Anomaly Detection Industrial Items

Authors

  • Muhammad Owais Khan Department of Computer Science and Technology, Faculty of Information Science and Engineering, Ocean University of China Author
  • Dr. Liu Peishun Department of Computer Science and Technology, Faculty of Information Science and Engineering, Ocean University of China Author
  • Abdul Basit Department of Software Engineering, Faculty of Engineering and Technology, University of Sindh, Jamshoro, Pakistan Author
  • Dil Nawaz Hakro Department of Software Engineering, Faculty of Engineering and Technology, University of Sindh, Jamshoro, Pakistan Author
  • Abdul Majid Memon Department of Computer Science and Technology, Faculty of Information Science and Engineering, Ocean University of China Author

DOI:

https://doi.org/10.32628/CSEIT2410268

Keywords:

Object Detection, Deep Learning, Object Tracking, Matching and Recognition, Simple Real Time Tracker

Abstract

Anomaly detection is one of the machines learning powered approach which identifies the various elements and objects from a big set of the data. The machine learning powered technique checks multiple objects with the help of differentiating properties and detects the objects which are dissimilar to another dataset. Anomaly detection has number of successful applications from security, medical, industrial and virtually all of the tasks which human may fail while identifying the differentiating properties. Machinery elements anomaly detection has been presented which identifies the differentiating objects of the four hundred images. Number of experiments were performed to detect the anomaly among the given 400 images. The training model has used bidirectional LSTM which gets a feature vector of twelve features, selected, and extracted with already defined algorithm. The dataset has been labelled manually and features were stored. While testing of the images, the study achieved 98% of the accuracy while detecting anomaly of the industrial elements. The system can detect anomalies in the presence of the varying colour and other properties. The accuracy can be increased by adding more images to the database and learning model more deeply. The study can be directed to various implementations including multiple learning implementations, applying on various other elements.

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Published

25-04-2024

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Section

Research Articles

How to Cite

[1]
M. Owais Khan, Liu Peishun, Abdul Basit, D. N. Hakro, and Abdul Majid, “Anomaly Detection Industrial Items”, Int. J. Sci. Res. Comput. Sci. Eng. Inf. Technol, vol. 10, no. 2, pp. 729–734, Apr. 2024, doi: 10.32628/CSEIT2410268.

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