In the process of face recognition, face acquisition data is seriously distorted. Many face images collected are blurred or even missing. Faced with so many problems, the traditional image inpainting was based on structure, while the current popular image inpainting method is based on deep convolutional neural network and generative adversarial nets. In this paper, we propose a 3D face image inpainting method based on generative adversarial nets. We identify two parallels of the vector to locate the planer positions. Compared with the previous, the edge information of the missing image is detected, and the edge fuzzy inpainting can achieve better visual match effect. We make the face recognition performance dramatically boost
Image inpainting, a technique of completing missing or corrupted image regions in undetected form...
Traditional reconstruction techniques extract information from the object’s geometry or one or more ...
Existing image inpainting methods based on deep learning have made great progress. These methods eit...
Face image inpainting is a hot topic of image processing research in recent years.Due to the loss of...
Facial inpainting or face restoration is a process to reconstruct some missing region on face images...
As a research hotspot in the field of deep learning, image inpainting has important significance in ...
As a research hotspot in the field of deep learning, image inpainting is of great significance in pe...
Face recognition technology has been widely used in all aspects of people's lives. However, the accu...
Various problems existed in the image inpainting algorithms, which can’t meet people’s requirements ...
Various problems existed in the image inpainting algorithms, which can’t meet people’s requirements ...
Facial inpainting or face restoration is a process to reconstruct some missing region on face images...
Facial inpainting merupakan proeses merekonstruksi kembali bagian yang hilang pada citra wajah sedem...
Facial inpainting merupakan proeses merekonstruksi kembali bagian yang hilang pada citra wajah sedem...
Facial inpainting merupakan proeses merekonstruksi kembali bagian yang hilang pada citra wajah sedem...
In this paper, we propose an Enhanced Generative Model for Image Inpainting (EGMII). Unlike most sta...
Image inpainting, a technique of completing missing or corrupted image regions in undetected form...
Traditional reconstruction techniques extract information from the object’s geometry or one or more ...
Existing image inpainting methods based on deep learning have made great progress. These methods eit...
Face image inpainting is a hot topic of image processing research in recent years.Due to the loss of...
Facial inpainting or face restoration is a process to reconstruct some missing region on face images...
As a research hotspot in the field of deep learning, image inpainting has important significance in ...
As a research hotspot in the field of deep learning, image inpainting is of great significance in pe...
Face recognition technology has been widely used in all aspects of people's lives. However, the accu...
Various problems existed in the image inpainting algorithms, which can’t meet people’s requirements ...
Various problems existed in the image inpainting algorithms, which can’t meet people’s requirements ...
Facial inpainting or face restoration is a process to reconstruct some missing region on face images...
Facial inpainting merupakan proeses merekonstruksi kembali bagian yang hilang pada citra wajah sedem...
Facial inpainting merupakan proeses merekonstruksi kembali bagian yang hilang pada citra wajah sedem...
Facial inpainting merupakan proeses merekonstruksi kembali bagian yang hilang pada citra wajah sedem...
In this paper, we propose an Enhanced Generative Model for Image Inpainting (EGMII). Unlike most sta...
Image inpainting, a technique of completing missing or corrupted image regions in undetected form...
Traditional reconstruction techniques extract information from the object’s geometry or one or more ...
Existing image inpainting methods based on deep learning have made great progress. These methods eit...