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多傳感器編隊目標(biāo)跟蹤技術(shù)

多傳感器編隊目標(biāo)跟蹤技術(shù)

定 價:¥58.00

作 者: 王海鵬 著
出版社: 電子工業(yè)出版社
叢編項:
標(biāo) 簽: 電子 通信 工業(yè)技術(shù)

ISBN: 9787121299469 出版時間: 2017-01-01 包裝:
開本: 頁數(shù): 字?jǐn)?shù):  

內(nèi)容簡介

  本書是關(guān)于多傳感器編隊目標(biāo)跟蹤方法的一部專著,是作者們對國內(nèi)外近30年來該領(lǐng)域研究進(jìn)展和自身研究成果的總結(jié)。全書由6章組成,主要內(nèi)容有:基礎(chǔ)知識概述,編隊目標(biāo)航跡起始方法,復(fù)雜背景下集中式多傳感器編隊目標(biāo)跟蹤方法,集中式多傳感器機(jī)動編隊目標(biāo)跟蹤方法,系統(tǒng)誤差下編隊目標(biāo)航跡關(guān)聯(lián)方法,建議與展望。

作者簡介

  博士,海軍航空工程學(xué)院信息融合研究所綜合研究室副主任兼院士秘書、講師。研究領(lǐng)域為多傳感器多目標(biāo)跟蹤、航跡關(guān)聯(lián)、大數(shù)據(jù)技術(shù)等。作為課題組長或技術(shù)總師承擔(dān)國家自然基金、總裝預(yù)研基金等多項,發(fā)表學(xué)術(shù)論文多項。獲山東省優(yōu)秀科技成果創(chuàng)新獎和海軍優(yōu)秀碩士學(xué)位論文獎。

圖書目錄

第1章 緒 論······································································································ 1 1.1 研究背景········································································································· 1 1.2 國內(nèi)外研究現(xiàn)狀····························································································· 2 1.2.1 航跡起始····························································································· 2 1.2.2 航跡維持····························································································· 3 1.2.3 機(jī)動跟蹤····························································································· 3 1.3 多傳感器編隊目標(biāo)跟蹤技術(shù)中有待解決的一些關(guān)鍵問題························· 4 1.3.1 雜波環(huán)境下編隊目標(biāo)航跡起始技術(shù)················································ 4 1.3.2 復(fù)雜環(huán)境下集中式多傳感器編隊目標(biāo)跟蹤技術(shù)···························· 5 1.3.3 集中式多傳感器機(jī)動編隊目標(biāo)跟蹤技術(shù)········································ 5 1.3.4 系統(tǒng)誤差下編隊目標(biāo)航跡關(guān)聯(lián)技術(shù)················································ 6 1.4 本書的主要內(nèi)容及安排················································································· 7 第2章 編隊目標(biāo)航跡起始算法·········································································· 8 2.1 引言················································································································· 8 2.2 基于相對位置矢量的編隊目標(biāo)灰色航跡起始算法····································· 8 2.2.1 基于循環(huán)閾值模型的編隊預(yù)分割·················································· 10 2.2.2 基于編隊中心點的預(yù)互聯(lián)······························································ 11 2.2.3 RPV-FTGTI 算法············································································· 12 2.2.4 編隊內(nèi)目標(biāo)航跡的確認(rèn)·································································· 18 2.2.5 編隊目標(biāo)狀態(tài)矩陣的建立······························································ 19 2.2.6 仿真比較與分析·············································································· 20 2.2.7 討論··································································································· 34 2.3 集中式多傳感器編隊目標(biāo)灰色航跡起始算法················································ 35 2.3.1 多傳感器編隊目標(biāo)航跡起始框架·················································· 35 2.3.2 多傳感器預(yù)互聯(lián)編隊內(nèi)雜波的剔除·············································· 36 2.3.3 多傳感器編隊內(nèi)量測合并模型······················································ 37 2.3.4 航跡得分模型的建立······································································ 38 2.4 基于運動狀態(tài)的集中式多傳感器編隊目標(biāo)航跡起始算法························40 多傳感器編隊目標(biāo)跟蹤 ·VIII· 2.4.1 同狀態(tài)航跡子編隊獲取模型·························································· 40 2.4.2 多傳感器同狀態(tài)編隊關(guān)聯(lián)模型······················································ 45 2.4.3 編隊內(nèi)航跡精確關(guān)聯(lián)合并模型······················································ 45 2.5 仿真比較與分析··························································································· 46 2.5.1 仿真環(huán)境··························································································· 47 2.5.2 仿真結(jié)果及分析·············································································· 47 2.6 本章小結(jié)······································································································· 54 第3章 復(fù)雜背景下集中式多傳感器編隊目標(biāo)跟蹤算法································· 56 3.1 引言··············································································································· 56 3.2 系統(tǒng)描述······································································································· 56 3.3 云雨雜波和帶狀干擾剔除模型··································································· 57 3.3.1 云雨雜波剔除模型·········································································· 58 3.3.2 帶狀干擾剔除模型·········································································· 60 3.3.3 驗證分析··························································································· 61 3.4 基于模板匹配的集中式多傳感器編隊目標(biāo)跟蹤算法······························· 63 3.4.1 基于編隊整體的預(yù)互聯(lián)·································································· 63 3.4.2 模板匹配模型的建立······································································ 65 3.4.3 編隊內(nèi)航跡的狀態(tài)更新·································································· 69 3.4.4 討論··································································································· 69 3.5 基于形狀方位描述符的集中式多傳感器編隊目標(biāo)粒子濾波算法··········· 69 3.5.1 編隊目標(biāo)形狀矢量的建立······························································ 70 3.5.2 相似度模型的建立·········································································· 72 3.5.3 冗余圖像的剔除·············································································· 74 3.5.4 基于粒子濾波的狀態(tài)更新······························································ 74 3.6 仿真比較與分析··························································································· 75 3.6.1 仿真環(huán)境··························································································· 75 3.6.2 仿真結(jié)果··························································································· 76 3.6.3 仿真分析··························································································· 78 3.7 本章小結(jié)······································································································· 79 第4章 集中式多傳感器機(jī)動編隊目標(biāo)跟蹤算法············································· 81 4.1 引言··············································································································· 81 4.2 典型機(jī)動編隊目標(biāo)跟蹤模型的建立··························································· 82 目 錄 ·IX· 4.2.1 編隊整體機(jī)動跟蹤模型的建立······················································ 82 4.2.2 編隊分裂跟蹤模型的建立······························································ 85 4.2.3 編隊合并跟蹤模型的建立······························································ 87 4.2.4 編隊分散跟蹤模型的建立······························································ 89 4.3 變結(jié)構(gòu)JPDA機(jī)動編隊目標(biāo)跟蹤算法······················································· 91 4.3.1 事件的定義······················································································· 92 4.3.2 編隊確認(rèn)矩陣的建立······································································ 93 4.3.3 編隊互聯(lián)矩陣的建立······································································ 93 4.3.4 編隊確認(rèn)矩陣的拆分······································································ 95 4.3.5 概率的計算······················································································· 97 4.3.6 編隊內(nèi)航跡的狀態(tài)更新································································ 100 4.4 擴(kuò)展廣義S-維分配機(jī)動編隊目標(biāo)跟蹤算法············································ 101 4.4.1 基本模型的建立············································································ 102 4.4.2 編隊量測的劃分············································································ 103 4.4.3 3-維分配問題的構(gòu)造····································································· 106 4.4.4 廣義S-維分配問題的構(gòu)造···························································· 107 4.4.5 編隊內(nèi)航跡的狀態(tài)更新································································ 107 4.5 仿真比較與分析························································································· 108 4.5.1 仿真環(huán)境························································································· 108 4.5.2 仿真結(jié)果························································································· 110 4.5.3 仿真分析························································································· 113 4.6 本章小結(jié)····································································································· 114 第5章 系統(tǒng)誤差下編隊目標(biāo)航跡關(guān)聯(lián)算法·················································· 116 5.1 引言············································································································· 116 5.2 系統(tǒng)誤差下基于雙重模糊拓?fù)涞木庩犇繕?biāo)航跡關(guān)聯(lián)算法····················· 116 5.2.1 基于循環(huán)閾值模型的編隊航跡識別············································ 117 5.2.2 第一重模糊拓?fù)潢P(guān)聯(lián)模型···························································· 118 5.2.3 第二重模糊拓?fù)潢P(guān)聯(lián)模型···························································· 123 5.3 系統(tǒng)誤差下基于誤差補償?shù)木庩犇繕?biāo)航跡關(guān)聯(lián)算法····························· 125 5.3.1 編隊航跡狀態(tài)識別模型································································ 125 5.3.2 編隊航跡系統(tǒng)誤差估計模型························································ 127 5.3.3 誤差補償和編隊內(nèi)航跡的精確關(guān)聯(lián)············································ 130 5.3.4 討論································································································· 130 多傳感器編隊目標(biāo)跟蹤 ·X· 5.4 仿真比較與分析························································································· 131 5.4.1 仿真環(huán)境························································································· 131 5.4.2 仿真結(jié)果及分析············································································ 132 5.5 本章小結(jié)····································································································· 134 第6章 結(jié)論及展望·························································································· 135 附錄A 式(2-17)中閾值參數(shù)ε 的推導(dǎo)··························································· 140 附錄B 式(5-19)的推導(dǎo)····················································································· 144 參考文獻(xiàn)·············································································································· 148 CONTENTS Chapter 1 Introduction···························································································· 1 1.1 Background of Research··············································································· 1 1.2 Internal and Oversea Research Actualities ··················································· 2 1.2.1 Track Initiation ·················································································· 2 1.2.2 Track Maintenance ············································································ 3 1.2.3 Maneuvering Tracking ······································································ 3 1.3 The Key Problem to Be Resolved in Multi-sensor Formation Targets Tracking Technique ········································································································ 4 1.3.1 Formation Targets Track Initiation Technique with Clutter·············· 4 1.3.2 Centralized Multi-sensor Formation Targets Tracking Technique with the Complicated Background ········································································ 5 1.3.3 Centralized Multi-sensor Maneuvering Formation Targets Tracking Technique ··············································································································· 5 1.3.4 Track Correlation Technique of the Formation Targets with Systematic Errors ··································································································· 6 1.4 Main Content and Arragement of Dissertation············································· 7 Chapter 2 Formation Targets Track Initiation Algorithm ······································· 8 2.1 Introduction··································································································· 8 2.2 Formation Targets Gray Track Initiation Algorithm Based on Relative Position Vector················································································································ 8 2.2.1 Preparative Division of the Formation Targets Based on the Circulatory Threshold Model··············································································· 10 2.2.2 Preparative Association Based on the Formation Center················ 11 2.2.3 RPV-FTGTI Algorithm ··································································· 12 2.2.4 Validation of the Tracks in the Formation······································· 18 2.2.5 Establishment of the Formation Target State Matrix ······················ 19 2.2.6 Simulation Comparision and Analysis············································ 20 2.2.7 Discussion ······················································································· 34 2.3 Centralized Multi-sensor Formation Targets Gray Track Initiation Algorithm ····················································································································· 35 2.3.1 Multi-sensor Formation Targets Track Initiation Frame ················· 35 2.3.2 Multi-sensor Clutter Deletion in Preparative Associated 多傳感器編隊目標(biāo)跟蹤 ·XII· Formations ··········································································································· 36 2.3.3 Multi-sensor Measurement Mergence Model in the Formation ····· 37 2.3.4 Establishment of the Track Score Model ········································ 38 2.4 Centralized Multi-sensor Formation Targets Track Initiation Algorithm Based on Moving State································································································· 40 2.4.1 Same-state Track SubFormation Obtainment Model······················ 40 2.4.2 Multi-sensor Same-state Formation Association Model················· 45 2.4.3 Accurate Association and Mergence Model of the Formation Tracks··················································································································· 45 2.5 Simulation Comparision and Analysis························································ 46 2.5.1 Simulation Envirenment··································································· 47 2.5.2 Simulation Results and Analysis ······················································ 47 2.6 Summary····································································································· 54 Chapter 3 Centralized Multi-sensor Formation Targets Tracking Algorithm with the Complicated Background ····························································································· 56 3.1 Introduction································································································· 56 3.2 System Description ····················································································· 56 3.3 Deletion Models of the Cloud-rain Clutter and the Narrow-Band Interference··················································································································· 57 3.3.1 Cloud-rain Clutter Deletion Model ·················································· 58 3.3.2 Narrow-Band Interference Deletion Model ····································· 60 3.3.3 Validation and Analysis ···································································· 61 3.4 Centralized Multi-sensor Formation Targets Tracking Algorithm Based on Template Matching······································································································· 63 3.4.1 Preparative Association Based on the Whole Formation ················· 63 3.4.2 Establishment of the Template Matching Model ····························· 65 3.4.3 State Update of the Tracks in the Formation···································· 69 3.4.4 Discussion························································································· 69 3.5 Centralized Multi-sensor Formation Targets Particle Filter Based on Shape and Azimuth Descriptor································································································ 69 3.5.1 Establishment of the Formation Targets Shape Vector····················· 70 3.5.2 Establishment of the Resemble Model············································· 72 3.5.3 Deletion of the Redundant Picture ··················································· 74 3.5.4 State Update Based on Particle Filter··············································· 74 CONTENTS ·XIII· 3.6 Simulation Comparision and Analysis························································ 75 3.6.1 Simulation Envirenment··································································· 75 3.6.2 Simulation Results············································································ 76 3.6.3 Simulation Analysis·········································································· 78 3.7 Summary····································································································· 79 Chapter 4 Centralized Multi-sensor Maneuvering Formation Targets Tracking Algorithm ····················································································································· 81 4.1 Introduction································································································· 81 4.2 Establishment of Typical Maneuvering Formation Targets Tracking Models ·························································································································· 82 4.2.1 Establishment of the Formation Whole Maneuver Tracking Model ··················································································································· 82 4.2.2 Establishment of the Formation Splitting Tracking Model·············· 85 4.2.3 Establishment of the Formation merging Tracking Model ·············· 87 4.2.4 Establishment of the Formation dispersing Tracking Model ··········· 89 4.3 Maneuvering Formation Targets Tracking Algorithm Based on Different Structure JPDA Technique···························································································· 91 4.3.1 Event Definition ··············································································· 92 4.3.2 Establishment of the Formation Validation Matrix ·························· 93 4.3.3 Establishment of the Formation Association Matrix························ 93 4.3.4 Splitting of the Formation Validation Matrix ··································· 95 4.3.5 Calculation of the Probability··························································· 97 4.3.6 State Update of the Tracks in the Formation·································· 100 4.4 Maneuvering Formation Targets Tracking Algorithm Based on Patulous Generalized S-D Assignment Technique···································································· 101 4.4.1 Establishment of the Basic Model·················································· 102 4.4.2 Partition of the Measurements of the Formation Targets ··············· 103 4.4.3 Conformation of 3-D Assignment Problem ··································· 106 4.4.4 Conformation of Generalized S-D Assignment Problem ··········· 107 4.4.5 State Update of the Tracks in the Formation·································· 107 4.5 Simulation Comparision and Analysis······················································ 108 4.5.1 Simulation Envirenment································································· 108 4.5.2 Simulation Results·········································································· 110 4.5.3 Simulation Analysis········································································ 113 多傳感器編隊目標(biāo)跟蹤 ·XIV· 4.6 Summary··································································································· 114 Chapter 5 Formation Targets Track Correlation Algorithm with Systematic Errors ···························································································································116 5.1 Introduction······························································································· 116 5.2 Formation Targets Track Correlation Algorithm with Systematic Errors Based on Double Fussy Topology·············································································· 116 5.2.1 Formation Tracks Identification Based on Circulatory Threshold Model ················································································································· 117 5.2.2 The First Scale Fussy Topology Model·········································· 118 5.2.3 The Second Scale Fussy Topology Model ····································· 123 5.3 Formation Targets Track Correlation Algorithm with Systematic Errors Based on Error Compensation···················································································· 125 5.3.1 Formation Track State Identification Model ·································· 125 5.3.2 Formation Track Systematic Error Estimation Model ··················· 127 5.3.3 Error Compensation and Formation Track Accurate Correlation ········································································································· 130 5.3.4 Discussion······················································································· 130 5.4 Simulation Comparision and Analysis······················································ 131 5.4.1 Simulation Envirenment································································· 131 5.4.2 Simulation Results and Analysis ···················································· 132 5.5 Summary··································································································· 134 Chapter 6 Conclusions and Prospects ·································································· 135 Appendix A Illation of the Threshold Parameter ε in Formula (2-17) ············ 140 Appendix B Illation of Formula (5-19)····························································· 144 References············································································································ 148

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