AN IMPROVED GAUSSIAN FILTER TECHNIQUE FOR BIOMEDICAL IMAGE PROCESSING- AN EARLY LUNG CANCER DETECTION TECHNIQUE – complete project material

[ad_1]

AN IMPROVED GAUSSIAN FILTER TECHNIQUE FOR BIOMEDICAL IMAGE PROCESSING- AN EARLY LUNG CANCER DETECTION TECHNIQUE

ABSTRACT

For accurate and high rate of lung cancer detection using image processing, an effective preprocessing technique is required. A quality preprocessing technique is necessary to ensure effective removal of noise that interferes with the features of the image and hence improves lung cancer detection rate and accuracy. In this research, an Improved Gaussian Filter (IGF) technique was developed for effective lung image preprocessing. For image segmentation, Otsu thresholding method was used. The binarization was used for classification and Matlab as the simulation software. The filtering performance of the developed method was compared with the filtering performance of optimized Gaussian Filter (GF), the result showed that PSNR values obtained using improved Gaussian filter has an average gain of 1.2557dB over the PSNR values obtained using the optimized Gaussian Filter (GF). The detection rate and accuracy of the output from the Improved Gaussian filter was compared to the detection rate and accuracy of the output of the Gaussian filter and the result showed an improvement in average lung cancer detection rate and accuracy of 17.5% and 2.68% respectively when Improved Gaussian filter was used.

This Research Project Material is posted with good intentions. if you own it, and believe that your right is infringed or violated, Please send us a mail – admin@freeresearchproject.com.ng and actions will be taken immediately. Thank you.

[ad_2]


Talk to us
Please call 08111770269 or +2348059541956 to place an order or use the whatsapp button below to chat us up.


The Blazingprojects Mobile App



Download and install the Blazingprojects Mobile App from Google Play to enjoy over 50,000 project topics and materials from 73 departments, completely offline (no internet needed) with the project topics updated Monthly, click here to install.

  • Contains 50,000 project topics.
  • With complete project materials.
  • Contains 73 departments.
  • Completely offline, No internet needed.
  • Updated Monthly with new project topics & departments.
  • Easy to navigate and search projects.
  • Easily shareable via Xender, Bluetooth, etc.
  • Easy project support from inside the App.
  • Universities, Polytechnics & Colleges of Education.
INSTALL NOW

Read Previous

PARENTAL ACHIEVEMENT ORIENTATION AS PREDICTOR OF SELF-CONCEPT AND ACADEMIC SELF-EFFICACY OF IN-SCHOOL ADOLESCENTS IN ENUGU STATE, NIGERIA. – complete project material

Read Next

EFFECT OF COMPOSTED MUNICIPAL SOLID WASTE AND NPK FERTILIZER ON THE GROWTH AND YIELD OF MAIZE (Zea mays L) IN NSUKKA – complete project material