Following the success of machine vision systems for on-line automated quality control and inspection processes, an object recognition solution is presented in this work for two different specific applications, i.e., the detection of quality control items in surgery toolboxes prepared for sterilizing in a hospital, as well as the detection of defects in vessel hulls to prevent potential structural failures. The solution has two stages. First, a feature pyramid architecture based on Single Shot MultiBox Detector (SSD) is used to improve the detection performance, and a statistical analysis based on ground truth is employed to select parameters of a range of default boxes. Second, a lightweight neural network is exploited to achieve oriented detection results using a regression method. The first stage of the proposed method is capable of detecting the small targets considered in the two scenarios. In the second stage, despite the simplicity, it is efficient to detect elongated targets while maintaining high running efficiency.
翻译:在网上自动质量控制和检查程序机视系统取得成功之后,这项工作为两种不同的具体应用,即为医院消毒准备的手术工具箱中检测质量控制物品,以及检测船体缺陷以防止可能出现的结构性故障,提出了一个物体识别解决方案。该解决方案分为两个阶段。首先,利用基于单射多包检测器(SSD)的典型金字塔结构来改进探测性能,并采用基于地面真相的统计分析来选择一系列默认箱的参数。第二,利用轻量神经网络来利用回归法取得定向检测结果。拟议方法的第一阶段能够检测两种情景中考虑的小目标。在第二阶段,尽管简单,但发现长目标的效率很高,但发现长目标的效率很高。