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Machine Vision Technique with Image Segmentation in Digital Diagnostic System for Lung Cancer Detection

Devyani Rawat, Sachin Sharma, Shuchi Bhadula

Year
2025
Citations
2

Abstract

Within the domain of medical diagnostics, the integration of machine vision strategies holds guarantee for upgrading precision and effectiveness in disease discovery. Lung cancer remains a critical worldwide wellbeing concern, requiring progressed imaging advances for early and precise conclusion. This paper presents an advanced symptomatic framework enabled by machine vision, especially centring on image segmentation techniques. Through a comprehensive survey of existing writing, we investigate the scene of image segmentation procedures connected to lung cancer location. Hence, we propose a novel system leveraging state-of-the-art machine vision calculations to segment lung images successfully. Our framework points to move forward upon current symptomatic hones by robotizing the division prepare, subsequently encouraging more precise and opportune distinguishing proof of cancerous districts. We examine the potential suggestions of this approach in clinical settings, including its capacity to help radiologists in elucidation and decision-making. Besides, we highlight avenues for future investigate and advancement to refine and optimize the proposed framework for broader clinical selection.

Keywords

Computer visionArtificial intelligenceComputer scienceImage segmentationMachine visionSegmentationLung cancerCancer detectionDigital imageDigital image analysis

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