Lungs Segmentation and Nodule Detection using Machine Learning
Medical Image Segmentation and Classification using Machine Learning
- Publisher's listprice EUR 68.00
-
28 203 Ft (26 860 Ft + 5% VAT)
The price is estimated because at the time of ordering we do not know what conversion rates will apply to HUF / product currency when the book arrives. In case HUF is weaker, the price increases slightly, in case HUF is stronger, the price goes lower slightly.
- Discount 5% (cc. 1 410 Ft off)
- Discounted price 26 793 Ft (25 517 Ft + 5% VAT)
Subcribe now and take benefit of a favourable price.
Subscribe
28 203 Ft
Availability
printed on demand
Why don't you give exact delivery time?
Delivery time is estimated on our previous experiences. We give estimations only, because we order from outside Hungary, and the delivery time mainly depends on how quickly the publisher supplies the book. Faster or slower deliveries both happen, but we do our best to supply as quickly as possible.
Product details:
- Publisher VDM Verlag Dr. Müller
- Date of Publication 1 January 2011
- Number of Volumes .
- ISBN 9783639342802
- Binding Paperback
- No. of pages164 pages
- Language English 0
Categories
Long description:
Segmentation of images has become an important and effective tool for many technological applications like lungs segmentation from CT scan images. The objective of this book is to develop a new fully automated system that segment the lungs part from CT scan images and detect nodules automatically. A fully automatic un-supervised strategy has been developed for the segmentation of lungs. Technique employs a novel background removal operator based on histogram of the image to remove the background very intelligently and automatically. The methodology utilizes spatial Fuzzy C-Mean (FCM) clustering to ensure robustness against the noise. Also a fuzzy histogram based image filtering technique has been used to remove the noise, which preserves the image details for low as well as highly corrupted images. Segments have been validated by using different cluster validity functions. The proposed technique finds out optimal and dynamic threshold by using fuzzy entropy and genetic algorithms. A directional approach has been used to extract the Region of Interests (ROIs) and FCM have been used to classify ROIs that contain nodule.
More