Enhanced SSD framework for detecting defects in cigarette appearance using variational Bayesian inference under limited sample conditions
Shichao Wu,
Xianzhou Lv,
Yingbo Liu
et al.
Abstract:<abstract><p>In high-speed cigarette manufacturing industries, occasional minor cosmetic cigarette defects and a scarcity of samples significantly hinder the rapid and accurate detection of defects. To tackle this challenge, we propose an enhanced single-shot multibox detector (SSD) model that uses variational Bayesian inference for improved detection of tiny defects given sporadic occurrences and limited samples. The enhanced SSD model incorporates a bounded intersection over union (BIoU) loss fun… Show more
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