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Monitoring Technology Research of Tool Wear Condition Based on Machine Vision

机译:基于机器视觉的工具磨损条件监测技术研究

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摘要

With the improvement of machining automatization, tool condition on-line monitoring has been a crucial problem and paid more attention. The image processing technology is introduced into the condition monitoring of cutting tool wear. The experimental system on the state of cutting tool condition monitor is designed. Through collecting the online images of cutting tool and machined surface, the Pulse-Couple Neutral Networks (PCNN) in the bionics is introduced in the monitor of tool wear for the first time in the paper. According to gray intensity in the field of tool wear is higher than the body of the tool and background, using the spatial neighbor and similar cluster gray of pixel, the binary image of the tool wear is segmented, and the field of tool wear is detected. Combined with the connected component integer number is calculated to judge the wear state of cutting tools. This method is proved by experimental results of the image segmentation of tool wear for the different stages in the turning, and the tool wear can be effectively judged.
机译:随着加工自动化程度的提高,刀具状态在线监测一直是一个关键的问题,更加注重。所述的图像处理技术被引入到状态监测切削刀具磨损的。上刀具条件监视器的状态的实验系统的设计。通过收集切削工具和加工表面的在线图像,脉冲夫妇神经网络(PCNN)在仿生学在工具磨损的监视器被引入用于在纸张的第一次。根据在工具磨损领域灰色强度比工具和背景,使用所述空间邻居和像素的相似集群灰色的主体越高,刀具磨损的二进制图像进行分割,并在检测到刀具磨损的场。与所连接的组件整数组合被计算来判断切削工具的磨损状态。此方法由刀具磨损的图像分割为在车削不同阶段的实验结果证明,和刀具磨损可以有效地判断。

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