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Robust Moment Invariant with Higher Discriminant Factor Based on Fisher Discriminant Analysis for Symbol Recognition

机译:基于Fisher判别分析的符号识别,具有更高判别因子的强大矩阵

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In this paper, we propose a robust moment invariant which has a higher discriminant factor based on Fisher linear discriminant analysis that can deal with noise degradation, deformation of vector distortion, translation, rotation and scale invariant. The proposed system for the symbol recognition consists of 3 steps: 1) degradation model preprocessing step, 2) a different normalization for the second moment invariant and a measure for roundness and eccentricity for feature extraction step, 3) k-Nearest Neighbor with Mahalanobis distance compared to Euclidean distance and k-D tree for classifier. A comparison using multi-layer feed forward neural network classifier is given. An improvement of the discriminant factor around 4 times is achieved compared to that of the original normalized second moments using GREC 2005 dataset. Experimentally we tested our system with 3300 training images using k-NN classifier and on all 9450 images given in the dataset and achieved recognition rates higher than 86 % for all degradation models and 96 % for degradation models 1 to 4.
机译:在本文中,我们提出了一种坚固的力矩不变,其基于Fisher线性判别分析具有更高的判别因子,可以应对噪声劣化,矢量失真的变形,转换,旋转和规模不变。对于符号识别所提出的系统包括3个步骤:1)降解模型预处理步骤,2)不同的归一化的第二矩不变量和圆度和偏心用于特征提取步骤的措施,3)k-最近与Mahalanobis距离邻居与欧几里德距离和KD树相比分类器。给出了使用多层前馈神经网络分类器的比较。与使用GREC 2005 DataSet的原始标准化第二矩相比,实现了判别因子的改善左右4次。实验我们测试我们的系统使用K-NN分类3300个训练图像和数据集中给定的,取得了识别率超过86%,为所有车型的降解和96%降解车型1〜4全部9450张图片。

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