国产第1页_91在线亚洲_中文字幕成人_99久久久久久_五月宗合网_久久久久国产一区二区三区四区

讀書月攻略拿走直接抄!
歡迎光臨中圖網(wǎng) 請 | 注冊

包郵 多源遙感影像融合

作者:李小軍
出版社:電子工業(yè)出版社出版時間:2024-08-14
本類榜單:教材銷量榜
中 圖 價:¥52.3(6.6折) 定價  ¥79.0 登錄后可看到會員價
加入購物車 收藏
開年大促, 全場包郵
?新疆、西藏除外
本類五星書更多>

多源遙感影像融合 版權(quán)信息

  • ISBN:9787121485602
  • 條形碼:9787121485602 ; 978-7-121-48560-2
  • 裝幀:平塑勒
  • 冊數(shù):暫無
  • 重量:暫無
  • 所屬分類:>

多源遙感影像融合 內(nèi)容簡介

本書從多源遙感成像機理和人眼視覺對影像的理解出發(fā),研究了結(jié)合PCNN 的配準(zhǔn)算法及基于PCNN 的全色影像、多光譜影像、高分辨率SAR 影像、無人機航拍影像和高光譜影像等多源遙感影像融合的理論與算法。首先,簡要介紹了多源遙感影像融合的起源與現(xiàn)狀。其次,回顧了PCNN 的幾種常見模型。鑒于遙感影像配準(zhǔn)是實現(xiàn)遙感影像像素級融合的前提,本書提出了兩種基于自適應(yīng)PCNN 分割的遙感影像配準(zhǔn)算法。在后續(xù)章節(jié)中,本書主要研究并提出了結(jié)合PCNN 分割特性的全色銳化融合算法、參數(shù)優(yōu)化的PCNN 全色銳化融合算法、改進PCNN 的全色銳化融合模型、基于PCNN 的衛(wèi)星多光譜影像與無人機航拍影像融合算法和基于PCNN 的高光譜影像融合算法等。本書內(nèi)容為作者團隊多年來取得的科研成果,涵蓋了基于PCNN 及其改進模型在全色影像、多光譜影像、高分辨率SAR 影像、無人機航拍影像和高光譜影像等多源遙感影像融合中的*新成果。這些成果不僅豐富了遙感影像配準(zhǔn)與融合理論,也為相關(guān)領(lǐng)域的研究提供了借鑒與支持。

多源遙感影像融合 目錄

目錄第 1 章緒論··············································································································11.1 多源遙感影像融合的起源與發(fā)展······························································11.2 多源遙感影像融合的意義··········································································21.3 多源遙感影像融合研究現(xiàn)狀······································································41.3.1 傳統(tǒng)遙感影像全色銳化融合研究現(xiàn)狀·····················································41.3.2 基于視皮層神經(jīng)網(wǎng)絡(luò)的影像融合現(xiàn)狀·····················································51.4 多源遙感影像融合研究的關(guān)鍵問題··························································5第2 章 PCNN 模型及特性······················································································72.1 PCNN 模型發(fā)展背景··················································································72.2 標(biāo)準(zhǔn)PCNN 模型·························································································92.2.1 PCNN 模型描述····················································································92.2.2 PCNN 模型特性·················································································.112.3 雙輸出PCNN(Dual-output PCNN,DPCNN)模型····························.11目錄 第 1 章緒論··············································································································1 1.1 多源遙感影像融合的起源與發(fā)展······························································1 1.2 多源遙感影像融合的意義··········································································2 1.3 多源遙感影像融合研究現(xiàn)狀······································································4 1.3.1 傳統(tǒng)遙感影像全色銳化融合研究現(xiàn)狀·····················································4 1.3.2 基于視皮層神經(jīng)網(wǎng)絡(luò)的影像融合現(xiàn)狀·····················································5 1.4 多源遙感影像融合研究的關(guān)鍵問題··························································5 第2 章 PCNN 模型及特性······················································································7 2.1 PCNN 模型發(fā)展背景··················································································7 2.2 標(biāo)準(zhǔn)PCNN 模型·························································································9 2.2.1 PCNN 模型描述····················································································9 2.2.2 PCNN 模型特性·················································································.11 2.3 雙輸出PCNN(Dual-output PCNN,DPCNN)模型····························.11 2.3.1 DPCNN 模型描述···············································································12 2.3.2 DPCNN 模型特性···············································································14 2.4 彩色DPCNN(Color DPCNN,CDPCNN)模型··································.16 2.4.1 HSV 彩色空間····················································································16 2.4.2 CDPCNN 模型描述·············································································18 2.5 SAPCNN 模型··························································································.20 2.5.1 SAPCNN 模型設(shè)計·············································································20 2.5.2 SAPCNN 模型分析·············································································21 2.6 其他PCNN 相關(guān)模型··············································································.24 2.6.1 ICM 模型描述····················································································24 2.6.2 SCM 模型描述···················································································25 2.6.3 DQPCNN 模型描述·············································································25 2.7 本章小結(jié)··································································································.26 第3 章結(jié)合 PCNN 模型的遙感影像配準(zhǔn)····························································27 3.1 研究背景··································································································.28 3.2 遙感影像配準(zhǔn)國內(nèi)外研究現(xiàn)狀·······························································.28 3.2.1 基于區(qū)域的影像配準(zhǔn)算法····································································28 3.2.2 基于特征的影像配準(zhǔn)算法····································································29 3.3 基于自適應(yīng)PCNN 分割的遙感影像配準(zhǔn)算法·······································.31 3.3.1 算法總體框架·····················································································32 3.3.2 PCNN 影像分割··················································································32 3.3.3 參數(shù)自適應(yīng)PCNN 設(shè)計·······································································34 3.3.4 分割區(qū)域描述與匹配···········································································36 3.3.5 基于FSC 的配準(zhǔn)模型參數(shù)求解····························································39 3.3.6 實驗與分析························································································40 3.4 基于PCNN 分割與點特征的多源遙感影像配準(zhǔn)算法···························.43 3.4.1 算法總體框架·····················································································44 3.4.2 UR-SIFT 點特征提取與匹配································································45 3.4.3 自適應(yīng)PCNN 分割區(qū)域匹配································································50 3.4.4 實驗與分析························································································51 3.5 本章小結(jié)··································································································.58 第4 章 PCNN 分割特性與遙感影像全色銳化融合·············································59 4.1 研究
展開全部

多源遙感影像融合 作者簡介

李小軍,理學(xué)博士,博士后,碩士生導(dǎo)師。曾工作于中國工程物理研究院電子工程研究所,任職副研究員。現(xiàn)工作于蘭州交通大學(xué)測繪與地理信息學(xué)院,任職副教授。主持了多項軍委裝備發(fā)展部跨行業(yè)預(yù)研重點項目及國家自然科學(xué)基金項目。發(fā)表SCI、EI論文十余篇,獲批國家發(fā)明專利2項,研究領(lǐng)域主要包括遙感數(shù)字影像處理、影像融合和神經(jīng)網(wǎng)絡(luò)等。

商品評論(0條)
暫無評論……
書友推薦
返回頂部
中圖網(wǎng)
在線客服
主站蜘蛛池模板: 亚洲精品国产精品制服丝袜 | h视频在线观看视频观看 | 第四色亚洲色图 | 国产在线国偷精品产拍 | 看全色黄大色大片免费久久 | 视频网站黄色 | 精品无人区一区二区三区 | 日本肥老太婆bwwxxxx | 偷窥村妇洗澡毛毛多 | 在线观看黄色毛片 | 欧美5o老妇性xxx | 久草在线这里只有精品 | 热久久久久久 | 女生毛片| 自拍偷在线精品自拍偷无码专区 | 精品无码成人久久久久久 | 无码高潮少妇毛多水多水 | 欧美毛片又粗又长又大 | 国产成人精品亚洲午夜麻豆 | 国产黄a三级三级三级av在线看 | 中文精品久久久久国产不卡 | 国产女人的高潮大叫毛片 | 久久91亚洲精品久久91综合 | 中文字幕视频在线播放 | 亚洲美女亚洲精品久久久久 | 免费国产视频在线观看 | 欧美激情在线播放一区二区三区 | 国产一级做a爰片久久毛片男男 | 久久精品区| 手机看片精品高清国产日韩 | 男女乱婬真视频 | 天天综合欧美 | 好吊色欧美一区二区三区四区 | 久久亚洲精品玖玖玖玖 | 国产午夜高潮熟女精品av | 国产农村妇女毛片精品久久 | 日韩精品无码免费专区网站 | 久久一日本道色综合久久m 久久一日本综合色鬼综合色 | 成人羞羞视频在线观看 | a爱片| 日韩在线 中文字幕 |