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Efficient boosting for synthesizing a minimally compact reduced complexity correlation filter bank for biometric identification

机译:高效升压,用于合成最小紧凑,降低复杂度的相关滤波器组,以进行生物识别

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This paper addresses how to efficiently select which training images to use from an enrollment video sequence to train a correlation filter based face recognition system. Efficient enrollment and the selective use of training images from a video sequence of face images is a very vital component that determines the success of any face recognition system. We describe an efficient boosting algorithm for synthesizing a minimal set of filters that capture the different facial variations during the enrollment phase such that the resulting filter bank can also maintain good generalization and discrimination for recognition and verification. This is done by determining a fitness metric for each filter that determines the amount of facial variation capacity represented by that filter. If that capacity is exceeded by using more training images than needed for that filter then the resulting filter quality is compromised and discrimination performance can degrade leading to lower acceptance and rejection rates. We use advanced correlation filters that have shown to exhibit built-in illumination tolerance.
机译:本文讨论如何有效地从注册视频序列中选择要使用哪些训练图像来训练基于相关过滤器的人脸识别系统。有效注册和从面部图像视频序列中选择使用训练图像是决定任何面部识别系统成功与否的非常重要的组成部分。我们描述了一种有效的增强算法,用于合成一组最小的滤镜,这些滤镜可以在注册阶段捕获不同的面部变化,从而使生成的滤镜库也可以保持良好的归纳和判别能力,以进行识别和验证。这是通过为每个过滤器确定适合度度量来完成的,该适合度度量确定该过滤器代表的面部变化能力的数量。如果通过使用比该过滤器所需的更多的训练图像超出了该容量,则最终的过滤器质量将受到损害,辨别性能可能会下降,从而导致较低的接收率和拒绝率。我们使用的高级相关滤波器已显示出内置的照明容差。

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