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Automatic Reel Editing in Chip on Film Quality Control With Computer Vision

机译:电影质量控制芯片中的自动卷轴编辑

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摘要

Chip on film (COF) is a special packaging technology to pack integrated circuits in a flexible carrier tape. Chips packed with COF are primarily used in the display industry. Reel editing is a critical step in COF quality control to remove sections of congregating NG (not good) chips from a reel. Today, COF manufactures hire workers to count consecutive NG chips in a rolling reel with naked eyes. When the count is greater than a preset number, the corresponding section is removed. A novel method using object detection and object tracking is proposed to solve this problem. Object detection techniques including convolutional neural network (CNN), template matching (TM), and scale invariant feature transform (SIFT) were used to detect NG marks, and object tracking was used to track them with IDs so that congregating NG chips could be counted reliably. Using simulation videos similar to worksite scenes, experiments show that both CNN and TM detectors could solve the reel editing problem, while SIFT detectors failed. Furthermore, TM is better than CNN by yielding a real time solution.
机译:芯片上的芯片(COF)是一种在柔性载带中包装集成电路的特殊包装技术。用COF包装的芯片主要用于显示行业。 Reel编辑是COF质量控制的关键步骤,以从卷轴中删除聚集NG(不好)芯片的部分。如今,COF制造租赁工人在滚动卷轴中使用赤裸的眼睛计算连续的NG芯片。当计数大于预设号时,将移除相应的部分。建议使用对象检测和对象跟踪的新方法来解决这个问题。对象检测技术包括卷积神经网络(CNN),模板匹配(TM)和比例不变特征变换(SIFT)检测NG标记,并且使用对象跟踪来跟踪IDS,以便可以计算聚集的NG芯片可靠地。使用类似于工地场景的仿真视频,实验表明,CNN和TM检测器都可以解决卷轴编辑问题,而Sift检测器失败。此外,通过产生实时解决方案,TM优于CNN。

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