Abstract
In recent years, Generative Adversarial Networks (GANs)-based illumination processing of facial images has made favorable achievements. However, some GANs-based illumination-processing methods only pay attention to the image quality and neglect the recognition accuracy, whereas others only crop partial face area and ignore the challenges to synthesize photographic face, background and hair when the original face image is under extreme illumination (Image under extreme illumination (extreme illumination conditions) means that we cannot see the texture and structure information clearly and most pixel values tend to 0 or 255.). Moreover, the recognition accuracy is low when the faces are under extreme illumination conditions. For these reasons, we present an elaborately designed architecture based on convolutional neural network and GANs for processing the illumination of facial image. We use ResBlock at the down-sampling stage in our encoder and adopt skip connections in our generator. This special design together with our loss can enhance the ability to preserve identity and generate high-quality images. Moreover, we use different convolutional layers of a pre-trained feature network to extract varisized feature maps, and then use these feature maps to compute loss, which is named multi-stage feature maps (MSFM) loss. For the sake of fairly evaluating our method against state-of-the-art models, we use four metrics to estimate the performance of illumination-processing algorithms. A variety of experimental data indicate that our method is superior to the previous models under various illumination challenges in illumination processing. We conduct qualitative and quantitative experiments on two datasets, and the experimental data indicate that our scheme obviously surpasses the state-of-the-art algorithms in image quality and identification accuracy.
Highlights
As is known to all, the performance of computer vision tasks will degrade when the image sensor is under poor light conditions
Some Generative Adversarial Networks (GANs)-based illumination-processing methods only pay attention to the image quality and neglect the recognition accuracy, whereas others only crop partial face area and ignore the challenges to synthesize photographic face, background and hair when the original face image is under extreme illumination conditions
Our purpose is to synthesize photographic face, background and hair when the original face image is under extreme illumination conditions and preserve identity effectively
Summary
As is known to all, the performance of computer vision tasks will degrade when the image sensor is under poor light conditions. Many reasons, such as the excessive exposure and the lack of exposure of the image sensor, the intensity and direction of the light, could make the lighting conditions complicated. Face appearances can change dramatically due to illumination variations [1]. Illumination processing of facial image under various illumination conditions is highly desired especially in face recognition, expression recognition and so on, due to its wide. In order to solve the illumination problem, experts around the world have come up with various solutions. Most works concentrate on the illumination processing of gray image [2,3,4,5,6,7]
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