篇名 |
DETRs with Dynamic Contrastive Denoising Training for Smartphone Assembly Parts
|
---|---|
並列篇名 | DETRs with Dynamic Contrastive Denoising Training for Smartphone Assembly Parts |
作者 | Hang Ma、Yu-Hang Zhang、Bo-Si Liu、Wen-Bai Chen |
英文摘要 | In the scenario of 3C (Computer, Communication, Consumer Electronics), the algorithm for detecting targets in smartphone component assembly consumes a substantial amount of system computing resources.It also faces challenges such as the flexible nature of target components and the small scale of heterogeneous components, leading to low detection accuracy. To adapt to the 3C scenario, this paper proposes improvements based on the DINO object detection model. It introduces a more lightweight and powerful feature extraction backbone, Efficientnetv2, and utilizes the He-Kaiming weight initialization method to extract strong multi-scale feature maps. In training, a more efficient dynamic contrastive denoising training method is employed. This approach makes the model lightweight and accurate for 3C detection. This method outperforms leading detection algorithms in both accuracy of experimental results and parameter efficiency.
|
起訖頁 | 175-192 |
關鍵詞 | 3C industry、object detection、DETR decomposition |
刊名 | 電腦學刊 |
期數 | 202406 (35:3期) |
DOI |
|
QR Code | |
該期刊 上一篇
| Classification of Ice Crystal Images from Airborne Cloud Particle Imager Probe (CPI) Using Convolutional Neural Networks (CNN) |
該期刊 下一篇
| Spatial-temporal Attention Model Based on Transformer Architecture for Anomaly Detection in Multivariate Time Series Data |