IEEE Trans Neural Netw Learn Syst. 2018 Jun;29(6):2502-2515. doi: 10.1109/TNNLS.2017.2693221. Epub 2017 May 10.
This paper proposes a novel method, called robust latent subspace learning (RLSL), for image classification. We formulate an RLSL problem as a joint optimization problem over both the latent SL and classification model parameter predication, which simultaneously minimizes: 1) the regression loss between the learned data representation and objective outputs and 2) the reconstruction error between the learned data representation and original inputs. The latent subspace can be used as a bridge that is expected to seamlessly connect the origin visual features and their class labels and hence improve the overall prediction performance. RLSL combines feature learning with classification so that the learned data representation in the latent subspace is more discriminative for classification. To learn a robust latent subspace, we use a sparse item to compensate error, which helps suppress the interference of noise via weakening its response during regression. An efficient optimization algorithm is designed to solve the proposed optimization problem. To validate the effectiveness of the proposed RLSL method, we conduct experiments on diverse databases and encouraging recognition results are achieved compared with many state-of-the-arts methods.
本文提出了一种新的方法,称为鲁棒潜在子空间学习(RLSL),用于图像分类。我们将 RLSL 问题表述为潜在 SL 和分类模型参数预测的联合优化问题,同时最小化:1)学习的数据表示与目标输出之间的回归损失,以及 2)学习的数据表示与原始输入之间的重构误差。潜在子空间可以作为一座桥梁,有望将原始视觉特征及其类别标签无缝连接起来,从而提高整体预测性能。RLSL 将特征学习与分类相结合,使得潜在子空间中学习到的数据表示更具判别性。为了学习一个稳健的潜在子空间,我们使用稀疏项来补偿误差,这有助于通过在回归过程中削弱噪声的响应来抑制噪声的干扰。设计了一种有效的优化算法来解决所提出的优化问题。为了验证所提出的 RLSL 方法的有效性,我们在各种数据库上进行了实验,与许多最先进的方法相比,取得了令人鼓舞的识别结果。