目标识别领域顶刊论文合集21篇

上传者: u011173841 | 上传时间: 2019-12-21 21:21:44 | 文件大小: 15.75MB | 文件类型: rar
目标识别领域顶刊论文合集21篇,主要为模式识别、多分类,雷达目标识别

文件下载

资源详情

[{"title":"( 22 个子文件 15.75MB ) 目标识别领域顶刊论文合集21篇","children":[{"title":"识别","children":[{"title":"Sparse representation-based SAR image target classification on the 10-class MSTAR data set.pdf <span style='color:#111;'> 2.15MB </span>","children":null,"spread":false},{"title":"SAR target recognition via joint sparse representation of monogenic signal.pdf <span style='color:#111;'> 2.18MB </span>","children":null,"spread":false},{"title":"Flexible clustered multi-task learning by learning representative tasks.pdf <span style='color:#111;'> 628.96KB </span>","children":null,"spread":false},{"title":"Radar target HRRP recognition based on reconstructive and discriminative dictionary learning.pdf <span style='color:#111;'> 483.11KB </span>","children":null,"spread":false},{"title":"Adaptive boosting for SAR automatic target recognition.pdf <span style='color:#111;'> 1.34MB </span>","children":null,"spread":false},{"title":"Convex multi-task feature learning.pdf <span style='color:#111;'> 691.03KB </span>","children":null,"spread":false},{"title":"HEp-2 cells Classification via clustered multi-task learning.pdf <span style='color:#111;'> 758.67KB </span>","children":null,"spread":false},{"title":"SAR Target Configuration Recognition Using Tensor Global and Local Discriminant Embedding.pdf <span style='color:#111;'> 730.07KB </span>","children":null,"spread":false},{"title":"A regularization approach to learning task relationships in multitask learning.pdf <span style='color:#111;'> 243.30KB </span>","children":null,"spread":false},{"title":"Support vector machines for SAR automatic target recognition.pdf <span style='color:#111;'> 753.47KB </span>","children":null,"spread":false},{"title":"SAR Target Recognition via Supervised Discriminative Dictionary Learning and Sparse Representation of the SAR-HOG Feature.pdf <span style='color:#111;'> 873.25KB </span>","children":null,"spread":false},{"title":"Synthetic aperture radar target recognition with feature fusion based on a stacked autoencoder.pdf <span style='color:#111;'> 2.87MB </span>","children":null,"spread":false},{"title":"Joint covariate selection and joint subspace selection for multiple classification problems.pdf <span style='color:#111;'> 1.03MB </span>","children":null,"spread":false},{"title":"Regularizedmulti-task learning.pdf <span style='color:#111;'> 173.82KB </span>","children":null,"spread":false},{"title":"Accelerated Gradient Method for Multi-Task Sparse Learning Problem.pdf <span style='color:#111;'> 263.28KB </span>","children":null,"spread":false},{"title":"Clustered multi-task learning via alternating structure optimization.pdf <span style='color:#111;'> 55.32KB </span>","children":null,"spread":false},{"title":"Multitask Sparsity via Maximum Entropy Discrimination.pdf <span style='color:#111;'> 322.94KB </span>","children":null,"spread":false},{"title":"The integrated track splitting filter–Efficient multi-scan single target tracking in clutter.pdf <span style='color:#111;'> 1.66MB </span>","children":null,"spread":false},{"title":"SAR Automatic Target Recognition Based on Dictionary Learning and Joint Dynamic Sparse Representation.pdf <span style='color:#111;'> 780.64KB </span>","children":null,"spread":false},{"title":"sensors-17-02218-v2.pdf <span style='color:#111;'> 3.67MB </span>","children":null,"spread":false},{"title":"p-norm and sample constraint based feature selection and classification for AD diagnosis.pdf <span style='color:#111;'> 660.60KB </span>","children":null,"spread":false},{"title":"SAR image target recognition via Complementary Spatial Pyramid Coding.pdf <span style='color:#111;'> 2.17MB </span>","children":null,"spread":false}],"spread":false}],"spread":true}]

评论信息

免责申明

【只为小站】的资源来自网友分享,仅供学习研究,请务必在下载后24小时内给予删除,不得用于其他任何用途,否则后果自负。基于互联网的特殊性,【只为小站】 无法对用户传输的作品、信息、内容的权属或合法性、合规性、真实性、科学性、完整权、有效性等进行实质审查;无论 【只为小站】 经营者是否已进行审查,用户均应自行承担因其传输的作品、信息、内容而可能或已经产生的侵权或权属纠纷等法律责任。
本站所有资源不代表本站的观点或立场,基于网友分享,根据中国法律《信息网络传播权保护条例》第二十二条之规定,若资源存在侵权或相关问题请联系本站客服人员,zhiweidada#qq.com,请把#换成@,本站将给予最大的支持与配合,做到及时反馈和处理。关于更多版权及免责申明参见 版权及免责申明