1. Global Tuberculosis Report;World Health Organization - WHO,2016
2. Automatic identification of mycobacterium tuberculosis with conventional light microscopy;Costa,2008
3. Image processing techniques for identifying mycobacterium tuberculosis in ziehl-neelsen stains;Sadaphal;Int. J. Tuberculosis Lung Dis.,2008
4. Color thresholding method for image segmentation algorithm of ziehl-neelsen sputum slide images;Raof,2008
5. Detection and quantification of bacilli and clusters present in sputum smear samples: a novel algorithm for pulmonary tuberculosis diagnosis;Sotaquirá;Proceedings of International Conference on Digital Image Processing,2009