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Sparse discriminative region selection algorithm for face recognition

机译:人脸识别的稀疏判别区域选择算法

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摘要

We introduce a sparse region selection problem and an effective solution algorithm where one seeks for a small subset of points in a two-dimensional plane (e.g., image) that are considered to be the most important. Its direct application is the face recognition in machine vision in which we aim to find a group of key pixels in a facial image that are the most salient in discriminating subjects from others. Sparseness plays a key role in enhancing the prediction performance since observed data often contain considerable amount of noise potentially. In addition to the sparseness constraint, the active features need to be spatially coherent so as to form meaningful contiguous areas, not just random scatters. We formulate the problem and approximate it as convex optimization with nonnegative L1 constraints, where we introduce an efficient solution method that modifies the gradient Lasso algorithm that was previously used for solving convex problems with L1 constraints. We demonstrate that the proposed approach not only yields superior prediction performance to the existing methods on several real-world benchmark face datasets, but also discovers regions around the key facial features such as eyes/eyebrows and nose/mouth that are widely believed to be important for face recognition.
机译:我们介绍了一种稀疏区域选择问题和一种有效的求解算法,其中人们在二维平面(例如图像)中寻找被认为是最重要的一点点子集。它的直接应用是机器视觉中的面部识别,我们的目标是在面部图像中找到一组最能区分对象的关键像素。稀疏性在增强预测性能方面起着关键作用,因为观察到的数据通常可能包含相当数量的噪声。除了稀疏约束之外,活动特征还需要在空间上保持连贯,以便形成有意义的连续区域,而不仅仅是随机散布。我们对问题进行表述并将其近似为具有非负L1约束的凸优化,在此我们引入了一种有效的求解方法,该方法修改了以前用于解决具有L1约束的凸问题的梯度Lasso算法。我们证明了所提出的方法不仅在几种现实世界基准面部数据集上产生了比现有方法更好的预测性能,而且还发现了被广泛认为重要的关键面部特征(例如眼/眉毛和鼻子/嘴巴)周围的区域用于面部识别。

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