Center for Computer Vision and Department of Mathematics, Sun Yat-Sen University, Guangzhou 510275, China.
IEEE Trans Image Process. 2013 May;22(5):1889-900. doi: 10.1109/TIP.2013.2237920. Epub 2013 Jan 4.
Face recognition with occlusion is common in the real world. Inspired by the works of structured sparse representation, we try to explore the structure of the error incurred by occlusion from two aspects: the error morphology and the error distribution. Since human beings recognize the occlusion mainly according to its region shape or profile without knowing accurately what the occlusion is, we argue that the shape of the occlusion is also an important feature. We propose a morphological graph model to describe the morphological structure of the error. Due to the uncertainty of the occlusion, the distribution of the error incurred by occlusion is also uncertain. However, we observe that the unoccluded part and the occluded part of the error measured by the correntropy induced metric follow the exponential distribution, respectively. Incorporating the two aspects of the error structure, we propose the structured sparse error coding for face recognition with occlusion. Our extensive experiments demonstrate that the proposed method is more stable and has higher breakdown point in dealing with the occlusion problems in face recognition as compared to the related state-of-the-art methods, especially for the extreme situation, such as the high level occlusion and the low feature dimension.
遮挡人脸识别在现实世界中很常见。受结构稀疏表示工作的启发,我们试图从两个方面探索遮挡引起的误差的结构:误差形态和误差分布。由于人类主要根据遮挡的区域形状或轮廓来识别遮挡,而不知道遮挡的确切情况,因此我们认为遮挡的形状也是一个重要特征。我们提出了一种形态图模型来描述误差的形态结构。由于遮挡的不确定性,遮挡引起的误差分布也是不确定的。然而,我们观察到,用相关熵诱导度量测量的无遮挡部分和遮挡部分的误差分别遵循指数分布。结合误差结构的两个方面,我们提出了用于遮挡人脸识别的结构稀疏误差编码方法。我们的广泛实验表明,与相关的最先进方法相比,所提出的方法在处理人脸识别中的遮挡问题时更稳定,鲁棒性更强,尤其是在极端情况下,如高遮挡和低特征维度。