The model-based gait recognition methods usually adopt the pedestrian walking postures to identify human beings. However, existing methods did not explicitly resolve the large intra-class variance of human pose due to camera views changing. In this paper, we propose to generate multi-view pose sequences for each single-view pose sample by learning full-rank transformation matrices via lower-upper generative adversarial network (LUGAN). By the prior of camera imaging, we derive that the spatial coordinates between cross-view poses satisfy a linear transformation of a full-rank matrix, thereby, this paper employs the adversarial training to learn transformation matrices from the source pose and target views to obtain the target pose sequences. To this end, we implement a generator composed of graph convolutional (GCN) layers, fully connected (FC) layers and two-branch convolutional (CNN) layers: GCN layers and FC layers encode the source pose sequence and target view, then CNN branches learn a lower triangular matrix and an upper triangular matrix, respectively, finally they are multiplied to formulate the full-rank transformation matrix. For the purpose of adversarial training, we further devise a condition discriminator that distinguishes whether the pose sequence is true or generated. To enable the high-level correlation learning, we propose a plug-and-play module, named multi-scale hypergraph convolution (HGC), to replace the spatial graph convolutional layer in baseline, which could simultaneously model the joint-level, part-level and body-level correlations. Extensive experiments on two large gait recognition datasets, i.e., CASIA-B and OUMVLP-Pose, demonstrate that our method outperforms the baseline model and existing pose-based methods by a large margin.
翻译:以模型为基础的轨迹识别方法通常采用行人行走姿势来识别人。 但是, 现有方法并未明确解决由于摄像师观点变化而导致的大型类内人造形差异。 在本文中, 我们提议通过低端增压基因对抗网络( LUGAN ) 学习全端变换矩阵, 给每个单一视图的样本生成多视角的立体序列。 在摄像成像之前, 我们得出, 交叉视图之间的空间坐标可以满足全端矩阵的直线转换, 因此, 本文使用对称培训来学习源的变换矩阵和目标视图, 以获得目标的排序序列。 为此, 我们建议为每个单一视图生成由平面平面平面( GCN ) 层和两层相连接的变形矩阵( CNN ) 。 GCN 平面和 FC 将源的序列编码为序列和目标视图, 然后CN 分支学习一个更低的三角矩阵和上层三角矩阵, 最终它们会化成全端变式矩阵。 为了进行敌对式的比级培训, 我们进一步设计了双级的基级变式变形模型,, 或高层的变形模型,, 将演示级变形变形模型 。