• Corpus ID: 55951350

Digital Image Processing Based Noise Reduction Analysis of Digital Dental Xray Image Using MATLAB

@article{Bharathi2014DigitalIP,
  title={Digital Image Processing Based Noise Reduction Analysis of Digital Dental Xray Image Using MATLAB},
  author={Kunal Bharathi and S. Muruganand and Azha. Periasamy},
  journal={Journal of Nanoscience and Nanotechnology},
  year={2014},
  volume={2},
  pages={198-203}
}
This paper work based on Quality improvement analysis of digital dental X-ray image.   If it is one of the active research areas in Digital Image Processing (DIP), it is removal of noise from images. Taking this into consideration this paper presents a filtering technique to efficiently suppress the noise in the human dental Digital X-ray images of real database from hospitals. During the removal of noise in an image here using various filters in image processing techniques: The image is… 

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