1. www.neurosurgery.pitt.edu/centers-excellence/neurosurgical-oncology/brain-&-brain-tumors/diagnosis-brain-tumors.
2. High quality impulse noise removal via non- uniform sampling and auto-regressive modeling based super-resolution;Wang;IET Image Process.,2016
3. Automatic brain tumor detection based on hierarchial centroid shape descriptor in T1 weighted MR images;Ilunga-Mbuyambu;2016 International Conference on Electronics, Communications and Computers (CONIELECOMP),2016
4. Automatic brain tumor tissue detection in T-weighted MRI;Samjith Raj;2017 International Conference on Innovations in Information, Embedded and Communication Systems (ICIIECS),2017
5. Noise adaptive fuzzy switching median filter for salt- and – pepper noise reduction;Toh;IEEE Signal Process. Lett.,2010