Modified GAN for Natural Occlusion Detection and Inpainting of Raw Footage From Video Surveillance

G. PrithamSriram, S. PrasanaVenkatesh, P. DeepakRaj, Angelin Gladston
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Abstract

Low resolution and occlusion are mainly prominent in images taken from certain unconstrained environments such as raw footage from video surveillance. In this work, a deep generative adversarial network for joint face completion and face super-resolution is proposed. It will be really useful in the current COVID-19 scenario as people wearing masks are a common sight. Given an input of a low-resolution face image with occlusion, the generator aims to recover a high-resolution face image without occlusion. The discriminator uses a set of carefully designed losses to assure the high quality of the recovered high-resolution face images without occlusion. Experimental results on CelebA database show that the proposed approach outperforms the state-of-the-art methods in jointly performing face super-resolution and face completion, and shows good generalization ability in cross-database testing. MSSIM showed an accuracy of around 80% for test cases. The recorded values of generator adversarial loss, generator pixel loss, and discriminator loss are 0.93, 0.10, and 0.003, respectively.
改进的GAN用于视频监控原始素材的自然遮挡检测和图像修复
低分辨率和遮挡主要是在某些不受约束的环境中拍摄的图像中突出的,例如来自视频监控的原始镜头。在这项工作中,提出了一种用于联合人脸补全和人脸超分辨率的深度生成对抗网络。在当前的COVID-19情况下,这将非常有用,因为戴口罩的人很常见。给定具有遮挡的低分辨率人脸图像输入,该生成器旨在恢复无遮挡的高分辨率人脸图像。该鉴别器使用一组精心设计的损失来保证恢复的高分辨率人脸图像的高质量。在CelebA数据库上的实验结果表明,该方法在人脸超分辨和人脸补全方面优于现有方法,并在跨数据库测试中表现出良好的泛化能力。MSSIM显示测试用例的准确率约为80%。生成器对抗损耗、生成器像素损耗和鉴别器损耗的记录值分别为0.93、0.10和0.003。
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