Litcius/Paper detail

Lung Field Segmentation in Chest X-ray Images Using Superpixel Resizing and Encoder–Decoder Segmentation Networks

Chien-Cheng Lee, Edmund Cheung So, Lamin Saidy, Min-Ju Wang

2022Bioengineering14 citationsDOIOpen Access PDF

Abstract

Lung segmentation of chest X-ray (CXR) images is a fundamental step in many diagnostic applications. Most lung field segmentation methods reduce the image size to speed up the subsequent processing time. Then, the low-resolution result is upsampled to the original high-resolution image. Nevertheless, the image boundaries become blurred after the downsampling and upsampling steps. It is necessary to alleviate blurred boundaries during downsampling and upsampling. In this paper, we incorporate the lung field segmentation with the superpixel resizing framework to achieve the goal. The superpixel resizing framework upsamples the segmentation results based on the superpixel boundary information obtained from the downsampling process. Using this method, not only can the computation time of high-resolution medical image segmentation be reduced, but also the quality of the segmentation results can be preserved. We evaluate the proposed method on JSRT, LIDC-IDRI, and ANH datasets. The experimental results show that the proposed superpixel resizing framework outperforms other traditional image resizing methods. Furthermore, combining the segmentation network and the superpixel resizing framework, the proposed method achieves better results with an average time score of 4.6 s on CPU and 0.02 s on GPU.

Topics & Concepts

UpsamplingArtificial intelligenceSegmentationComputer visionComputer scienceResizingEncoderImage segmentationScale-space segmentationPattern recognition (psychology)Image (mathematics)Operating systemBusinessEuropean unionEconomic policyCOVID-19 diagnosis using AIRadiomics and Machine Learning in Medical ImagingImage Processing Techniques and Applications