conducted on few samples and has archived the results.

References

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Published

2022-08-10

How to Cite

Kumar Srinivas Reddy, & Prashant Reddy. (2022). Criminal Identification in Color Skin Images Using Birth Marks and Fusion with Inferred Vein Patterns. International Journal of Human Computations & Intelligence, 1(1), 18–21. Retrieved from https://milestoneresearch.in/JOURNALS/index.php/IJHCI/article/view/19