Masked GANs for Face Completion: A Novel Deep Learning Approach
Anshuman Sharma,
Biswaroop Nath,
Tejaswini Kar
et al.
Abstract:INTRODUCTION: Recent deep learning based image editing methods have achieved promising results for removing object in an image but fail to generate appreciable performance for removing large objects of complex nature, especially mask from facial images. Towards this goal the objective of this work is to remove mask objects in facial images. In this study, authors propose a novel approach for face completion using Generative Adversarial Networks (GANs) that utilize masked data. This technology can help in image… Show more
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