用于机械零件自动识别的无人机器视觉系统

Tushar Jain, Meenu Gupta, H. K. Sardana
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引用次数: 2

摘要

目的机器视觉或计算机视觉领域一直在快速发展。与大多数成熟的领域不同,该领域的发展既有概念和技术的广度,也有深度。机器视觉技术正被应用于从医学成像到遥感、工业检测到文件处理、纳米技术到多媒体数据库等领域。机器视觉系统的目标是根据图像创建真实世界的模型。计算机视觉识别在许多应用领域引起了研究人员的注意,并被用于解决许多问题。本文的目的是考虑对机械工业中制造的物体的识别。机械制造的零件由于制造过程(包括机器故障、工具磨损和原材料变化)而难以识别。本文考虑了对此类零件的对象进行识别和分类的问题。使用五个对象的RGB图像作为输入。傅立叶描述符技术用于识别物体。人工神经网络(ANN)用于五种不同对象的分类。这些对象保持在不同的方向,以实现不变的旋转、平移和缩放。采用带有反向传播学习算法的前馈神经网络对网络进行训练。本文展示了不同的网络结构和隐藏节点数量对对象分类精度的影响。设计/方法论/方法本研究的总体目标是开发基于特征的强度图像二维零件识别算法。目前大多数工业视觉系统都是定制设计的系统,只能处理特定的应用。这并不奇怪,因为不同的应用具有不同的几何形状和不同的零件反射特性。FindingsClassification的准确性会受到不断变化的网络架构的影响。人工神经网络计算量大且速度慢。总共有20个隐藏节点的网络结构在500次迭代中产生了最好的结果(基于总体准确度的90%准确度和基于κ系数的87.50%准确度)。因此,选择了20个隐藏节点进行进一步分析。学习率设置为0.1,使用的动量项为0.2,可以获得最佳结果架构。混淆矩阵也显示了分类器的准确性。因此,有了这些结果,所提出的系统可以有效地用于更多的对象。独创性/价值在计算了不同网络架构下整体精度的变化后,获得了50张测试图像样本量不同配置的结果。表II显示了在这些对象的测试样本上获得的混淆矩阵的结果。
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Unmanned machine vision system for automated recognition of mechanical parts
Purpose The field of machine vision, or computer vision, has been growing at fast pace. The growth in this field, unlike most established fields, has been both in breadth and depth of concepts and techniques. Machine vision techniques are being applied in areas ranging from medical imaging to remote sensing, industrial inspection to document processing and nanotechnology to multimedia databases. The goal of a machine vision system is to create a model of the real world from images. Computer vision recognition has attracted the attention of researchers in many application areas and has been used to solve many ranges of problems. The purpose of this paper is to consider recognition of objects manufactured in mechanical industry. Mechanically manufactured parts have recognition difficulties due to manufacturing process including machine malfunctioning, tool wear and variations in raw material. This paper considers the problem of recognizing and classifying the objects of such parts. RGB images of five objects are used as an input. The Fourier descriptor technique is used for recognition of objects. Artificial neural network (ANN) is used for classification of five different objects. These objects are kept in different orientations for invariant rotation, translation and scaling. The feed forward neural network with back-propagation learning algorithm is used to train the network. This paper shows the effect of different network architecture and numbers of hidden nodes on the classification accuracy of objects. Design/methodology/approach The overall goal of this research is to develop algorithms for feature-based recognition of 2D parts from intensity images. Most present industrial vision systems are custom-designed systems, which can only handle a specific application. This is not surprising, since different applications have different geometry, different reflectance properties of the parts. Findings Classification accuracy is affected by the changing network architecture. ANN is computationally demanding and slow. A total of 20 hidden nodes network structure produced the best results at 500 iterations (90 percent accuracy based on overall accuracy and 87.50 percent based on κ coefficient). So, 20 hidden nodes are selected for further analysis. The learning rate is set to 0.1, and momentum term used is 0.2 that give the best results architectures. The confusion matrix also shows the accuracy of the classifier. Hence, with these results the proposed system can be used efficiently for more objects. Originality/value After calculating the variation of overall accuracy with different network architectures, the results of different configuration of the sample size of 50 testing images are taken. Table II shows the results of the confusion matrix obtained on these testing samples of objects.
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CiteScore
3.50
自引率
0.00%
发文量
21
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