Abstract:

We consider the application of wavelet transform and neural networks to solving the problem of defect detection (the lack of elements and the presence of adhesions elements) in multi-element photodetectors by processing their images. It is shown that both methods can be successfully applied to the detection of defects. Found that a method based on wavelet transform requires the manual selection of parameters depending on the size of the processed image. Due to the ability of neural networks to learn, a method for the search for defects with neural networks, automatically adapts to the processed image.

DOI:
Issue
Pages:
89-96
File:
tarkov1.pdf (740.63 KB)