IMAGE DETECTION, CLASSIFICATION AND RECOGNITION FOR LEAK DETECTION IN AUTOMOBILES
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How to Cite

Manoharan, Samuel. 2019. “IMAGE DETECTION, CLASSIFICATION AND RECOGNITION FOR LEAK DETECTION IN AUTOMOBILES”. Journal of Innovative Image Processing 1 (2): 61-70. https://doi.org/10.36548/jiip.2019.2.001.

Keywords

— Leakage Detection
— Automotive Industries
— Image Detection
— Classification and Recognition
Published: 31-12-2019

Abstract

The Demands in quality of the automobile production grows at a rapid pace with the pressure to reduce costs of the automobiles further. So it becomes necessary to subject the critical components for the leakage detection to enhance the overall quality and the customer satisfaction. Apart from the conventional methods and the recently evolved methods in leakage detection for the automobiles, the paper tries to put forth a novel method for the detection of the leakage in the automobiles using the image processing techniques. The proposed method concentrates on the image detection, classification and recognition for the leak detection of the air conditioning in the automobiles. The proposed method of image detection is evaluated using the MATLAB to evince accuracy in the leakage detection, classification and recognition

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