A Deep Meta-Metric Learning Method for Few-Shot Weld Seam Visual Detection

Tianchen Zhu, Shiqiang Zhu, Jiakai Zhu, Wei Song, Cunjun Li, Hongjiang Ge, Jianjun Gu
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Abstract

Deep learning-based object detection algorithms are gradually promoted in industrial visual detection due to their versatility and high accuracy. These algorithms usually require large amounts of training data, however there is a problem of lack of training samples in actual weld seam detection tasks that challenges the weld seam visual detection task. To improve the performance on weld seam detection, especially for those few-shot tasks, this paper proposes a meta-metric learning method for few-shot weld seam detection. The method introduces a distance metric-learning module besides the meta-learning algorithm. By optimizing the training strategy and classification mode of the base detection model, the method accelerates the training process and improves the learning capability on few-shot weld seam samples. Compared with the base model, the mAP of the method proposed in this paper on the weld seam dataset is improved by about 8.9%.
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基于深度元度量学习的少射焊缝视觉检测方法
基于深度学习的目标检测算法因其通用性和准确性高,在工业视觉检测中逐渐得到推广。这些算法通常需要大量的训练数据,但在实际的焊缝检测任务中存在训练样本不足的问题,给焊缝视觉检测任务带来了挑战。为了提高焊缝检测的性能,特别是针对少射点任务,本文提出了一种用于少射点焊缝检测的元度量学习方法。该方法在元学习算法的基础上引入了距离度量学习模块。该方法通过优化基检测模型的训练策略和分类模式,加快了训练过程,提高了对少射焊缝样本的学习能力。与基本模型相比,本文方法在焊缝数据集上的mAP提高了约8.9%。
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