High Performance Visual Inspection Service Architecture - Squeezing the Most Out of Commodity Servers

G. Hu, Peng Ji, Jun Zhu, Bowen Wei, Zhe Yan, Lei He
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引用次数: 1

Abstract

The success of deep neural networks (DNN) in solving general machine vision problems has agitated a wave of its adoption in automated visual inspection solutions. Especially, DNN is able to learn by itself those relevant image features to reach a model that is robust to image quality variation, which promises very scalable solutions. The correlation between image acquisition hardware and image processing software, which is typical in traditional solutions, is alleviated. On this basis, we propose a novel visual inspection service architecture that is scalable, economic and reliable. The realization challenges of the visual inspection service are analyzed and the corresponding designs in model composition and model scheduling are presented. Special focus is placed on the runtime performance of inspection models and the efficient use of the computing resources of contemporary commodity servers.
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高性能视觉检测服务架构——最大限度地利用商品服务器
深度神经网络(DNN)在解决一般机器视觉问题方面的成功激起了在自动视觉检测解决方案中采用深度神经网络的浪潮。特别是,深度神经网络能够自己学习那些相关的图像特征,以达到对图像质量变化具有鲁棒性的模型,这承诺了非常可扩展的解决方案。减轻了传统解决方案中图像采集硬件和图像处理软件之间的相关性。在此基础上,提出了一种可扩展、经济可靠的视觉检测服务体系结构。分析了视觉检测服务的实现挑战,并在模型组成和模型调度方面进行了相应的设计。特别关注的是检查模型的运行时性能和当代商品服务器计算资源的有效利用。
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