In recent years, with the advent of deep-learning, face recognition has achieved exceptional success. However, many of these deep face recognition models perform much better in handling frontal faces compared to profile faces. The major reason for poor performance in handling of profile faces is that it is inherently difficult to learn pose-invariant deep representations that are useful for profile face recognition. In this paper, we hypothesize that the profile face domain possesses a latent connection with the frontal face domain in a latent feature subspace. We look to exploit this latent connection by projecting the profile faces and frontal faces into a common latent subspace and perform verification or retrieval in the latent domain. We leverage a coupled conditional generative adversarial network (cpGAN) structure to find the hidden relationship between the profile and frontal images in a latent common embedding subspace. Specifically, the cpGAN framework consists of two conditional GAN-based sub-networks, one dedicated to the frontal domain and the other dedicated to the profile domain. Each sub-network tends to find a projection that maximizes the pair-wise correlation between the two feature domains in a common embedding feature subspace. The efficacy of our approach compared with the state-of-the-art is demonstrated using the CFP, CMU Multi-PIE, IJB-A, and IJB-C datasets. Additionally, we have also implemented a coupled convolutional neural network (cpCNN) and an adversarial discriminative domain adaptation network (ADDA) for profile to frontal face recognition. We have evaluated the performance of cpCNN and ADDA and compared it with the proposed cpGAN. Finally, we have also evaluated our cpGAN for reconstruction of frontal faces from input profile faces contained in the VGGFace2 dataset.
翻译:近些年来,随着深层学习的到来, 面部识别已经取得了非凡的成功。 但是, 许多这些深面识别模型在处理面部与脸部面部对比方面表现得更好。 处理面部表现不佳的主要原因是, 处理面部表现不佳的内在困难在于, 很难在潜在的共同嵌入的子空间中了解剖面面面面部和面部的深层描述。 在本文中, 我们假设剖面域在潜伏特征子空间中与前面面面部有潜在连接。 我们期待通过将剖面面和前面面面面面部投射到共同潜藏的子空间, 并在潜面域进行核实或检索。 我们利用一个有条件的基因对面部对面面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面部对面的描述。 与前面面面面面面面的图像对内, 与前面部对内面面面面面面面面面面面面面面面面面面面面对内面对内面对面对面对面对面对面面对面对面对内对内对内部对面对内部对内对内对内对内对内对内对内对内对内对内对内对内对内对内对面对面对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对内对