Frequency Domain Attention Network for Copper Chain Defect Detection in
Tobacco Cutting Machine
Abstract
The detection of defects on the copper chain in the production process
of tobacco cutters is crucial for ensuring product quality. Traditional
defect detection methods often rely on spatial domain image analysis,
which not only has a large computational load but also performs poorly
in handling high-frequency noise and complex backgrounds. To address
this issue, this paper proposes a novel neural network model based on
frequency domain analysis, called Frequency Domain Attention Network
(FDANet). This network first utilizes Discrete Cosine Transform (DCT) to
transform the image from the spatial domain to the frequency domain,
effectively reducing computational complexity and improving processing
speed. Subsequently, through the innovative Frequency Domain Attention
Module (FDAM), the network automatically identifies and enhances key
discriminative features in the frequency domain, thereby strengthening
the model’s ability to identify defects. Finally, the frequency domain
attention map, after feature extraction and integration, is inputted
into the coupling detection head to achieve high-precision defect
detection. Experimental results demonstrate that FDANet performs
excellently in the task of detecting copper chain defects in tobacco
cutters, showing significant improvement compared to traditional methods
and verifying the effectiveness and practicality of the proposed
approach.