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An integrated approach of Active Incremental fine-tuning, SegNet, and CRF for cutting tool wearing areas segmentation with small samples

机译:用于切割工具磨损区域分割的活动增量微调,SEGNET和CRF的集成方法

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摘要

Cutting tool wear is a critical factor that affects product quality in manufacturing processes and measuring the flank wear area is the most common method to assess the condition of the tool. Nowadays, the direct way based on image processing has been developed due to its high information content and does not rely on expensive subsidiary measurement equipment compared with the indirect way. However, the direct way, whether based on computer graphics or based on artificial intelligence, has a shortcoming. The traditional computer graphics methods have poor robustness, and the artificial intelligence way enabled with deep convolutional neural networks (DCNN) requires a large amount of data and it usually works well on its training data. This article proposes a new architecture based on active incremental fine-tuning, SegNet, and CRF. The new architecture integrates active incremental fine-tuning and conditional random field with an optimized SegNet. The new architecture has greatly improved the running speed and reduced the model size. Moreover, the architecture can be trained with small samples and obtain high precision. Finally, in our case, the architecture achieves an average accuracy rate of about 88% on a small dataset. The training process consumes about 4612 s, and the number of learning parameters is reduced to 788,006. The methodology in the article has been verified through experiments. (C) 2021 Elsevier B.V. All rights reserved.
机译:切削刀具磨损是影响制造过程中的产品质量的关键因素,测量侧翼磨损区域是评估工具状况的最常见方法。如今,基于图像处理的直接方式已经开发出其高信息内容,并且不依赖于昂贵的辅助测量设备与间接方式相比。但是,直接方式,无论是基于计算机图形还是基于人工智能,都有缺点。传统的计算机图形方法具有较差的鲁棒性,并且具有深度卷积神经网络(DCNN)启用的人工智能方式需要大量数据,并且通常在其训练数据上运行。本文提出了一种基于活动增量微调,SEGNET和CRF的新架构。新架构与优化的SEGNET集成了活动增量微调和条件随机字段。新架构大大提高了运行速度并降低了模型大小。此外,架构可以用小型样品培训并获得高精度。最后,在我们的情况下,该体系结构在小型数据集中实现了大约88%的平均精度率。训练过程消耗约4612秒,学习参数的数量减少到788,006。通过实验验证了文章中的方法。 (c)2021 elestvier b.v.保留所有权利。

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