Multiresolution autoregressive filtering for pneumonia detection in medical images

I.M. Stephanakis1, G.K. Anastassopoulos2, A.D. Tsalkidis3
1National and Technical University of Athens, Athens, Greece
2"Democritus" University of Thrace, Alexandroupolis, Greece,
3Pediatric Clinic, Democritus University of Thrace, Alexandroupolis, Greece

Tóm tắt

Digital signal processing provides a variety of algorithmic tools, which are useful in modern medical imaging applications. A novel processing method based upon multiresolution autoregressive filters is proposed for automated detection of child pneumonia in X-ray images. Wavelet functions are utilized in order to construct a multiresolution whitening filter which retains information of the texture of the infected lung as well as structural information regarding the relative position of the infected area in the chest. Structural information is incorporated into the autocorrelation function at lower resolution levels whereas texture information is incorporated at finer resolution levels. Combining the outputs of the whitening filters through scales provides for robust and efficient detection of regions with child pneumonia.

Từ khóa

#Image resolution #Filtering #Lungs #Biomedical imaging #Signal resolution #Filters #Digital signal processing #Signal processing algorithms #X-ray detection #X-ray detectors

Tài liệu tham khảo

10.1117/1.602509 10.1007/BF01212465 10.1109/18.119735 10.1109/78.149995 gardner, 1989, Introduction to Random Processes 10.1109/81.260214 anastassopoulos, 2001, Quality assessment of child trauma images compressed with wavelet compression techniques in a telemedicine environment, 4th International Conference “Neural Networks and Expert Systems in Medicine and Healthcare, 369 vetterli, 1995, Wavelets and Subband Coding