www.matlabsimulation.com

Analysis of Forgery Detection CNN Sand Cat Swarm Optimization

 

Related Pages

Research Areas

Related Tools

Performance Analysis of Forgery Detection with CNN and Sand Cat Swarm Optimization

implementation plan

Step 1: Initially, we load and collect the data from the SROIE datasetv2 image dataset.

Step 2: Then, we pre-process the collected data using Grayscale Conversion,Image Resizing Normalization and Morphological Operation techniques.

Step 3: Next, we detect Original and tampered text using Convolutional Neural Network (CNN) Detectron2 Training algorithm.

Step 4: Next, we perform Foreground Extraction using GrabCut algorithm with Gaussian Mixture Model (GMM).

Step 5: Next, we extract the features using GLCM with the Local Binary Pattern (LBP) method.

Step 6: Next, we classify the original and tampered image using CNN with VGGNet architecture.

Step 7: Next, we optimize the images using Sand-Cat-Swarm-based Optimization Method (SCSO)

Step 8: Finally, we plot performance for the following metrics:

8.1: Number of epochs vs. Accuracy (%)
8.2: Number of epochs vs. Precision (%)
8.3: Number of epochs vs. Recall (%)
8.4: Number of epochs vs. F1-score (%)
8.5: True positive rate (FPR) vs. False positive rate (TPR)

Software requirement:

1. Development Tool: Python 3.11.4 or above
2. Operating System: Windows 10 (64-bit) or above

 

Dataset:

Link :- https://www.kaggle.com/datasets/urbikn/sroie-datasetv2

 

Note

1) If the plan does not meet your requirements, provide detailed steps, parameters, models, or expected results in advance. Once implemented, changes won’t be possible without prior input; otherwise, we’ll proceed as per our implementation plan.

2) If the plan satisfies your requirement, Please confirm with us.

3) Project based on Simulation only, not a real time project.

4) If you have any changes in the Dataset , kindly provide before implementation.

5) Please understand that any modifications made to the confirmed implementation plan will not be made after the project development.

We perform with an Existing Approach : Reference 17: Title :- Image Forgery Detection by CNN and Pretrained VGG16 Model

A life is full of expensive thing ‘TRUST’ Our Promises

Great Memories Our Achievements

We received great winning awards for our research awesomeness and it is the mark of our success stories. It shows our key strength and improvements in all research directions.

Our Guidance

  • Assignments
  • Homework
  • Projects
  • Literature Survey
  • Algorithm
  • Pseudocode
  • Mathematical Proofs
  • Research Proposal
  • System Development
  • Paper Writing
  • Conference Paper
  • Thesis Writing
  • Dissertation Writing
  • Hardware Integration
  • Paper Publication
  • MS Thesis

24/7 Support, Call Us @ Any Time matlabguide@gmail.com +91 94448 56435