Automatic extraction of tumor region on X-ray image of animals

Author(s):  
Daisuke Wakamiya ◽  
Toshiyuki Tanaka ◽  
Isao Kabaya ◽  
Mikiya Kano ◽  
Isamu Iwayoshi
Author(s):  
Kwang Baek Kim ◽  
Doo Heon Song ◽  
Sang-Seok Yun

Early detection of subtle fracture is important particularly for the senior citizens’ quality of life. Naked eye examination from X-ray image may cause false negatives due to operator subjectivity thus computer vision based automatic detection software is much needed in practice.  In this paper, we propose an automatic extraction method for suspisious wrist fracture regions. We apply K-means in pixel clustering to form the candidate part of possible fracture from wrist X-ray image automatically. This method can recover previously detected patterned false cases with edge detection method after fuzzy stretching. The proposed method is successful in 16 out of 20 tested cases in experiment.


Author(s):  
Prakash Tunga P. ◽  
Vipula Singh

In the compression of medical images, region of interest (ROI) based techniques seem to be promising, as they can result in high compression ratios while maintaining the quality of region of diagnostic importance, the ROI, when image is reconstructed. In this article, we propose a set-up for compression of brain magnetic resonance imaging (MRI) images based on automatic extraction of tumor. Our approach is to first separate the tumor, the ROI in our case, from brain image, using support vector machine (SVM) classification and region extraction step. Then, tumor region (ROI) is compressed using Arithmetic coding, a lossless compression technique. The non-tumorous region, non-region of interest (NROI), is compressed using a lossy compression technique formed by a combination of discrete wavelet transform (DWT), set partitioning in hierarchical trees (SPIHT) and arithmetic coding (AC). The classification performance parameters, like, dice coefficient, sensitivity, positive predictive value and accuracy are tabulated. In the case of compression, we report, performance parameters like mean square error and peak signal to noise ratio for a given set of bits per pixel (bpp) values. We found that the compression scheme considered in our setup gives promising results as compared to other schemes.


2018 ◽  
Vol 20 (29) ◽  
pp. 19560-19571 ◽  
Author(s):  
Pietro Guccione ◽  
Luca Palin ◽  
Benny Danilo Belviso ◽  
Marco Milanesio ◽  
Rocco Caliandro

A new algorithm to extract in an automatic way kinetic parameters from a set of measurements from in situ experiments is presented and applied to X-ray powder diffraction and Raman spectroscopy.


Author(s):  
Stella Dumencic ◽  
Sebastian Tschauner ◽  
Franko Hrzic ◽  
Ivan Stajduhar

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