Abstract
Abstract
In order to improve the detection efficiency and accuracy of the security check process, a detection algorithm that can accurately detect dangerous goods is constructed based on the attention mechanism and combined with the DETR algorithm. Combining the X-ray image data samples collected by the actual security inspection, the image data is trained through the deep learning network and analyzed on the verification data. The results show that the algorithm has higher verification accuracy, and the accuracy is higher than that of traditional detection algorithms, and it can locate dangerous goods more accurately. The method given in this article provides theoretical support and reference for the actual security inspection process.
Subject
General Physics and Astronomy
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