系统仿真学报 ›› 2016, Vol. 28 ›› Issue (12): 2925-2933.doi: 10.16182/j.issn1004731x.joss.201612007
徐淑琼, 袁从贵
收稿日期:2016-02-26
修回日期:2016-05-24
出版日期:2016-12-08
发布日期:2020-08-13
第一作者简介:Xu Shuqiong(1981-), Female, Guangdong, China, Doctor, Lecturer, Research interests include intelligent control systems and signal processing.
基金资助:Xu Shuqiong, Yuan Conggui
Received:2016-02-26
Revised:2016-05-24
Online:2016-12-08
Published:2020-08-13
About author:Xu Shuqiong(1981-), Female, Guangdong, China, Doctor, Lecturer, Research interests include intelligent control systems and signal processing.
Supported by:摘要: 为提高机器视觉识别的选择性和鲁棒性,给出了基于T2FPSO优化的T2FSVM场景分类方法。算法中,设计了type-2模糊支持向量机模型以提高其泛化能力并得到正确的场景分类信息;为提高PSO在不确定环境中的优化能力,构建了融合type-2模糊集概念的T2FPSO优化算法,并采用区间type-2模糊逻辑系统推理得到其惯性权值。实验结果表明所提出的场景分类方法可对不确定信息进行有效处理。
中图分类号:
徐淑琼,袁从贵 . 一种基于T2FPSO的type-2模糊支持向量机场景分类方法[J]. 系统仿真学报, 2016, 28(12): 2925-2933.
Xu Shuqiong,Yuan Conggui . Effective T2FPSO-Based T2FSVM Scene Classification Algorithm[J]. Journal of System Simulation, 2016, 28(12): 2925-2933.
| [1] Elbanhawi M, Simic M.Sampling-Based Robot Motion Planning: A Review[J]. IEEE Access (S2169-3536), 2014, 2(1): 56-77. [2] Yanik P M, Manganelli J, Merino J, et al.A Gesture Learning Interface for Simulated Robot Path Shaping With a Human Teacher[J]. IEEE Trans. on Human- Machine Systems (S1094-6977), 2014, 44(1): 41-54. [3] Soohwan K, Jonghyuk K.Occupancy Mapping and Surface Reconstruction Using Local Gaussian Processes with Kinect Sensors[J]. IEEE Trans. on Cybernetics (S1083-4419), 2013, 43(5): 1335-1346. [4] Theriault C, Thome N, Cord M, et al.Perceptual Principles for Video Classification With Slow Feature Analysis[J]. IEEE Journal of Selected Topics in Signal Processing (S1932-4553), 2014, 8(3): 428-437. [5] Yang X, Zhang T, Xu C, et al.Automatic Visual Concept Learning for Social Event Understanding[J]. IEEE Trans. on Multimedia (S1520-9210), 2015, 17(3): 346-358. [6] Lin L, Zhang R, Duan X.Adaptive Scene Category Discovery with Generative Learning and Compositional Sampling[J]. IEEE Trans. on Circuits and Systems for Video Technology (S1051-8215), 2015, 25(2): 251-260. [7] Chen S, Tian Y.Pyramid of Spatial Relations for Scene-Level Land Use Classification[J]. IEEE Trans. on Geoscience and Remote Sensing (S0196-2892), 2015, 53(4): 1947-1957. [8] Wang M, Song T.Remote Sensing Image Retrieval by Scene Semantic Matching[J]. IEEE Trans. on Geoscience and Remote Sensing (S0196-2892), 2013, 51(5): 2874-2886. [9] Qi X, Xiao R, Li C, et al.Pairwise Rotation Invariant Co-Occurrence Local Binary Pattern[J]. IEEE Trans. on Pattern Analysis and Machine Intelligence (S0162-8828), 2014, 36(11): 2199-2213. [10] Chern Hong L, Risnumawan A, Chee Seng C, et al.A Scene Image is Nonmutually Exclusive—A Fuzzy Qualitative Scene Understanding[J]. IEEE Trans. on Fuzzy Systems (S1063-6706), 2014, 22(6): 1541-1556. [11] Liu Z, Xu S, Zhang Y, et al.Interval type-2 Fuzzy Kernel based Support Vector Machine Algorithm for Scene Classification of Humanoid Robot[J]. Soft Computing (S1432-7643), 2014, 18: 589-606. [12] Yu J, Zhou H, Gao X.Machine Learning and Signal Processing for Human Pose Recovery and Behavior Analysis[J]. Signal Processing (S0165-1684), 2015, 110: 1-4. [13] Torheim T, Malinen E, Kvaal K, et al.Classification of Dynamic Contrast Enhanced MR Images of Cervical Cancers Using Texture Analysis and Support Vector Machines[J]. IEEE Trans. on Medical Imaging (S0278-0062), 2014, 33(8): 1648-1656. [14] Patra S, Bruzzone L.A Novel SOM-SVM-Based Active Learning Technique for Remote Sensing Image Classification[J]. IEEE Trans. on Geoscience and Remote Sensing (S0196-2892), 2014, 52(11): 6899-6920. [15] Ruiz P, Mateos J, Camps-Valls G, et al.Bayesian Active Remote Sensing Image Classification[J]. IEEE Trans. on Geoscience and Remote Sensing (S0196-2892), 2014, 52(4): 2186-2196. [16] Liu Z, Xu S, Zhang Y, et al.A Multiple-Feature and Multiple-Kernel Scene Segmentation Algorithm for Humanoid Robot[J]. IEEE Trans. on Cybernetics (S1083-4419), 2014, 44(11): 2232-2240. [17] Zhang S, He F, Zhang Y, et al.Geometric Active Contour based Approach for Segmentation of High-resolution Spaceborne SAR Images[J]. Journal of Systems Engineering and Electronics (S1004-4132), 2015, 26(1): 69-76. [18] Wang L, Liu Z, Chen C L P, et al. Energy-Efficient SVM Learning Control System for Biped Walking Robots[J]. IEEE Trans. on Neural Networks and Learning Systems (S1045-9227), 2013, 24(5): 831-837. [19] Wang L, Liu Z, Chen C L P, et al. Support Vector Machine based Optimal Control for Minimizing Energy Consumption of Biped Walking Motions[J]. International Journal of Precision and Engineering (S2234-7593), 2012, 13(11): 1975-1981. [20] Juang C F, Huang R B, Cheng W.An Interval Type-2 Fuzzy-Neural Network with Support-Vector Regression for Noisy Regression Problems[J]. IEEE Trans. on Fuzzy Systems (S1063-6706), 2010, 18(4): 686-699. [21] Maulik U, Bandyopadhyay S, Saha I.Integrating Clustering and Supervised Learning for Categorical Data Analysis[J]. IEEE Trans. on Systems, Man, and Cybernetics (S1083-4427), 2010, 40(4): 664-675. [22] Melgani F, Bazi Y.Classification of Electrocardiogram Signals with Support Vector Machines and Particle Swarm Optimization[J]. IEEE Trans. on Information Technology in Biomedicine (S1089-7771), 2008, 12(5): 667-677. |
| [1] | 董志明, 胡忠奇, 戴浩然, 高建成. 基于大语言模型的作战仿真想定自动化生成方法[J]. 系统仿真学报, 2026, 38(5): 1129-1145. |
| [2] | 李校男, 晁涛, 马萍, 杨明, 王玉轩. 基于期望最大化方法的非线性SSM黑箱鲁棒辨识[J]. 系统仿真学报, 2026, 38(5): 1146-1158. |
| [3] | 刘银钢, 马明, 张荣华. 基于大语言模型的兵棋推演动态任务规划[J]. 系统仿真学报, 2026, 38(5): 1187-1204. |
| [4] | 苏泓嘉, 张成, 刘飞. 基于模糊功能依赖网分析的体系效能评估方法[J]. 系统仿真学报, 2026, 38(5): 1224-1238. |
| [5] | 梅华威, 杨鹏慧, 余洋. 计及数据漂移改进PatchTST的超短期光伏功率预测[J]. 系统仿真学报, 2026, 38(5): 1239-1254. |
| [6] | 李权, 苏鹏, 万海英, 张承玺, 何志坚, 倪艺洋, 赵忠盖, 刘飞. 基于多阶段LHS-EPRCC方法的青霉素发酵过程建模[J]. 系统仿真学报, 2026, 38(5): 1255-1276. |
| [7] | 周子聪, 曾俊杰, 胡越, 朱正秋, 尹全军. 基于次优示例引导的兵棋推演多智能体强化学习方法[J]. 系统仿真学报, 2026, 38(5): 1277-1289. |
| [8] | 石敏, 郭诗盛, 王素琴, 李兆歆, 朱登明. 融合物理与几何先验的无抓取标注6-DoF抓取检测方法[J]. 系统仿真学报, 2026, 38(5): 1290-1302. |
| [9] | 姜彦吉, 肖星佚, 董浩, 于淼, 黄金山, 刘大千, 费博雯. 融合点线特征的图关系优化3D车道线检测方法[J]. 系统仿真学报, 2026, 38(5): 1303-1319. |
| [10] | 张鑫, 张平, 张琛, 刘威, 韩博阳. 非均质土壤条件下挖掘阻力计算模型研究[J]. 系统仿真学报, 2026, 38(5): 1320-1332. |
| [11] | 王伟, 刘东, 崔新豪, 李博, 肖依永, 任羿. 复杂项目多级动态挣值管理数字化模型及应用[J]. 系统仿真学报, 2026, 38(5): 1350-1364. |
| [12] | 彭莉峻, 苏庭琪, 刘沛津, 何林, 周协武, 张闽心. 融合人体关键点的实验室PPE规范穿戴检测方法[J]. 系统仿真学报, 2026, 38(5): 1365-1382. |
| [13] | 滕靖, 童文聪, 张中杰, 姚幸, 李君羡. 有轨电车交叉口速度自动引导方法及仿真评价[J]. 系统仿真学报, 2026, 38(5): 1426-1439. |
| [14] | 蒋圣超, 裴云庆, 翟宏营, 吴国键, 高放. 基于块编码绝热量子牛顿‒拉夫逊法的潮流计算[J]. 系统仿真学报, 2026, 38(5): 1453-1465. |
| [15] | 秦浪, 谢嘉成, 乔晓军, 王学文, 肖智杰. 执行器位姿异常的机器人轨迹规划调整方法[J]. 系统仿真学报, 2026, 38(5): 1466-1483. |
| 阅读次数 | ||||||
|
全文 |
|
|||||
|
摘要 |
|
|||||