Journal of Cognitive Human-Computer Interaction

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https://doi.org/10.54216/JCHCI

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2771-1463ISSN (Online) 2771-1471ISSN (Print)

Volume 9 , Issue 1 , PP: 31-44, 2025 | Cite this article as | XML | Html | PDF | Full Length Article

Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images

K. Rajesh 1 , A. Silambarasan 2 , R. Hemalatha 3 , E. Sharmila 4

  • 1 Assistant Professor, Department of ECE, Knowledge Institute of Technology, India - (krece@kiot.ac.in)
  • 2 Assistant Professor, Department of ECE, Knowledge Institute of Technology, India - (asece@kiot.ac.in)
  • 3 Assistant Professor, Department of ECE, Knowledge Institute of Technology, India - (asece@kiot.ac.in)
  • 4 PG Scholar, Department of ECE, Knowledge Institute of Technology, India - (rhece@kiot.ac.in)
  • Doi: https://doi.org/10.54216/JCHCI.090103

    Received: November 03, 2024 Revised: December 17, 2024 Accepted: January 14, 2025
    Abstract

    Intracranial hemorrhage (ICH) poses a large chance to affected person fitness, regularly modern requiring set off diagnosis and intervention. In latest years, the medical imaging techniques, specifically computed tomography (CT) scanning, have end up critical tools for detecting and characterizing ICH. This paper offers a complete evaluate comprehensive review of the state-of-the-art techniques for the segmentation, category, and visualization cutting-edge intracranial hemorrhage in CT mind pics. The evaluate encompasses numerous methodologies, consisting of conventional picture processing strategies, system cutting-edge algorithms, and deep brand new strategies, highlighting their strengths, limitations, and capability applications in scientific exercise. Additionally, it discusses the challenges associated with correct ICH detection and quantification, inclusive of the presence modern day artifacts, anatomical variations, and sophistication imbalance. Furthermore, the paper explores emerging tendencies in ICH research, which includes the combination trendy multimodal imaging information and the improvement trendy interactive visualization gear for enhanced medical choice-making. The segmented portion from each CT image is constructed into a single 3D volumetric structure and essential information such as region Area, volume and location are provided. Further the classification accuracy between normal brain and ICH brain is 95.8%. Such a 3D visualization, Classification and volumetric analysis of ICH can provide the exact and necessary information to the neurologist which is essential for the treatment of ICH.

    Keywords :

    Intracranial hemorrhage, CT mind images, segmentation, class, visualization, photograph processing, machine brand new, deep modern day, scientific imaging, medical choice-making.

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    Cite This Article As :
    Rajesh, K.. , Silambarasan, A.. , Hemalatha, R.. , Sharmila, E.. Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images. Journal of Cognitive Human-Computer Interaction, vol. , no. , 2025, pp. 31-44. DOI: https://doi.org/10.54216/JCHCI.090103
    Rajesh, K. Silambarasan, A. Hemalatha, R. Sharmila, E. (2025). Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images. Journal of Cognitive Human-Computer Interaction, (), 31-44. DOI: https://doi.org/10.54216/JCHCI.090103
    Rajesh, K.. Silambarasan, A.. Hemalatha, R.. Sharmila, E.. Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images. Journal of Cognitive Human-Computer Interaction , no. (2025): 31-44. DOI: https://doi.org/10.54216/JCHCI.090103
    Rajesh, K. , Silambarasan, A. , Hemalatha, R. , Sharmila, E. (2025) . Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images. Journal of Cognitive Human-Computer Interaction , () , 31-44 . DOI: https://doi.org/10.54216/JCHCI.090103
    Rajesh K. , Silambarasan A. , Hemalatha R. , Sharmila E. [2025]. Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images. Journal of Cognitive Human-Computer Interaction. (): 31-44. DOI: https://doi.org/10.54216/JCHCI.090103
    Rajesh, K. Silambarasan, A. Hemalatha, R. Sharmila, E. "Classification Segmentation and Visualization of Intracranial Hemorrhage in CT Brain Images," Journal of Cognitive Human-Computer Interaction, vol. , no. , pp. 31-44, 2025. DOI: https://doi.org/10.54216/JCHCI.090103