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Fuzzy-appearance manifold and fuzzy nearest distance for face recognition on various poses and degraded images

机译:模糊外观歧管和模糊最近的距离对各种姿势和降级图像的人脸识别

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This paper introduces an approach to recognize face from 3D space on 2D image using fuzzy vector manifolds and nearest distance. We employ fuzzy vector to help the system minimize negative effect coming from noise and image degradation. On the training set, crisp vector representation of images will be transformed to its fuzzy vector representation using a specific triangle fuzzification method. Then, a linear interpolation method will be used to construct a manifold, making the system able to cope with pose variation across data. In the testing phase, we transform every unknown data image to its fuzzy-vector representation using the parameter we obtained from training phase. We then project the unknown fuzzy vector to the manifolds using a technique called fuzzy nearest distance. The output of the system will be the index of manifold that the data mostly belong to, in this case the prediction of person. This system is applied to recognize photos on our databases which some of them are influenced by noises. Experiment result show that the system is able to recognize person on 98% success rate, with a 3% reduction if noises were added.
机译:本文介绍了一种使用模糊矢量歧管和最近的距离从2D图像上从3D空间识别面部的方法。我们采用模糊矢量来帮助系统最小化来自噪声和图像劣化的负面影响。在训练集上,使用特定的三角形模糊化方法将图像的清晰矢量表示转换为其模糊矢量表示。然后,将使用线性插值方法来构造歧管,使得系统能够应对跨数据的姿态变化。在测试阶段,我们使用从训练阶段获得的参数将每个未知的数据图像转换为其模糊矢量表示。然后,我们使用称为模糊最近距离的技术将未知的模糊矢量投影到歧管。系统的输出将是数据主要属于的歧管的索引,在这种情况下是对人的预测。应用该系统以识别我们的数据库上的照片,其中一些受到噪声的影响。实验结果表明,系统能够识别98 %成功率的人,如果添加噪音,则减少3 %。

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