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SeLENet: A Semi-Supervised Low Light Face Enhancement Method for Mobile Face Unlock

机译:SELENET:移动脸部解锁半监控的低光面增强方法

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Facial recognition is becoming a standard feature on new smartphones. However, the face unlocking feature of devices using regular 2D camera sensors exhibits poor performance in low light environments. In this paper, we propose a semi-supervised low light face enhancement method to improve face verification performance on low light face images. The proposed method is a network with two components: decomposition and reconstruction. The decomposition component splits an input low light face image into face normals and face albedo, while the reconstruction component enhances and reconstructs the lighting condition of the input image using the spherical harmonic lighting coefficients of a direct ambient white light. The network is trained in a semi-supervised manner using both labeled synthetic data and unlabeled real data. Qualitative results demonstrate that the proposed method produces more realistic images than the state-of-the-art low light enhancement algorithms. Quantitative experiments confirm the effectiveness of our low light face enhancement method for face verification. By applying the proposed method, the gap of verification accuracy between extreme low light and neutral light face images is reduced from approximately 3% to 0.5%.
机译:面部识别正在成为新智能手机上的标准功能。然而,使用常规2D摄像机传感器的设备的面部解锁特征在低光环境中表现出差的性能。在本文中,我们提出了一种半监控的低光面增强方法,以改善低光面图像的面部验证性能。所提出的方法是具有两个组件的网络:分解和重建。分解部件将输入低光面部图像成面法线和面反照率,而重构组件可以增强并重构使用直接环境白光的球谐照明系数将输入图像的照明条件。网络使用标记的合成数据和未标记的实际数据以半监督方式培训。定性结果表明,所提出的方法产生比最先进的低光增强算法更现实的图像。定量实验证实了我们低轻面增强方法对面部验证的有效性。通过应用所提出的方法,极低光和中性光面图像之间的验证精度的间隙从大约3%降低到0.5%。

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