ImageDC: Image Data Cleaning Framework Based on Deep Learning

Project Code :TCMAPY271

Objective

In this project we propose a new image data cleaning framework using deep neural networks, named ImageDC, to improve the quality of the datasets, that can enhance a blurred image to a clean image. It also adopts cleaning with the low recognition rate to remove the noisy data to enhance the recognition rate of the datasets.

Abstract

Although user-generated image data increases more and more quickly on the current Internet, many image methods have attracted widespread attention from industry and academia. Recently, some image classification approaches using deep learning have demonstrated that they can potentially enhance the accuracy of the classification based on the high quality datasets. However, the existing methods only consider the accuracy of the classification and ignore the quality of the datasets. To address these issues, we propose a new image data cleaning framework using deep neural networks, named ImageDC, to improve the quality of the datasets. ImageDC not only uses cleaning with the minority class to remove the images of the rarely classes, but also adopts cleaning with the low recognition rate to remove the noisy data to enhance the recognition rate of the datasets. Experimental results conducted on a variety of datasets demonstrate that our model significantly outperforms the whole approaches.

Keywords: Data Clean, Deep Learning, Image Classification, CNN, and Image Resolution.

 

NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

HARDWARE SPECIFICATIONS:

  • Processor: I3/Intel
  • Processor RAM: 4GB (min)
  • Hard Disk: 128 GB
  • Key Board: Standard Windows Keyboard
  • Mouse: Two or Three Button Mouse
  • Monitor: Any

SOFTWARE SPECIFICATIONS:

  • Operating System: Windows 7+
  • Server-side Script: Python 3.6+
  • IDE: Google colab
  • Libraries Used: Pandas, Numpy, sklearn, Flask, TensorFlow, OS.

Learning Outcomes

  • Scope of Real Time Application Scenarios.
  • Importance of Google Colab.
  • How GAN work.
  • Working Procedure.
  • Testing Techniques.
  • Error Correction mechanisms.
  • How to run and deploy the applications.
  • Introduction to basic technologies.
  • How project works.
  • Input and Output modules.
  • How test the project based on user inputs and observe the output.
  • Project Development Skills:
    • Problem analyzing skills.
    • Problem solving skills.
    • Creativity and imaginary skills.
    • Programming skills.
    • Deployment.
    • Testing skills.
    • Debugging skills.
    • Project presentation skills.
    • Thesis writing skills.

Demo Video

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