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Support Vector Machine based 3D Object Recognition in a Virtual Environment

机译:支持虚拟环境中基于矢量机基的3D对象识别

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Support vector machine (SVM) represent a new approach to pattern recognition and has been shown to be particularly successful in many fields. This paper presents a nonlinear SVMs based approach for 3D object recognition in a vehicular virtual experiment environment. The system outline and 3D images recognition algorithm are depicted. By simulation experiment and the comparison of the results between the recognition accuracy of SVM and BP network, we illustrate the potential of nonlinear SVMs on images classification of different objects. The excellent recognition rates achieved in the performed experiments indicate that nonlinear SVMs are well suited for 3D images recognition, especially in coping with small sample sizes. This is vital for achieving 3D object recognition and human-computer interaction rapidly and accurately in virtual experiment environment.
机译:支持向量机(SVM)表示模式识别的新方法,并且已被证明在许多领域中特别成功。本文介绍了车辆虚拟实验环境中的基于非线性SVMS的3D对象识别方法。描绘了系统轮廓和3D图像识别算法。通过仿真实验和SVM和BP网络识别准确性的结果的比较,我们说明了非线性SVMS对不同物体的图像分类的潜力。在进行的实验中实现的优异识别率表明非线性SVMS非常适合于3D图像识别,尤其是在应对小的样本尺寸方面。这对于在虚拟实验环境中快速准确地实现3D对象识别和人机交互至关重要。

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