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Reduced complexity correlation filters

机译:降低复杂度的相关过滤器

摘要

A methodology is described to reduce the complexity of filters for face recognition by reducing the memory requirement to, for example, 2 bits/pixel in the frequency domain. Reduced-complexity correlations are achieved by having quantized MACE, UMACE, OTSDF, UOTSDF, MACH, and other filters, in conjunction with a quantized Fourier transform of the input image. This reduces complexity in comparison to the advanced correlation filters using full-phase correlation. However, the verification performance of the reduced complexity filters is comparable to that of full-complexity filters. A special case of using 4-phases to represent both the filter and training/test images in the Fourier domain leads to further reductions in the computational formulations. This also enables the storage and synthesis of filters in limited-memory and limited-computational power platforms such as PDAs, cell phones, etc. An online training algorithm implemented on a face verification system is described for synthesizing correlation filters to handle pose/scale variations. A way to perform efficient face localization is also discussed. Because of the rules governing abstracts, this abstract should not be used to construe the claims.
机译:描述了一种方法,该方法通过将存储器需求减少到例如频域中的2位/像素来减少用于面部识别的滤波器的复杂性。通过具有量化的MACE,UMACE,OTSDF,UOTSDF,MACH和其他滤波器,以及输入图像的量化傅里叶变换,可以降低复杂度。与使用全相位相关的高级相关滤波器相比,这降低了复杂性。但是,降低复杂度的过滤器的验证性能可与全复杂度的过滤器相媲美。在傅立叶域中使用4相表示过滤器图像和训练/测试图像的特殊情况导致计算公式的进一步减少。这也使得能够在有限存储和有限计算的动力平台(例如PDA,手机等)中存储和合成滤波器。描述了在面部验证系统上实现的在线训练算法,用于合成相关滤波器以处理姿势/比例变化。还讨论了一种执行有效面部定位的方法。由于管理摘要的规则,因此不应使用此摘要来解释权利要求。

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