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Can We See More? Joint Frontalization and Hallucination of Unaligned Tiny Faces

机译:我们能看到更多吗?联合级化和未对齐的小脸幻觉

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In popular TV programs (such as CSI), a very low-resolution face image of a person, who is not even looking at the camera in many cases, is digitally super-resolved to a degree that suddenly the person's identity is made visible and recognizable. Of course, we suspect that this is merely a cinematographic special effect and such a magical transformation of a single image is not technically possible. Or, is it? In this paper, we push the boundaries of super-resolving (hallucinating to be more accurate) a tiny, non-frontal face image to understand how much of this is possible by leveraging the availability of large datasets and deep networks. To this end, we introduce a novel Transformative Adversarial Neural Network (TANN) to jointly frontalize very-low resolution (i.e., 16 x 16 pixels) out-of-plane rotated face images (including profile views) and aggressively super-resolve them (8x), regardless of their original poses and without using any 3D information. TANN is composed of two components: a transformative upsampling network which embodies encoding, spatial transformation and deconvolutional layers, and a discriminative network that enforces the generated high-resolution frontal faces to lie on the same manifold as real frontal face images. We evaluate our method on a large set of synthesized non-frontal face images to assess its reconstruction performance. Extensive experiments demonstrate that TANN generates both qualitatively and quantitatively superior results achieving over 4 dB improvement over the state-of-the-art.
机译:在流行的电视节目(如CSI)中,一个人的一个非常低分辨率的人脸形象,甚至在许多情况下看不到相机,数字超出了一个人的身份,所以可以看到这个人的身份可识别的。当然,我们怀疑这只是一种电影特殊效果,并且在技术上没有这种图像的魔法变换。或者,是吗?在本文中,我们推动超级分辨的边界(幻觉更准确地)一个微小的非正面图像,以了解通过利用大型数据集和深网络的可用性来了解这一大部分。为此,我们介绍了一种新型的转化性逆势神经网络(田南),共同地化非常低分辨率(即,16×16像素)外平面旋转的面部图像(包括简档视图)并积极超级解析它们( 8x),无论原始姿势如何,都没有使用任何3D信息。 Tann由两个组件组成:变换性上采样网络,其体现了编码,空间变换和去卷积层,以及实施产生的高分辨率正面,以躺在与真正的正面图像相同的歧管上的鉴别网络。我们在大量合成的非正面图像上评估我们的方法,以评估其重建性能。广泛的实验表明,田南在定性和定量上的优越术后产生超过4 dB的最先进的改进。

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