Secure Medical Image Retrieval Using Fast Image Processing Algorithms

Authors

  • Sameer Abdulsttar Lafta Middle Technical University, Technical Instructors Training Institute, Baghdad, Iraq
  • Amaal Ghazi Hamad Rafash Middle Technical University, Technical Instructors Training Institute, Baghdad, Iraq
  • Noaman Ahmed Yaseen Al-Falahi Digital Transformation Department, Senior Chief of Programmers, Iraqi Ministry of Communications Baghdad, Iraq
  • Hussein Abdulqader Hussein Middle Technical University, Technical Instructors Training Institute, Baghdad, Iraq
  • Mohanad Mahdi abdulkareem Director of Data Centers Management Department, Assistant chief engineer, Iraqi Ministry of Communications Baghdad,Iraq

DOI:

https://doi.org/10.12694/scpe.v25i5.3126

Keywords:

Medical image, Image retrieval, Image processing

Abstract

 Content Based Image Retrieval (CBIR) is a relatively new idea in the field of real-time image retrieval applications; it is a framework for retrieving pictures from diverse medical imaging sources using a variety of image-related attributes, such as color, texture, and form. Using both single and multiple input queries, CBIR processes semantic data or the same object for various class labels in the context of medical image retrieval. Due to the ambiguity of image search, optimizing the retrieval of a query picture by comparing it across numerous image sources may be problematic. The goal is to find a way to optimize the process by which requested images are retrieved from various storage locations. To effectively extract medical images, we propose a hybrid framework (consisting of deep convolution neural networks (DCNN) and the Pareto Optimization technique). In order to obtain medical pictures, a DCNN is trained on them, and then its properties and classification results are employed. Explore enhanced effective medical picture retrieval by using a Pareto optimization strategy to eliminate superfluous and dominant characteristics. When it comes to retrieving images by query from various picture archives, our method outperforms more conventional methods. Use the jargon of machine learning to propose a Novel Unsupervised Label Indexing (NULI) strategy for retrieving picture labels. To enhance the effectiveness of picture retrieval, we characterize machine learning as a matrix convex optimization using a cluster rebased matrix representation. We describe an empirical investigation on many medical picture datasets, finding that the searchbased image annotation (SBIA) schema benefits from our suggested method. As a result, CT images of the lung region are explored in this study by constructing a content-based image retrieval system using various machine learning and Artificial Intelligence techniques. Real-world applications of medical imaging are becoming more significant. Medical research facilities acquire and archive a wide variety of medical pictures digitally.

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Published

2024-08-01

Issue

Section

Special Issue - Synergies of Neural Networks, Neurorobotics, and Brain-Computer Interface Technology: Advancements and Applications