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Hidden Markov Model-based face recognition using selective attention

机译:隐藏的马尔可夫模型的面部识别使用选择性关注

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Sequential methods for face recognition rely on the analysis of local facial features in a sequential manner, typically with a raster scan. However, the distribution of discriminative information is not unifom over the facial surface. For instance, the eyes and the mouth are more informative than the cheek. We propose an extension to the sequential approach, where we take into account local feature saliency, and replace the raster scan with a guided scan that mimicks the scanpath of the human eye. The selective attention mechanism that guides the human eye operates by coarsely detecting salient locations, and directing more resources (the fovea) at interesting or informative parts. We simulate this idea by employing a computationally cheap saliency scheme, based on Gabor wavelet filters. Hidden Markov models are used for classification, and the observations, I.e. features obtained with the simulation of the scanpath, are modeled with Gaussian distributions at each state of the model. We show that by visiting important locations first, our method is able to reach high accuracy with much shorter feature sequences. We compare several features in observation sequences, among which DCT coefficients result in the highest accuracy.
机译:面部识别的顺序方法依赖于以顺序方式分析局部面部特征,通常具有光栅扫描。然而,鉴别信息的分布在面部表面上不是Unifom。例如,眼睛和嘴巴比脸颊更丰富。我们提出了对顺序方法的扩展,我们考虑到本地特征显着性,并用引导扫描更换光栅扫描,以模仿人眼的扫描路径。引导人眼的选择性注意机制通过粗略地检测突出位置来操作,并在有趣或信息零件处引导更多资源(FOVEA)。我们通过基于Gabor小波滤波器采用计算廉价的显着性方案来模拟这个想法。隐藏的马尔可夫模型用于分类,以及观察,即通过模拟扫描路径获得的功能,在模型的每个状态下用高斯分布式建模。我们展示通过首先访问重要地点,我们的方法能够以更短的特点序列达到高精度。我们比较观察序列中的若干特征,其中DCT系数在最高的精度下产生。

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