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Pattern Recognition, Volume 96
Volume 96, December 2019
- Weicheng Xie, Xi Jia, Linlin Shen, Meng Yang:
Sparse deep feature learning for facial expression recognition.
- Byunghwan Jeon, Yeonggul Jang, Hackjoon Shim, Hyuk-Jae Chang:
Identification of coronary arteries in CT images by Bayesian analysis of geometric relations among anatomical landmarks.
- Ganchao Liu, Lingling Li, Licheng Jiao, Yongsheng Dong, Xuelong Li:
Stacked Fisher autoencoder for SAR change detection. - Chengzu Bai, Ren Zhang, Zeshui Xu, Rui Cheng, Baogang Jin, Jian Chen:
L1-norm-based kernel entropy components.
- Alper Aksaç, Tansel Özyer, Reda Alhajj:
CutESC: Cutting edge spatial clustering technique based on proximity graphs. - Nikolaos Passalis, Anastasios Tefas:
Discriminative clustering using regularized subspace learning. - Yi Chen, L. Billard:
A study of divisive clustering with Hausdorff distances for interval data.
- Zhi Chen, Pin-Han Ho:
Global-connected network with generalized ReLU activation. - Aida de Haro-García, Gonzalo Cerruela García, Nicolás García-Pedrajas:
Instance selection based on boosting for instance-based learners. - Hongzhi Liu, Yingpeng Du, Zhonghai Wu:
AEM: Attentional Ensemble Model for personalized classifier weight learning. - Mahsa Taheri, Zahra Moslehi, Abdolreza Mirzaei, Mehran Safayani:
A self-adaptive local metric learning method for classification. - Blaise Hanczar:
Performance visualization spaces for classification with rejection option. - Sandamal Weerasinghe, Sarah M. Erfani, Tansu Alpcan, Christopher Leckie:
Support vector machines resilient against training data integrity attacks.
- Jinyuan Zhao, Cunzhao Shi, Fuxi Jia, Yanna Wang, Baihua Xiao:
Document image binarization with cascaded generators of conditional generative adversarial networks. - Haisong Ding, Kai Chen, Qiang Huo:
Compressing CNN-DBLSTM models for OCR with teacher-student learning and Tucker decomposition. - Zhuoyao Zhong, Lei Sun, Qiang Huo:
Improved localization accuracy by LocNet for Faster R-CNN based text detection in natural scene images.
- Chunfeng Song, Yongzhen Huang, Yan Huang, Ning Jia, Liang Wang:
GaitNet: An end-to-end network for gait based human identification.
- Mingyang Qian, Jinqing Qi, Lihe Zhang, Mengyang Feng, Huchuan Lu:
Language-aware weak supervision for salient object detection. - Ayan Kumar Bhunia, Ankan Kumar Bhunia, Shuvozit Ghose, Abhirup Das, Partha Pratim Roy, Umapada Pal:
A deep one-shot network for query-based logo retrieval. - Lingling Zhang, Jun Liu, Minnan Luo, Xiaojun Chang, Qinghua Zheng, Alexander G. Hauptmann:
Scheduled sampling for one-shot learning via matching network. - Chenglong Li, Xinyan Liang, Yijuan Lu, Nan Zhao, Jin Tang:
RGB-T object tracking: Benchmark and baseline. - Yixing Zhu, Chixiang Ma, Jun Du:
Rotated cascade R-CNN: A shape robust detector with coordinate regression. - Feng Cheng, Shi-Lin Wang, Xizi Wang, Alan Wee-Chung Liew, Gongshen Liu:
A global and local context integration DCNN for adult image classification. - Yinjie Lei, Ziqin Zhou, Pingping Zhang, Yulan Guo, Zijun Ma, Lingqiao Liu:
Deep point-to-subspace metric learning for sketch-based 3D shape retrieval. - Min Li, Yao Zhang, Mingqing Xiao, Chen Xu, Weiqiang Zhang:
On Schatten-q quasi-norm induced matrix decomposition model for salient object detection. - Yuming Fang, Xiaoqiang Zhang, Feiniu Yuan, Nevrez Imamoglu, Haiwen Liu:
Video saliency detection by gestalt theory.
- Ganggang Dong, Hongwei Liu, Gangyao Kuang, Jocelyn Chanussot:
Target recognition in SAR images via sparse representation in the frequency domain. - Yang Cong, Baojie Fan, Dongdong Hou, Huijie Fan, Kaizhou Liu, Jiebo Luo:
Novel event analysis for human-machine collaborative underwater exploration. - Weiwei Qian, Shunming Li, Xingxing Jiang:
Deep transfer network for rotating machine fault analysis.
- Yu-Feng Yu, Chuan-Xian Ren, Min Jiang, Man-Yu Sun, Dao-Qing Dai, Guodong Guo:
Sparse approximation to discriminant projection learning and application to image classification. - Filippo Maria Bianchi, Lorenzo Livi, Karl Øyvind Mikalsen, Michael Kampffmeyer, Robert Jenssen:
Learning representations of multivariate time series with missing data. - Chun-Yang Zhang, Qi Zhao, C. L. Philip Chen, Wenxi Liu:
Deep compression of probabilistic graphical networks. - Chuan-Xian Ren, Xiao-Lin Xu, Zhen Lei:
A Deep and Structured Metric Learning Method for Robust Person Re-Identification. - Inpyo Hong, Youngbae Hwang, Daeyoung Kim:
Efficient deep learning of image denoising using patch complexity local divide and deep conquer.
- Wenyu Zhang, Zhenjiang Zhang, Lifu Wang, Han-Chieh Chao, Zhangbing Zhou:
Extreme learning machines with expectation kernels.
- Gianluca Gazzola, Myong Kee Jeong:
Dependence-biased clustering for variable selection with random forests.
- Javier Alvaro Vargas Muñoz, Marcos André Gonçalves, Zanoni Dias, Ricardo da Silva Torres:
Hierarchical Clustering-Based Graphs for Large Scale Approximate Nearest Neighbor Search.
- Jos B. T. M. Roerdink:
Corrigendum to "Group morphology" [Pattern Recognition 33(6) (2000) 877-895].
- Takehiro Kajihara, Takuya Funatomi, Haruyuki Makishima, Takahito Aoto, Hiroyuki Kubo, Shigehito Yamada, Yasuhiro Mukaigawa:
Non-rigid registration of serial section images by blending transforms for 3D reconstruction.
- Jun Tang, Zhibo Yang, Yongpan Wang, Qi Zheng, Yongchao Xu, Xiang Bai:
SegLink++: Detecting Dense and Arbitrary-shaped Scene Text by Instance-aware Component Grouping.
- Rameswar Panda, Amran Bhuiyan, Vittorio Murino, Amit K. Roy-Chowdhury:
Adaptation of person re-identification models for on-boarding new camera(s). - Jian Liang, Ran He, Zhenan Sun, Tieniu Tan:
Exploring uncertainty in pseudo-label guided unsupervised domain adaptation. - Samitha Herath, Basura Fernando, Mehrtash Harandi:
Using temporal information for recognizing actions from still images.
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