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Minor project .pptx

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Minor project .pptx

  1. 1. MINOR PROJECT ON MEDICAL IMAGE ANALYSIS USING BIO-INSPIRED ALGORITHM BASED ON MACHINE LEARNING
  2. 2. DEPARTMENT OF COMPUTER SCIENCE & ENGINEERING MAHARAJAAGRASEN INSTITUTE OF TECHNOLOGY (AFFILIATED TO GURU GOBIND SINGH INDRAPRASTHA UNIVERSITY, DELHI) Guide Name: Mr. Anupam Kumar Theme of Project: Machine Learning Project ID:- CSE2-73 Project Team Members:- Vishal Tiwari 35196407220 Deepak Kumar Verma 02196402719 Vipul 04196402719
  3. 3. PROBLEM STATEMENT SELECTION OF RELEVANT FEATURES FROM MEDICAL IMAGES USING HYBRIDIZATION OF THE WHALE OPTIMIZATION ALGORITHM (WOA) AND DRAGONFLY ALGORITHM (DA) & CLASSIFICATION OF THE EXTRACTED FEATURES
  4. 4. TECHNOLOGY STACK 1. PYTHON 2. JUPYTER NOTEBOOK 3. GOOGLE COLLAB 4. PYTHON LIBRARIES: - TENSORFLOW PYTORCH KERAS SKLEARN MATPLOTLIB
  5. 5. INTRODUCTION BIO-INSPIRED COMPUTING REPRESENTS THE UMBRELLA OF DIFFERENT STUDIES OF COMPUTER SCIENCE, MATHEMATICS, AND BIOLOGY IN THE LAST YEARS. BIO-INSPIRED COMPUTING OPTIMIZATION ALGORITHMS IS AN EMERGING APPROACH WHICH IS BASED ON THE PRINCIPLES AND INSPIRATION OF THE BIOLOGICAL EVOLUTION OF NATURE TO DEVELOP NEW AND ROBUST COMPETING TECHNIQUES. USING HYBRID BIO INSPIRED ALGORITHM THAT USES MEDICAL IMAGES DATASET FOR ANALYZING AND MEASURE ACCURACY. IN THIS PROJECT, THE FEATURES FROM THE SCANNED DATASETS ARE EXTRACTED AND THE RELEVANT FEATURES ARE THEN SELECTED. TWO-HYBRID OPTIMIZATION APPROACHES ARE PROPOSED. THESE APPROACHES IMPLEMENT WHALE OPTIMIZATION ALGORITHM (WOA) AND DRAGONFLY ALGORITHM (DA) COMBINED WITH AN SVM CLASSIFIER (WOA-SVM AND DA-SVM) TO OPTIMIZE ITS PARAMETERS AND OBTAIN THE OPTIMAL CLASSIFICATION ACCURACY.
  6. 6. SCOPE & MOTIVATION THE PREVIOUSLY PROPOSED DEEP LEARNING (DL) MODELS REQUIRE EXTENSIVE AMOUNTS OF DATA IN ORDER TO BE TRAINED, WHICH COULD BE DIFFICULT TO OBTAIN, IN CASE OF PANDEMIC SUCH AS COVID-19. HENCE, WE REQUIRE A ROBUST SOLUTION THAT CAN WORK ON SMALL DATASET AND HAS COMPARABLE OR HIGHER ACCURACY THAN STATE-OF-THE- ART DL MODELS. CURRENTLY, THE BIO-INSPIRED OPTIMIZATION ALGORITHM COULD HYBRIDIZE TOGETHER. DUE TO THE PROBLEM OF CONVERGENCE SPEED WHICH CAN BE ENCOUNTERED IN SOLVING REAL CHALLENGING APPLICATIONS AND IN THE FUTURE THESE BIO-INSPIRED ALGORITHMS COULD BE HYBRIDIZED WITH OTHER APPROACHES AND METHODS SUCH AS QUANTUM COMPUTING AND CHAOTIC THEORY TO ENHANCE THE PERFORMANCE OF BIO-INSPIRED OPTIMIZATION ALGORITHMS.
  7. 7. LITERATURE SURVEY WHALE OPTIMIZATION ALGORITHM (WOA) IS A META-HEURISTIC ALGORITHM. IT IS A NEW ALGORITHM, IT SIMULATES THE BEHAVIOR OF HUMPBACK WHALES IN THEIR SEARCH FOR FOOD AND MIGRATION. WHALE OPTIMIZATION ALGORITHM FEATURES:- 1. ALGORITHMS ARE EASY TO IMPLEMENT. 2. THIS ALGORITHM IS HIGHLY FLEXIBLE. 3. DO NOT NEED MANY PARAMETERS. 4. YOU CAN EASILY NAVIGATE THROUGH EXPLORATION AND EXPLOITATION BASED ON ONE PARAMETER. 5. DUE TO THE SIMPLICITY OF THIS ALGORITHM AND ITS LACK OF MANY PARAMETERS, IT IS USED TO SOLVE THE LOGARITHMIC SPIRAL FUNCTION, IT COVERS THE BOUNDARY AREA IN THE RESEARCH SPACE. 6. THE POSITION OF THE ELEMENTS (SOLUTIONS) IN THE EXPLORATION PHASE IS IMPROVED BASED ON RANDOMLY SELECTED SOLUTIONS RATHER THAN THE BEST SOLUTION OBTAINED SO FAR .
  8. 8. LITERATURE SURVEY DRAGONFLY ALGORITHM (DA) ALGORITHM ORIGINATES FROM STATIC AND DYNAMIC SWARMING BEHAVIOURS. THESE TWO SWARMING BEHAVIOURS ARE VERY SIMILAR TO THE TWO MAIN PHASES OF OPTIMIZATION USING META- HEURISTICS: EXPLORATION AND EXPLOITATION. DRAGONFLIES CREATE SUB SWARMS AND FLY OVER DIFFERENT AREAS IN A STATIC SWARM, WHICH IS THE MAIN OBJECTIVE OF THE EXPLORATION PHASE. IN THE STATIC SWARM, HOWEVER, DRAGONFLIES FLY IN BIGGER SWARMS AND ALONG ONE DIRECTION, WHICH IS FAVOURABLE
  9. 9. APPROACH  For Image Dataset we will be using Kaggle. After that We will resize it.  Two-hybrid optimization image classification approaches are proposed. These approaches implement WOA and DA combined with an SVM classifier (WOA-SVM and DA-SVM) to optimize its parameters and obtain the optimal classification accuracy.  Then, the dataset is trained using the optimal parameters of SVM to get the learning model. This model is used to predict the test data and gain optimal classification accuracy.  After getting the optimal parameters, We will train the model.  After Obtaining the model we will use the model to classify and measure accuracy between 4 test cases of Breast cancer, Lung cancer, Brain tumor & Healthy image.
  10. 10. ARCHITECTURE
  11. 11. References 1. M. Abdel-Zaher and A. M. Eldeib, ‘‘Breast cancer classification using deep belief networks,’’ Expert Syst. Appl., vol. 46, pp. 139–144, Mar. 2016, doi: 10.1016/j.eswa.2015.10.015. 2. M. Dorigo, “Optimization, learning and natural algorithms,” Dipartimento di Elettronica Politecnico di Milano, Milan, Italy, 1992, Ph.D. thesis. 3. S. Mirjalili, ‘‘Dragonfly algorithm: A new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems,’’ Neural Comput. Appl., vol. 27, no. 4, pp. 1053–1073, May 2016, doi: 10.1007/s00521-015-1920-1. 4. A. Bhardwaj and A. Tiwari, ‘‘Breast cancer diagnosis using genetically optimized neural network model,’’ Expert Syst. Appl., vol. 42, no. 10, pp. 4611–4620, 2015, doi: 10.1016/j.eswa.2015.0 5. T. Hu, M. Khishe, M. Mohammadi, G.-R. Parvizi, S. H. Taher Karim, and T. A. Rashid, ‘‘Real-time COVID-19 diagnosis from X-ray images using deep CNN and extreme learning machines stabilized by chimp optimization algorithm,’’ Biomed. Signal Process. Control, vol. 68, Jul. 2021, Art. no. 102764, doi: 10.1016/j.bspc.2021.102764.

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