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2023 | OriginalPaper | Chapter

The Analysis of Srgb Color Space Based Density for Brain Tumor Segmentation

Authors : S. Gangadharappa, C. Naveena, V. N. Manjunath Aradhya

Published in: International Symposium on Intelligent Informatics

Publisher: Springer Nature Singapore

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Abstract

Medical image processing is one of the significant fields to identify the diseases as earlier to diagnose them appropriately. The brain tumor segmentation process is sub branch of a medical image processing field. The computer vision and machine learning techniques provide an effective channel for the medical practitioners for diagnosing the diseases in an effective method. This research article implements the Srgb-based density analysis for isolating the brain tumor space in MRI images. Intensity values of a given input are normalized using Srgb color space and Gaussian filter to distinguish the tumor region from the background. The adaptive threshold technique helps identify the possible tumor space in brain MRI samples. The actual brain tumor space is extracted by performing the region properties such as area and density function. Finally, the accurate tumor space is detected by applying morphological functions with eliminating possible false positives. Performance metrics including recall, precision, and F-measure are used to assess the effectiveness of the proposed approach.

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Metadata
Title
The Analysis of Srgb Color Space Based Density for Brain Tumor Segmentation
Authors
S. Gangadharappa
C. Naveena
V. N. Manjunath Aradhya
Copyright Year
2023
Publisher
Springer Nature Singapore
DOI
https://doi.org/10.1007/978-981-19-8094-7_25