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首页> 外文期刊>Advanced Robotics: The International Journal of the Robotics Society of Japan >Real-Time Pose-Invariant Face Recognition Using the Efficient Second-Order Minimization and the Pose Transforming Matrix
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Real-Time Pose-Invariant Face Recognition Using the Efficient Second-Order Minimization and the Pose Transforming Matrix

机译:使用高效二阶最小化和姿势变换矩阵的实时姿势不变人脸识别

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摘要

We propose a real-time pose-invariant face recognition algorithm from a gallery of frontal images only. (i) We modified the second-order minimization method for the active appearance model (AAM). This allows the AAM to have the ability of correct convergence with little loss of frame rate. (ii) We proposed a pose transforming matrix that can eliminate warping artifacts of the warped face image from AAM fitting. This makes it possible to train a neural network as the face recognizer with one frontal face image of each person in the gallery set. (iii) We propose a simple method for pose recognition by using neural networks to select the proper pose transforming matrix. The proposed algorithm was evaluated on a set of 2000 facial images of 10 people (200 images for each person obtained at various poses), achieving a great improvement in recognition.
机译:我们仅从正面图像库中提出了一种实时姿态不变的人脸识别算法。 (i)我们修改了主动外观模型(AAM)的二阶最小化方法。这使AAM能够在不损失帧速率的情况下进行正确收敛。 (ii)我们提出了一个姿势变换矩阵,该矩阵可以从AAM拟合中消除变形的面部图像的变形伪影。这使得有可能使用画廊集中每个人的一张正面人脸图像来训练作为人脸识别器的神经网络。 (iii)我们提出了一种简单的姿势识别方法,即使用神经网络选择合适的姿势变换矩阵。该算法对一组10个人的2000张面部图像进行了评估(每个人在不同姿势下获得200张图像),从而极大地提高了识别能力。

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