Metal Defect Detection Using Random Threshold and Wiener Filter

Abstract

Quality of all substances like metals and other materials needs to be verified in advance for industrial use. Traditional system to defect and deficiency detection uses only grey level method to classify defects but due to its low productivity it is not worthy. With the help of image processing algorithm we have proposed a system to detect as well as classify defects in this paper. Morphological operations are used to detected defects from the pre-processed images. To characterize the irregular area processes like GLCM attributes, extraction of moment, geometric algorithm are used. Independent from the load level, an accurate method like back propagation networks for neural systems are used in classification which can satisfy both detection and classification problem.

Authors and Affiliations

Nuruddin Faizee, Anup Kumar, Deepak Khanwalkar, Vanmathi C

Keywords

Related Articles

Implementation of DWT-SVD Based Secured Image Watermarking For Copyright Protection Using Visual Cryptography

In this paper, a new rough watermarking technique for copyright protection based on Discrete Wavelet Transform and Singular Value Decomposition is to intend. The high frequency sub band of the wavelet decomposed cover i...

Analysis of Efficient Adiabatic Logic Circuits and Their Power Extraction in Finfet (10nm) and Comparison With 90nm and 45nm

This paper describes the design style and analysis of low power adiabatic logic circuits based on ECRL (Efficient Charge Recovery Logic Circuits), PFAL(Positive Feedback Adiabatic Logic) and SCRL(Split Charge Recovery L...

A Note on an Upper Bound for (n, d)

In this correspondence, we have to obtain an upper bound for the value of (n,d), we have related to the bounds on the number of code words in a linear code C of length n. In particular we have given the exact inequality...

Prediction of Stock Market Using Financial News Analysis and Supervised Data Mining Technique

Financial news articles play very important role in stock market prediction because these financial news affect the decision of investor. Decision making for investor in stock market is considered to be one of the diffi...

Feeder Zone Control and Metal Impurity Detection in Blow Room Machines

this project has been designed to detect the metal impurities present in the raw cotton input for the blow room machines and to monitor the level of cotton in the feeder zone of the machine. This is done with the help o...

Download PDF file
  • EP ID EP20436
  • DOI -
  • Views 238
  • Downloads 3

How To Cite

Nuruddin Faizee, Anup Kumar, Deepak Khanwalkar, Vanmathi C (2015). Metal Defect Detection Using Random Threshold and Wiener Filter. International Journal for Research in Applied Science and Engineering Technology (IJRASET), 3(5), -. https://europub.co.uk/articles/-A-20436