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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Equidistant prototypes embedding for single sample based face recognition with generic learning and incremental learning
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Equidistant prototypes embedding for single sample based face recognition with generic learning and incremental learning

机译:等距原型嵌入,用于具有通用学习和增量学习的基于单个样本的面部识别

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We develop a parameter-free face recognition algorithm which is insensitive to large variations in lighting, expression, occlusion, and age using a single gallery sample per subject. We take advantage of the observation that equidistant prototypes embedding is an optimal embedding that maximizes the minimum one-against-the-rest margin between the classes. Rather than preserving the global or the local structure of the training data, our method, called linear regression analysis (LRA), applies a least- square regression technique to map gallery samples to the equally distant locations, regardless of the true structure of training data. Further, a novel generic learning method, which maps the intraclass facial differences of the generic faces to the zero vectors, is incorporated to enhance the generalization capability of LRA. Using this novel method, learning based on only a handful of generic classes can largely improve the face recognition performance, even when the generic data are collected from a different database and camera set-up. The incremental learning based on the Greville algorithm makes the mapping matrix efficiently updated from the newly coming gallery classes, training samples, or generic variations. Although it is fairly simple and parameter-free, LRA, combined with commonly used local descriptors, such as Gabor representation and local binary patterns, outperforms the state-of-the- art methods for several standard experiments on the Extended Yale B, CMU PIE, AR, and FERET databases.
机译:我们开发了一种无参数的人脸识别算法,该算法对每个主题使用单个画廊样本对光照,表情,遮挡和年龄的大变化不敏感。我们利用了这样的观察:等距原型嵌入是一种最佳嵌入,它可以最大化类之间的最小的“静息间隔”。我们的方法称为线性回归分析(LRA),而不是保留训练数据的全局或局部结构,而是应用最小二乘回归技术将画廊样本映射到等距的位置,而不管训练数据的真实结构如何。此外,结合了一种新颖的通用学习方法,该方法将通用面部的类内面部差异映射到零向量,以增强LRA的通用能力。使用这种新颖的方法,即使仅从少数几个通用类中学习,也可以从不同的数据库和相机设置中收集通用数据,从而大大提高人脸识别性能。基于Greville算法的增量学习使映射矩阵能够根据新近出现的画廊类别,训练样本或一般变化而有效地更新。尽管LRA非常简单且没有参数,但它结合了常用的本地描述符(例如Gabor表示法和本地二进制模式),在扩展Yale B,CMU PIE上进行的几种标准实验均优于最新方法,AR和FERET数据库。

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