Published April 1, 2019 | Version v1
Journal article Open

Framework for progressive segmentation of chest radiograph for efficient diagnosis of inert regions

Description

Segmentation is one of the most essential steps required to identify the inert object in the chest x-ray. A review with the existing segmentation techniques towards chest x-ray as well as other vital organs was performed. The main objective was to find whether existing system offers accuracy at the cost of recursive and complex operations. The proposed system contributes to introduce a framework that can offer a good balance between computational performance and segmentation performance. Given an input of chest x-ray, the system offers progressive search for similar image on the basis of similarity score with queried image. Region-based shape descriptor is applied for extracting the feature exclusively for identifying the lung region from the thoracic region followed by contour adjustment. The final segmentation outcome shows accurate identification followed by segmentation of apical and costophrenic region of lung. Comparative analysis proved that proposed system offers better segmentation performance in contrast to existing system.

Files

29 27Oct18 9883 Final_SavithaSSK (Edit I).pdf

Files (283.8 kB)

Name Size Download all
md5:6bf5fa7122856524f25549e1a81b25c4
283.8 kB Preview Download