工业检测嵌入式视觉系统的设计与实现

Intissar Sayahi, Sarra Ismail
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引用次数: 0

摘要

如今,图像处理和深度学习所提供的优势增加了它们的效率和普及程度。因此,视觉系统正在广泛激励研究人员开发新的协议和功能来优化现有的协议和功能。当然,技术上的挑战也不缺少,因为图像采集和处理单元的集成在工业环境中提出了相当大的问题。在上下文中,我们在工作中采用了硬件设计和软件开发相结合的混合方法。这种方法使系统结构紧凑、鲁棒性强、可靠性高,尤其在工业现场保证了多次操作的质量检验和验证。提出的解决方案是设计一个工业嵌入式视觉系统,将可扩展的硬件架构与自适应算法相匹配。本文提出了一种有效的自动化工业生产线质量控制模型。这项工作旨在通过提供一整套基于简单硬件实现、光学设置和深度学习算法的各种检测操作,从表面到尺寸检测,将多任务图像处理的概念整合到制造领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and Implementation of an Embedded Vision System for Industrial Inspection
Nowadays, the advantages offered by image processing and deep learning increased their efficiency popularity. Thus, vision systems are widely motivating researchers to develop new protocols and features to optimize existing ones. Of course, technical challenges do not lack since the integration of image acquisition and processing units industrial environment poses considerable problems. In context, we adopted in our work the hybrid approach combining hardware design and software development. This approach makes the system compact, robust and reliable, especially in industrial field to ensure several operations quality inspection and verification. The proposed solution is to design an industrial embedded vision system that matches scalable hardware architectures to adaptable algorithms. this paper, we propose an efficient model to automate quality control in an industrial production line. This work aims to integrate the concept of the multi-tasking image processing in the manufacturing field by offering a whole pack of various inspection operations, from surface to dimensional inspections, based on simple hardware implementations, optical setups, and deep learning algorithms.
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