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Lung Field Segmentation in Chest Radiographs from Boundary Maps by a Structured Edge Detector

₹1500-12500 INR

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Posted over 6 years ago

₹1500-12500 INR

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Lung field segmentation in chest radiographs (CXRs) is an essential preprocessing step in automatically analyzing such images. We present a method for lung field segmentation that is built on a high-quality boundary map detected by an efficient modern boundary detector, namely, a structured edge detector(SED). A SED is trained beforehand to detect lung boundaries in CXRs with manually outlined lung fields. Then, an ultra metric contour map (UCM) is transformed from the masked and marked boundary map. Finally, the contours with the highest confidence level in the UCM are extracted as lung contours. Our method is evaluated using the public JSRT database of scanned films. The average Jaccard index of our method is 95.2%, which is comparable with those of other state-of-the-art methods (95.4%).The computation time of our method is less than 0.1 s for a 256 ×256 CXR when executed on an ordinary laptop. Our method is also validated on CXRs acquired with different digital radiography units. The results demonstrate the generalization of the trained SED model and the usefulness of our method.
Project ID: 15817813

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Remote project
Active 6 yrs ago

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2 freelancers are bidding on average ₹14,000 INR for this job
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I can develop this project within 6 days as per your need. I will use matlab software to develop the project.
₹13,000 INR in 6 days
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