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Optimized Deep Neural Network Architectures with Anchor Box optimization for Shipping Container Corrosion Inspection

机译:运输集装箱腐蚀检查的锚箱优化优化的深神经网络架构

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Shipping containers have revolutionized the way cargo is transported all around the world by ensuring the safety of shipments during their operating lives. When containers are in transit all year, they age and are exposed to different weather conditions. Therefore, containers are susceptible to deterioration and damages. The corroded surface of the shipping container is one of the most essential defects known on the surface of the containers that leads to severe damage such as hole in which more effort and cost are needed to repairing. The existing solution for shipping container corrosion detection is based on visual inspection that requires human experts to manually inspect containers that are time-consuming. To address this problem, in this paper the optimized deep neural network architecture is proposed to automatically inspect corrosion defects on the surface of shipping containers. In the proposed architecture, deep neural network models including Faster R-CNN, SSD-Mobile net, and SSD Inception V2 are employed and optimized with anchor box optimization to inspect the corrosion defect and localize it on the surface of shipping containers. The accuracy and speed of the deep neural networks in inspecting corrosion defects on shipping containers are compared and analyzed in experimental results. The experimental results demonstrate that the combination of deep neural networks and anchor box optimization improves the performance of models in detecting corrosion of the surface of shipping containers.
机译:运输集装箱通过确保运营生命中的出货量安全,彻底改变了货物在全球各地运输的方式。当容器全年都在运输过程中,他们的年龄并暴露于不同的天气条件。因此,容器易受恶化和损害的影响。装运容器的腐蚀表面是容器表面上已知的最基本的缺陷之一,导致严重损坏,例如需要更多努力和成本进行修复。运输集装箱腐蚀检测的现有解决方案基于目视检查,需要人类专家手动检查耗时的容器。为了解决这个问题,在本文中,提出了优化的深度神经网络架构,以自动检查运输容器表面上的腐蚀缺陷。在拟议的架构中,包括更快的R-CNN,SSD-Mobile Net和SSD成立V2的深度神经网络模型,并用锚盒优化进行了优化,以检查腐蚀缺陷并将其本地化在运输容器的表面上。在实验结果中比较和分析了深度神经网络在检查航运容器上检查腐蚀缺陷的准确性和速度。实验结果表明,深神经网络和锚箱优化的组合提高了模型在检测运输容器表面腐蚀方面的性能。

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