期刊文献+
共找到4篇文章
< 1 >
每页显示 20 50 100
Challenge and Algorithm of Face Alignment Development
1
作者 Yuzhen Sun 《Journal of Electronic Research and Application》 2020年第3期1-3,共3页
Face alignment is a key step in face recognition.The location of face feature points is located in the face image,and the difference between different faces is reduced by geometric transformation.This is the basic con... Face alignment is a key step in face recognition.The location of face feature points is located in the face image,and the difference between different faces is reduced by geometric transformation.This is the basic condition of face information processing,such as expression recognition,face tracking,head pose estimation and so on.Due to the interference of expression,illumination,shading and other factors,face alignment has a great challenge and is becoming the developmental direction.Different algorithms can solve different problems at different levels.Deep learning algorithm can solve the shortcomings of traditional algorithm,improve the accuracy of face alignment,and promote the development of face alignment. 展开更多
关键词 face alignment Development challenges ALGORITHMS
下载PDF
Structural Dependence Learning Based on Self-attention for Face Alignment
2
作者 Biying Li Zhiwei Liu +4 位作者 Wei Zhou Haiyun Guo Xin Wen Min Huang Jinqiao Wang 《Machine Intelligence Research》 EI CSCD 2024年第3期514-525,共12页
Self-attention aggregates similar feature information to enhance the features. However, the attention covers nonface areas in face alignment, which may be disturbed in challenging cases, such as occlusions, and fails ... Self-attention aggregates similar feature information to enhance the features. However, the attention covers nonface areas in face alignment, which may be disturbed in challenging cases, such as occlusions, and fails to predict landmarks. In addition, the learned feature similarity variance is not large enough in the experiment. To this end, we propose structural dependence learning based on self-attention for face alignment (SSFA). It limits the self-attention learning to the facial range and adaptively builds the significant landmark structure dependency. Compared with other state-of-the-art methods, SSFA effectively improves the performance on several standard facial landmark detection benchmarks and adapts more in challenging cases. 展开更多
关键词 Computer vision face alignment self-attention facial structure contextual information.
原文传递
Sparse Representation for Face Recognition Based on Constraint Sampling and Face Alignment 被引量:6
3
作者 Jing Wang Guangda Su +4 位作者 Ying Xiong Jiansheng Chen Yan Shang Jiongxin Liu Xiaolong Ren 《Tsinghua Science and Technology》 SCIE EI CAS 2013年第1期62-67,共6页
Sparse Representation based Classification (SRC) has emerged as a new paradigm for solving recognition problems. This paper presents a constraint sampling feature extraction method that improves the SRC recognition ... Sparse Representation based Classification (SRC) has emerged as a new paradigm for solving recognition problems. This paper presents a constraint sampling feature extraction method that improves the SRC recognition rate. The method combines texture and shape features to significantly improve the recognition rate. Tests show that the combined constraint sampling and facial alignment achieves very high recognition accuracy on both the AR face database (99.52%) and the CAS-PEAL face database (99.54%). 展开更多
关键词 CLASSIFICATION face recognition feature extraction face alignment
原文传递
Locality-constrained framework for face alignment
4
作者 Jie ZHANG Xiaowei ZHAO +3 位作者 Meina KAN Shiguang SHAN Xiujuan CHAI Xilin CHEN 《Frontiers of Computer Science》 SCIE EI CSCD 2019年第4期789-801,共13页
Although the conventional active appearance model (AAM) has achieved some success for face alignment, it still suffers from the generalization problem when be applied to unseen subjects and images. To deal with the ge... Although the conventional active appearance model (AAM) has achieved some success for face alignment, it still suffers from the generalization problem when be applied to unseen subjects and images. To deal with the gem eralization problem of AAM, we first reformulate the original AAM as sparsity-regularized AAM, which can achieve more compact/better shape and appearance priors by selecting nearest neighbors as the bases of the shape and appearance model. To speed up the fitting procedure, the sparsity in sparsity?regularized AAM is approximated by using the locality (i.e., AT-nearest neighbor), and thus inducing the locality-constrained active appearance model (LC-AAM). The LC-AAM solves a constrained AAM-like fitting problem with the K-nearest neighbors as the bases of shape and appearance model. To alleviate the adverse influence of inaccurate AT-nearest neighbor results, the locality constraint is further embedded in the discriminative fitting method denoted as LC-DFM, which can find better K-nearest neighbor results by employing shape-indexed feature, and can also tolerate some inaccurate neighbors benefited from the regression model rather than the generative model in AAM. Extensive experiments on several datasets demonstrate that our methods outperform the state-of-the-arts in both detection accuracy and generalization ability. 展开更多
关键词 locality-constrained AAM locality-constrained DFM face alignment sparsity-regularization
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部