混合深度学习在工业板岩瓷砖溯源与分类中的应用 / Hybrid Deep Learning for Traceability and Classification of Industrial Slate Tiles
1️⃣ 一句话总结
本研究提出了一种结合图像特征匹配与分类的轻量级混合深度学习模型,能够高效识别板岩瓷砖的个体来源并判断其开采产地,通过共享和融合两种网络的特征,显著提升了工业场景下的准确率。
Applying deep learning to instance-aware reidentification of slate tiles and extraction site classification can improve production efficiency and quality control in the slate tile industry. These tasks are particularly important for handling natural materials where visual variability can make manual inspection costly and error-prone. We present a lightweight, hybrid deep learning approach that combines image matching and classification within a single framework. The system integrates a feature-matching branch based on XFeat with a MobileNetV3- based classification branch. The XFeat branch, combined with a LightGlue matching head, improves instance matching performance by +15.4% AUC. For classification, features from both backbones are shared and fused, resulting in a +10.9% accuracy improvement over a standard MobileNetV3 model. Our approach is evaluated on a newly created industrial dataset consisting of 2,610 slate tile images from six extraction sites. The results demonstrate the effectiveness of the proposed approach for object re-identification and classification in an industrial setting.
混合深度学习在工业板岩瓷砖溯源与分类中的应用 / Hybrid Deep Learning for Traceability and Classification of Industrial Slate Tiles
本研究提出了一种结合图像特征匹配与分类的轻量级混合深度学习模型,能够高效识别板岩瓷砖的个体来源并判断其开采产地,通过共享和融合两种网络的特征,显著提升了工业场景下的准确率。
源自 arXiv: 2607.04811