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首页> 外文期刊>IJIDeM: International Journal on Interactive Design and Manufacturing >Object recognition and classification by mixed finite element method and invariants of orthogonal adapted-Legendre moments
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Object recognition and classification by mixed finite element method and invariants of orthogonal adapted-Legendre moments

机译:对象识别和分类,通过混合有限元方法和正交适应legendre时刻的不变性

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In this paper, we present a new technique of extraction of descriptor vectors of the images and a new 2D image classification system especially valid for the image databases which contain noisy or geometrically distorted objects. This system consists of three steps. In the first steps, we use an image denoising technique by solving the Perona-Malik equations using the mixed finite element method based on Taylor-Hood finite element. In the second, we extract the descriptor vectors from the images by using the orthogonal moments applied to the obtained denoised images. In this context we present a new set of orthogonal polynomials based on orthogonal Legendre polynomials, we call them orthogonal adapted-Legendre polynomials. This set of orthogonal polynomials is used to define a new type of orthogonal moments. This helps to build a set of orthogonal moments that are invariant to translation, rotation and scale. These invariant moments are derived algebraically from the invariant geometric moments. In the third steps, we use the multi layer perceptron neural network where the calculated descriptor vectors are the inputs of the input layer. To show the effectiveness of our approach we perform experimental tests on two databases and we present a comparative study with other well-known classification systems. The experimental results obtained show the superiority of our system.
机译:在本文中,我们提出了一种新的图像的描述符的提取技术和新的2D图像分类系统,特别适用于含有噪声或几何扭曲对象的图像数据库。该系统由三个步骤组成。在第一步中,我们通过使用基于泰勒罩有限元的混合有限元法求解PERONA-MALIK方程来使用图像去噪技术。在第二,我们通过使用应用于所获得的去噪图像的正交矩来提取来自图像的描述符矢量。在这种情况下,我们提出了一组基于正交的Legendre多项式的新的正交多项式,我们称之为正交适应图例多项式。这组正交多项式用于定义一种新型的正交矩。这有助于构建一组正交的时刻,这些正常时刻是不变的转换,旋转和缩放。这些不变的时刻是从不变的几何时刻派生的代数。在第三步骤中,我们使用多层Perceptron神经网络,其中计算的描述符矢量是输入层的输入。为了表明我们的方法的有效性,我们对两种数据库进行实验测试,我们与其他公知的分类系统进行了比较研究。获得的实验结果显示了我们的系统的优越性。

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