[1]刘云鹏,解春霞,李莉,等.无人机遥感监测技术在松材线虫病疫情监测中的应用探讨[J].江苏林业科技,2022,49(02):52-57.[doi:10.3969/j.issn.1001-7380.2022.02.010]
 Liu Yunpeng,Xie Chunxia,Li Li,et al.Discussion on the application of UAV remote sensing technology in monitoring of PWD[J].Journal of Jiangsu Forestry Science &Technology,2022,49(02):52-57.[doi:10.3969/j.issn.1001-7380.2022.02.010]
点击复制

无人机遥感监测技术在松材线虫病疫情监测中的应用探讨()
分享到:

《江苏林业科技》[ISSN:1001-7380/CN:32-1236/S]

卷:
第49卷
期数:
2022年02期
页码:
52-57
栏目:
综述与专论
出版日期:
2022-04-30

文章信息/Info

Title:
Discussion on the application of UAV remote sensing technology in monitoring of PWD
文章编号:
1001-7380(2022)02-0052-06
作者:
刘云鹏1解春霞1李莉2张林燕2
1.江苏省林业科学研究院,江苏 南京 211153;
2.溧阳市林业站,江苏 溧阳 213300
Author(s):
Liu Yunpeng1 Xie Chunxia1 Li Li2 Zhang Linyan2
1. Jiangsu Academy of Forestry, Nanjing 211153, China;
2. Liyang Forestry Station, Liyang 213300, China
关键词:
松材线虫病无人机遥感疫情监测技术
Keywords:
Pine wilt disease (PWD) Unmanned aerial vehicle (UAV) Remote sensing(RS) Monitoring technology
分类号:
S763.305;S763.49;V19
DOI:
10.3969/j.issn.1001-7380.2022.02.010
文献标志码:
A
摘要:
基于无人机遥感的松材线虫病监测技术,能够及时获取多时态、多角度、多光谱和高精度的遥感图像,为决策者提供松材线虫病监测和防控数据支持,在松材线虫病防控上有着较大的发展空间。对松材线虫病无人机遥感监测技术的基本原理、遥感图像的采集、处理与解译研究进展以及应用现状等方面进行了阐述,提出了无人机遥感监测松材线虫病实际应用中存在的问题和不足,并就其在松材线虫病监测中的发展方向和应用前景进行了展望。
Abstract:
With the development of unmanned aerial vehicle(UAV) remote sensing(RS) technology and pine wilt disease (PWD) RS monitoring, the multi-tense, multi-angle, multiple spectrum, high precision RS image could be timely obtained, and decision makers could be provided with early PWD monitoring and prevention and control basis, which brought huge development space in PWD prevention and control. This paper discussed the basic principles of RS monitoring technology of PWD, the research progress of RS information collection, image processing and interpretation, as well as the application status, and emphasized the practical application in monitoring PWD. The existing problems and deficiencies in the study were also discussed, and the prospect of the application of UAV RS technology in monitoring PWD was prospected.

参考文献/References:

[1]叶建仁.松材线虫病在中国的流行现状、防治技术与对策分析[J].林业科学,2019,55(9):1-10.
[2]徐华潮,骆有庆,张琴,等.松材线虫自然侵染对黑松、马尾松针叶含水量、色素及抗氧化酶活性的影响[J].林业科学,2012,48(11):140-143.
[3]徐华潮,骆有庆,邹力骏,等.松材线虫自然侵染后对不同松树组织结构的影响[J].植物病理学报,2013,43(1):35-41.
[4]LIU J M,FENG Z X. On the patholgy of pine wilt discase caused by Bursaphelenchus xylophilus (in Chinese) [J]. Acta Phytopathologica Sinica,1995,25(2):171-174.
[5]徐华潮,骆有庆,张廷廷,等.松材线虫自然侵染后松树不同感病阶段针叶光谱特征变化[J].光谱学与光谱分析,2011,31(5):1352-1356.
[6]张素兰,覃菊,唐晓东,等.松材线虫危害下马尾松光谱特征与估测模型研究[J].光谱学与光谱分析,2019,39(3): 865-871.
[7]黄明祥,龚建华,李顺,等.松材线虫病害高光谱时序与敏感特征研究[J].遥感技术与应用,2012,27(6):954-960.
[8]马跃, 吕全,赵相涛,等.接种不同浓度松材线虫的黑松光谱学特征分析[J].山东农业科学,2012,44(11):12-16.
[9]王震,张晓丽,安树杰.松材线虫病危害的马尾松林木光谱特征分析[J].遥感技术与应用,2007,22(3):367-370.
[10]孔鹏飞.无人机低空遥感测绘作业流程及主要质量控制要点探析[J].低碳世界,2016(35):132-133.
[11]洪宇,龚建华,胡社荣,等.无人机遥感影像获取及后续处理探讨[J].遥感技术与应用,2008,23(4):462-466.
[12]李华玉,陈永富,陈巧,等.基于遥感技术的森林树种识别研究进展[J].西北林学院学报,2021,36(6):220-229.
[13]ZHANG K W,HU B X. Individual urban tree species classification using very high spatial resolution airborne multi-spectral imagery using longitudinal profiles[J].Remote Sensing,2012,4(6):1741-1757.
[14]TUOMINEN S, NASI R, HONKAVAARA E, et al. Tree species recognition in species rich area using UAV-borne hyperspectral imagery and stereo-photogrammetric point cloud[J].ISPRS-International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences,2017(XLII-3/W3):185-194.
[15]刘遐龄,程多祥,李涛,等.无人机遥感影像的松材线虫病危害木自动监测技术初探[J].中国森林病虫, 2018,37(5):16-21.
[16]李卫正,申世广,何鹏,等.低成本小型无人机遥感定位病死木方法[J].林业科枝开发,2014,28(6):102-106.
[17]SAARI H, PELLIKKA I, PESONEN L, et al. Unmanned Aerial Vehicle (UAV) operated spectral camera system for forest and agriculture applications[C]//Conference on Remote Sensing for Agriculture, Ecosystems, and Hydrology XlII/18th International Symposium On Remote Sensing.Prague, Czech Republic, 2011:19-21.
[18]褚东花,李德峰,宋西强.基于多光谱遥感的松材线虫病受害木识别方法[J].绿色科技,2021,23(9):178-180.
[19]黄宝华.无人机搭载多光谱相机监测松材线虫病的研究[J].广西林业科学,2020,49(3):380-384.
[20]FASSNACHT F E, LATIFI H, GHOSH A, et al. Assessing the potential of hyperspectral imagery to map bark beetle-induced tree mortality[J].Remote Sensing of Environment,2014,140(1):533-548.
[21]李嘉祺,吴开华,张垚,等.基于无人机光谱遥感和 AI 技术建立松材线虫害监测模型[J].电子技术与软件工程,2021(8):91-94.
[22]王雪晶,魏仲慧,孙文军, 等.彩色遥感图像的几何校正[J].系统工程与电子技术,2002,24(12):126-128.
[23]王学平.遥感图像几何校正原理及效果分析[J].计算机应用与软件,2008,25(9):102-105.
[24]厍向阳,李崇贵,姚顽强.遥感图像几何校正的支持向量机算法研究[J].西安电子科技大学学报(自然科学版),2011,38(5):144-153.
[25]LOWE D G. Object recognition from local scale-invariant features[C]// International Conference on Computer Vision, Kerkyra, Greece. 1999:1150-1157.
[26]MOREL J M, YU G S . ASIFT: A new framework for fully affine invariant image comparison[J].SIAM Journal on Imaging Sciences,2009,2(2):438-469.
[27]ABDEL-HAKIM A E, FARAG A A.CSIFT: A SIFT descriptor with color invariant characteristics [C]//IEEE Computer Society Conference on Computer Vision and Pattern Recognition. 2006:1978-1983.
[28]LUO J,GWUN O.SURF applied in panorama image stitching[C]//2nd International Conference on Image Processing Theory Tools and Applications. 2010:495-499.
[29]周佳欣,徐梦云,刘建全.基于改进的SIFT算法的图像配准方法[J].工业控制计算机,2019,32(5):97-101.
[30]贠培东,曾永年,历华.多尺度遥感影像融合技术及其算法研究进展[J].遥感信息,2006(6):67-71.
[31]DURKIN J,蔡竞峰,蔡自兴.决策树技术及其当前研究方向[J].控制工程,2005,12(1):15-19.
[32]戴艳丽.分析数据挖掘中决策树算法及其应用[J].科技传播,2015(12):33-34.
[33]黄芳芳,雷鸣,张力,等.基于随机森林和决策树的马尾松松材线虫病监测方法[J].信息通信,2019(12):32-35.
[34]胡根生,张学敏,梁栋.基于WWSVDD 多分类的遥感图像病害松树识别[J].北京邮电大学学报,2014,37(2):23-27.
[35]张学敏.基于支持向量数据描述的遥感图像病害松树识别研究[D].合肥:安徽大学,2014.
[36]武红敢,牟晓伟,杨清钰,等.无人机遥感技术在重庆市沙坪坝区松材线虫病监测中的应用[J].林业资源管理,2019(2):109-115.
[37]黄华毅,马晓航,扈丽丽,等.Fast R-CNN 深度学习和无人机遥感相结合在松材线虫病监测中的初步应用研究[J].环境昆虫学报,2021,43(5):1295-1303.

相似文献/References:

[1]陈志银,高 悦,仇才楼,等.对加快发展江苏林用无人机开发应用的思考[J].江苏林业科技,2015,42(04):48.[doi:10.3969/j.issn.1001-7380.2015.04.012]
 CHEN Zhi-yin,GAO Yue,QIU Cai-lou,et al.Consideration on speeding development and application of forestry UAV in Jiangsu Province[J].Journal of Jiangsu Forestry Science &Technology,2015,42(02):48.[doi:10.3969/j.issn.1001-7380.2015.04.012]
[2]徐丽丽,解春霞,刘云鹏,等.我国农林业无人机研究文献计量学分析[J].江苏林业科技,2017,44(01):37.[doi:10.3969/j.issn.1001-7380.2017.01.008]
[3]刘云鹏,王爱忠,解春霞,等.松褐天牛高效诱捕器的筛选比较试验[J].江苏林业科技,2018,45(01):14.[doi:10.3969/j.issn.1001-7380.2018.01.004]
 LIU Yun-peng,WANG Ai-zhong,XIE Chun-xia,et al.Comparative trial on high efficiency trap for  Monochamus alternatus[J].Journal of Jiangsu Forestry Science &Technology,2018,45(02):14.[doi:10.3969/j.issn.1001-7380.2018.01.004]
[4]黄云鹏,管建仲,林峰铭,等.无人机在米槠虫害防治中的应用与效果研究[J].江苏林业科技,2018,45(05):28.[doi:10.3969/j.issn.1001-7380.2018.05.006]
 Huang Yunpeng,Guan Jianzhong,Lin Fengming,et al.Research on application and effect of UAV in prevention and control of pests in Castanopsis carlesii[J].Journal of Jiangsu Forestry Science &Technology,2018,45(02):28.[doi:10.3969/j.issn.1001-7380.2018.05.006]
[5]周爱东,徐小明,王岚,等.松材线虫病发生34 a的综合防控——以江苏省镇江市为例[J].江苏林业科技,2019,46(04):54.[doi:10.3969/j.issn.1001-7380.2019.04.011]
 Zhou Aidong,Xu Xiaoming,Wang Lan,et al.Integrated control of pine wilt disease in the past thirtyyears in Zhenjiang City of Jiangsu Province[J].Journal of Jiangsu Forestry Science &Technology,2019,46(02):54.[doi:10.3969/j.issn.1001-7380.2019.04.011]
[6]林春穆.基于多光谱数据初探野生长叶榧分布光谱特征[J].江苏林业科技,2022,49(01):28.[doi:10.3969/j.issn.1001-7380.2022.01.005]
 Lin Chunmu.Identification of distribution of wild Torreya jackii Chun in Jiangshi Nature Reserve based on spectral characteristics[J].Journal of Jiangsu Forestry Science &Technology,2022,49(02):28.[doi:10.3969/j.issn.1001-7380.2022.01.005]
[7]张林燕,徐丽丽,李莉,等.无人机多光谱遥感技术监测松材线虫病疫木研究[J].江苏林业科技,2022,49(03):22.[doi:10.3969/j.issn.1001-7380.2022.03.004]
 Zhang Linyan,Xu lili,Li Li,et al.Application of UAV multis-pectral remote sensing technology inmonitoring dead trees of pine wilt disease (PWD)[J].Journal of Jiangsu Forestry Science &Technology,2022,49(02):22.[doi:10.3969/j.issn.1001-7380.2022.03.004]

备注/Memo

备注/Memo:
收稿日期:2022-02-07;修回日期:2022-02-26
基金项目:江苏省林业科技创新与推广项目“无人机多光谱遥感在松材线虫病疫情监测中的应用与示范”(LYKJ[2020]10);中央财政林业科技推广示范资金项目“松材线虫病遥感监测与分类治理技术集成示范”(苏[2021]TG05)
作者简介:刘云鹏(1978- ),男,安徽宿州人,副研究员,博士。研究方向为森林病虫害防治。 E-mail:lypsq@yahoo.com.cn
更新日期/Last Update: 2022-06-15