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A Novel Coupled Template for Face Recognition Based on a Convolutional Neutral Network

机译:基于卷积神经网络的新型人脸识别耦合模板

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Skin segmentation can effectively improve accuracy of face searching in a picture. However, it is a difficult problem to segment face skin from a photo with complex background. In this paper, a novel coupled template for face regions extraction after skin segmentation is proposed to overcome the difficulty that face regions are largely sticky to similar skin backgrounds. The algorithm based on the coupled template is able to separate the face regions from similar skin regions correctly and enhance the correct rate of face region detection largely. Moreover, a prior knowledge of standard face region can be embedded into face searching process to locate the face position and then a well-trained convolutional neutral network is used to recognize faces so that the accuracy of face recognition can be improved further. The novel approach has a good adaptability to the image with complex background that results in many large sticky similar skin blocks. The classical basic architecture of convolutional neural network LeNet-5 is employed and only focuses on the accurate located-areas. The high recognition rate and low missing detection are obtained for the pictures with complex background especially with a large number of color blocks similar to skin.
机译:皮肤分割可以有效地提高图片中人脸搜索的准确性。然而,从具有复杂背景的照片中分割面部皮肤是一个难题。在本文中,提出了一种新颖的耦合模板,用于在皮肤分割后提取脸部区域,以克服脸部区域在很大程度上粘着于相似皮肤背景的难题。基于耦合模板的算法能够正确地从相似的皮肤区域中分离出人脸区域,并大大提高了人脸区域检测的正确率。此外,可以将标准面部区域的先验知识嵌入面部搜索过程中以定位面部位置,然后使用训练有素的卷积神经网络来识别面部,从而可以进一步提高面部识别的准确性。新颖的方法对具有复杂背景的图像具有良好的适应性,从而导致许多大的粘性相似皮肤块。卷积神经网络LeNet-5的经典基本架构被采用,仅关注精确的定位区域。对于背景复杂的图片,尤其是与皮肤相似的大量色块,可获得较高的识别率和较低的漏检率。

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