Research on Detection Technology of Micro-Components on Circuit Board Based on Digital Image Processing
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Keywords

Tiny device recognition
Image registration
SIFT feature operator
RANSAC algorithm
Faster RCN

DOI

10.26689/jera.v8i3.7187

Submitted : 2024-05-21
Accepted : 2024-06-05
Published : 2024-06-20

Abstract

Aiming at the stability of the circuit board image in the acquisition process, this paper realizes the accurate registration of the image to be registered and the standard image based on the SIFT feature operator and RANSAC algorithm. The device detection model and data set are established based on Faster RCNN. Finally, the number of training was continuously optimized, and when the loss function of Faster RCNN converged, the identification result of the device was obtained.

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