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Binary Classification of Images for Applications in Intelligent 3D Scanning

机译:用于智能3D扫描的图像的二进制分类

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Three-dimensional (3D) scanning techniques based on photogrammetry, also known as Structure-from-Motion (SfM), require many two-dimensional (2D) images of an object, obtained from different viewpoints, in order to create its 3D reconstruction. When these images are acquired using closed-space 3D scanning rigs, which are composed of large number of cameras fitted on multiple pods, flash photography is required and image acquisition must be well synchronized to avoid the problem of 'misfired' cameras. This paper presents an approach to binary classification (as 'good' or 'misfired') of images obtained during the 3D scanning process, using four machine learning methods-support vector machines, artificial neural networks, k-nearest neighbors algorithm, and random forests. Input to the algorithms are histograms of regions determined to be of interest in the detection of image misfires. The considered algorithms are evaluated based on the prediction accuracy that they achieved on our dataset. The average prediction accuracy of 94.19% is obtained using the random forests approach under cross-validation. Therefore, the application of the proposed approach allows the development of an 'intelligent' 3D scanning system which can automatically detect camera misfiring and repeat the scanning process without the need for human intervention.
机译:基于摄影测量的三维(3D)扫描技术,也称为运动结构(SfM),需要从不同角度获得的物体的许多二维(2D)图像,以创建其3D重建。当使用由安装在多个吊舱上的大量摄像机组成的封闭空间3D扫描仪采集这些图像时,需要进行闪光灯摄影,并且必须很好地同步图像采集以避免“发射不正确”的摄像机的问题。本文提出了一种使用3种机器学习方法对3D扫描过程中获得的图像进行二值分类(“良好”或“误射”)的方法-支持向量机,人工神经网络,k最近邻算法和随机森林。输入算法的是区域的直方图,这些区域在检测图像不发亮时被确定为感兴趣的区域。考虑的算法是根据它们在我们的数据集上获得的预测准确性进行评估的。在交叉验证下,使用随机森林方法可获得94.19%的平均预测准确性。因此,所提出的方法的应用允许开发“智能” 3D扫描系统,该系统可以自动检测相机开火并重复扫描过程,而无需人工干预。

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