基于水平集映射的饼干包装缺陷检测

Kunkun Xiong, Wensheng Li, Shuai Dong, Yuanlie He, Zhihua Yang
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引用次数: 0

摘要

饼干包装密封后必须彻底检查。然而,饼干包装缺陷检测仍然是一项具有挑战性的任务,由于在密封的微妙和复杂的纹理和缺乏缺陷的样品。为了克服这些困难,我们提出了一种基于水平集映射的多任务缺陷检测框架。首先,提出了一种新的分割任务标签——水平集映射(LSM),它利用图像灰度值来表示轮廓信息和缺陷位置信息;然后,设计了一个基于LSM的多任务框架,其主要任务是预测包装缺陷状态的二值分类任务,辅助任务是提取饼干包装轮廓和定位缺陷的语义分割任务。两个任务共享特征提取器,辅助任务提供有监督的空间注意,引导特征提取器关注包装的轮廓。为了验证多任务框架的性能,建立了不同采集环境下的两个真实数据集。实验结果表明,与其他分类网络和目标检测框架相比,基于LSM的多任务框架可以显著提高饼干包装缺陷检测任务的准确率。
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Defect detection of biscuit packaging based on level set map
Biscuit packaging must be thoroughly inspected after being sealed. However, biscuit packaging defect detection remains a challenging task due to both subtle and complex textures at the seal and the lack of defective samples. To overcome these difficulties, we propose a multi-task defect detection framework based on level set map. First, level set map (LSM), a new segmentation task label is proposed, which can represent both contour information and defect location information by using image gray value. Then, a multi-task framework based on LSM is designed, the main task of which is the binary classification task to predict the defect state of the packaging, and the auxiliary task is the semantic segmentation task of extracting biscuit packaging contours and locating defects. The two tasks share the feature extractor, and the auxiliary task provides a supervised spatial attention to guide the feature extractor to focus on the contour of the packaging. To verify the performance of the multi-task framework, two real datasets under different acquisition environments are established. The experimental results show that, compared with other classification networks and object detection framework, the multi-task framework based on LSM can significantly improve the accuracy of the biscuit packaging defect detection task.
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