Skip navigation

DSpace

機構典藏 DSpace 系統致力於保存各式數位資料(如:文字、圖片、PDF)並使其易於取用。

點此認識 DSpace
DSpace logo
English
中文
  • 瀏覽論文
    • 校院系所
    • 出版年
    • 作者
    • 標題
    • 關鍵字
    • 指導教授
  • 搜尋 TDR
  • 授權 Q&A
    • 我的頁面
    • 接受 E-mail 通知
    • 編輯個人資料
  1. NTU Theses and Dissertations Repository
  2. 生物資源暨農學院
  3. 生物機電工程學系
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/25728
完整後設資料紀錄
DC 欄位值語言
dc.contributor.advisor陳世銘
dc.contributor.authorChin-Lun Changen
dc.contributor.author張晉倫zh_TW
dc.date.accessioned2021-06-08T06:26:57Z-
dc.date.copyright2006-07-31
dc.date.issued2006
dc.date.submitted2006-07-26
dc.identifier.citation1. 呂沛哲。1999。甘藍苗性狀之影像量測。碩士論文。台北:臺灣大學生物產業機電工程學研究所。
2. 呂宏志。2005。溫室多功能監測系統之開發-苗床植株遙測與環境因子量測。碩士論文。台北:臺灣大學生物產業機電工程學研究所。
3. 李明達。2001。水份逆境下植物影像特徵分析之研究。碩士論文。台北:臺灣大學生物產業機電工程學研究所。
4. 卓泰羽。2003。溫室苗床之平面多光譜影像掃描系統之建立。學士論文。台北:臺灣大學生物產業機電工程學系。
5. 官宗保。2000。利用數位訊號處理器實現車牌字元辨識系統。碩士論文。台北︰國立台灣大學電機工程學研究所。
6. 馬仕穆。1999。以SPOT衛星影像資料推估南仁山森林生態系之葉面積指數及凋落物。碩士論文。屏東:國立屏東科技大學熱帶農業研究所。
7. 陳乃菁。1994。甘藍苗品質與物化特性之關係。碩士論文。台北:國立臺灣大學農業機械工程學研究所。
8. 張文宏、陳世銘、郭立穎。1998。洋香瓜糖度檢測之研究─(二)近紅外線分析法。農業機械學刊7(1):87-98。
9. 張仁明。1999。自然光下彩色種苗影像的背景分離與特徵抽取。碩士論文。台北:國立台灣大學農業機械工程學研究所。
10. 張世駿。2002。衛星遙測影像應用於變遷偵測之研究。碩士論文。台北:國立台灣大學生物環境系統工程學研究所。
11. 張智星。2004。第六版。MATLAB程式設計與應用。台北:清蔚科技出版社。
12. 陳世銘。1992。種苗生產系統國際研討會報告。台北:行政院國科會。
13. 陳世銘主編。1996。蔬菜自動化育苗技術研討會論文集。台北:國立台灣大學農業機械工程學系。
14. 陳世銘、李明達。2001。以多光譜影像遙測植物之生理性狀。出自”近紅外光技術應用於農畜產品品質檢測訓練班及研討會論文集”,P.F1-7。台北:財團法人農業機械化研究發展中心。
15. 陳世銘、張金發、馮丁樹、游俊明、呂昆忠、王大立、田秉才、張文宏。1993。蔬菜育苗作業自動化—穴盤育苗真空播種系統。農業機械學刊2(3):56-64。
16. 陳世銘、田秉才、張金發、馮丁樹、呂昆忠、張善能、李柏欣。1995。種苗自動搬運系統之研製。出自”第八屆全國自動化科技研討會論文集”,P.795-803。中壢:中原大學。
17. 陳世銘等人。1998。蔬菜育苗作業自動化應用(三)。研究報告,計畫編號:87年自動化-糧-01(3)。台北:台灣大學農業機械工程學系。
18. 陳世銘、吳德輝、楊智凱、蔡養正、黃政偉、繆八龍。2002。稻株含氮量遙測系統之開發。出自“應用於水稻精準農業體系之知識與技術”, ISBN 957-01-1173-9, 楊純明、林俊義主編,113-128。台中縣:農業試驗所。
19. 陳世銘、黃政偉、吳德輝、楊智凱、黃竣吉、蔡養正、繆八龍。2002a。稻株含氮量地面多光譜影像遙測系統之開發研究。出自“「水稻精準農業(耕)體系之研究」計畫成果研討會暨展示會大會手冊”,93-99。台中縣:農業試驗所。
20. 陳世銘、黃政偉、黃竣吉、吳德輝、楊智凱、蔡養正、繆八龍。2002b。稻株含氮量地面多光譜影像遙測系統之開發研究。台灣農業機械17(5):10-12。
21. 陳世銘、陳加增、楊宜璋、江昭皚、黃政偉、呂宏志、黃裕益、謝廣文、謝禮丞、徐文輝、陳麗欣、曹幸之。2004。種苗本體生理感測與數位整合監控系統之應用研究。研究報告,計畫編號:93農科-6.1.1-糧-Z1 (2)。台北:行政院農業委員會。
22. 陳加增。2000。近紅外光應用於水果糖酸度線上檢測之研究。碩士論文:台北:臺灣大學生物產業機電工程學研究所。
23. 陳加增。2003。以多光譜影像與決策支援系統應用於蔬菜作物氮肥管理之研究。博士論文計畫書。台北:臺灣大學生物產業機電工程學研究所。
24. 陳彥宏。2004。運用紋理資訊輔助高解析度衛星影像於都會區水稻田萃取之研究。碩士論文。台中:逢甲大學土地管理學研究所。
25. 郭立穎。1997。紋理分析在洋香瓜糖度上之應用。碩士論文。台北:臺灣大學農業機械工程學研究所。
26. 郭立穎、陳世銘、張文宏。1998。洋香瓜糖度檢測之研究─(一)影像紋理分析法。農業機械學刊7(1):75-86。
27. 博客園網路書店。2005。學習筆記-對幾種常用植被指數的認識。滬江:博客園網路書店。網址:http://www.cnblogs.com/sqwang/archive/2005/03/17/119774.html。上網日期:2005年07月10日。
28. 黃政偉。2002。多光譜影像應用於水稻植株含氮量之遙測。碩士論文。台北:國立臺灣大學生物產業機電工程學研究所。
29. 黃竣吉。2003。稻株含氮量多光譜影像遙測系統之研究。碩士論文。台北:國立臺灣大學生物產業機電工程學研究所。
30. 惠汝生。2004。圖控式程式語言-LabVIEW。第二版。台北;全華科技圖書股份有限公司。
31. 謝廣文。2001。甘藍種苗栽培環境對成長品質之影響與生長模式。博士論文。台北:國立臺灣大學生物產業機電工程學研究所。
32. 謝勝治、陳璋琪。2002。LabVIEW應用篇(含自動量測、遠端監控)。第一版。台北;全華科技圖書股份有限公司。
33. 羅華強。2001。類神經網路-MATLAB的應用。第六版。台北:清蔚科技。
34. Bajwa, S. G. and L. F. Tian. 2001. Aerial CIR Remote Sensing for Weed Density Mapping in A Soybean Field. Transactions of the ASAE 44(6):1965-1974.
35. Bajwa, S. G. and L. Tian. 2002. Multispectral CIR Image Calibration for Cloud Shadow and Soil Background Influence Using Intensity Normalization. Transactions of the ASAE 18(5):627-635.
36. Bajwa, S. G., P. Bajcsy, P. Groves and L. F. Tian. 2004. Hyperspectral Image Data Mining for Band Selection in Agricultural Applications. Transactions of the ASAE 47(3):895-907.
37. Bogrekci I., W. S. Lee, J. D. Jordan, J. C. Craig. 2005. Multispectral Image Analysis for Phosphorus Measurement in Bahia Grass. ASAE Paper No. 051067. Fl. Tampa, MI: ASAE.
38. Borhan, M. S., S. Panigrahi, J. H. Lorenzen and H. Gu. 2004. Multispectral and Color Imaging Techniques for Nitrate and Chlorophyll Detection of Potato Leaves in A Controlled Environment. Transactions of the ASAE 47(2):599-608.
39. Bulanon, D. M., T. Kataoka, Y. Ota and T. Hiroma. 2002. A Segmentation Algorithm for the Automatic Recognition of Fuji Apples at Harvest. Biosystem Engineering 83(4):405-412.
40. Chen, C. T., S. Chen, K. W. Hsieh, H. C. Yang, S. Hsiao and I. C. Yang. 2004. Estimation of Nitrogen Content by Spectral Responses of Cabbage Seedlings Using Artificial Neural Network Approach. ASAE Paper No. 04-1082. St. Joseph, Mich.: ASAE.
41. Chen, S. and M. T. Li. 2001. Multispectral Imaging of Chlorophyll Content for Vegetable Status Monitoring. In “Fruit, Nut, and Vegetable Production Engineering, Proceedings of the 6th International Symposium held in Potsdam 2001”, P.603-608. Potsdam, Germany: Institute of Agricultural Engineering Bornim e.V.
42. Chen, S., C. W. Huang, T. H. Wu, C. K. Yang, C. C. Huang, Y. Z. Tsai and P. L. Miao. 2002a. Remote Sensing of Nitrogen Content in Rice Crop Using Multi-Spectral Imaging. In“Proceedings of International Symposium on Automation and Mechatronics of Agricultural and Bioproduction Systems”, 466-472. Chiayi, Taiwan:National Chiayi University.
43. Chen, S., C. W. Huang, T. H. Wu, C. K. Yang, C. C. Huang, Y. Z. Tsai and P. L. Miao. 2002b. Development of A Remote Sensing System Using Multi-Spectral Imaging for Determining Nitrogen Content in Rice Crop. In“Proceedings of International Symposium on Automation and Mechatronics of Agricultural and Bioproduction Systems”, Chiayi, Taiwan:National Chiayi University.
44. Chen, S., M. T. Li, C. T. Chen, Y. C. Lin, C. W. Huang, T. H. Wu and K. W. Hsieh. 2002. Remote Sensing of Crop Growth Characteristics in Greenhouses. In “Proceedings of International Symposium on Design and Environmental Control of Tropical and Subtropical Greenhouses”, eds. S. Chen and T. T. Lin. Acta Horticulturae 578:295-301.
45. Chen X., S. M. Welch., N. Zhang and D. Armbrust. Measurement of Change in Soybean Plant Cross-Section Area under Wind Conditions via Image Processing. 2001. Transactions of ASAE 44(6):1923-1929.
46. Cheriet M., J. N. Said, and C. Y. Suen. 1998. A Recursive Thresholding Technique for Image Segmentation. Transactions of IEEE Image Processing 7(6):918-921.
47. Christensen, L.K., B.S. Bennedsen, R.N. Jorgensen and H. Nielsen. 2004. Modelling Nitrogen and Phosphorus Content at Early Growth Stages in Spring Barley using Hyperspectral Line Scanning. Transactions of the BE 88(1):19-24.
48. Cogdill, R. P., C. R. Hurburgh, Jr. and G. R. Rippke. 2004. Single-Kernel Maize Analysis by Near-Infrared Hyperspectral Imaging. Transactions of the ASAE 47(1):311-320.
49. Gat, N. 2000. Imaging Spectroscopy Using Tunable Filters:A Review. Opto-Knowledge Systems, Torrance , CA, Inc.(OKSI).
50. Goel, P. K., S. O. Prasher, J.-A. Landry, R. M. Patel and A. A. Viau. 2003a. Hyperspectral Image Classification to Detect Weed Infestations and Nitrogen Status in Corn. Transactions of the ASAE 46(2):539-550.
51. Goel, P. K., S. O. Prasher, J.-A. Landry, R. M. Patel, A. A. Viau and J. R. Miller. 2003b. Estimation of Crop Biophysical Parameters Through Airborne and Field Hyperspectral Remote Sensing. Transactions of the ASAE 46(4): 1235-1246.
52. Gonzalez, R. C. and R. E. Woods. 1992. Digital Image Processing. Addison-Wesley Publishing Company Inc., U.S.A.
53. Haaker P., E. Koltz, R. Koppe and R. Linde. 1991. Real-time Distortion Corrrection of Digital X-ray Ⅱ/TV-systems: an Application Example for Digital Flashing Tomosynthesis(DFTS). Transactions of the International Journal of Cardiac Imaging 6: 39-45.
54. Haboudanea D., J. R. Miller and E. Patteyc. 2004. Hyperspectral Vegetation Indices and Novel Algorithms for Predicting Green LAI of Crop Canopies: Modeling and Validation in the Context of Precision Agriculture. Transactions of the RSE 90:337-352.
55. Haruki T. and K. Kikuchi. 1992. Video Camera System Using Fuzzy Logic. Transactions on Consumer Electronics 38(3): 624-634.
56. Hsieh K. W., S. Chen, W. H. Chang, M. T. Lee and C. T. Chen. 2001. A Dynamic Simulation Model for Seedling Growth. Transactions of the ASAE 44(6): 1949-1954.
57. Hsieh K. W., S. Chen, J. H. Lai and I. C. Yang. 2003. Neural Network Analysis of Environmental Conditions Influencing Cabbage Seedling Quality. Transactions of the ASAE 46(2): 501-506.
58. Huete, A., K. Didan, T. Miura, Rodgiguez, E. P., Gao, X. and Ferreira, L. G. 2002. Overview of the radiometric and biophysical performance of the MODIS indices. Transaction of the IRSE 83 :195:213.
59. Huber R., C. Nowak and B. Spatzek. 2004. Image Acquisition Using Aperture Control Adapted to Spatio-Temporal Properties. Transaction of Machine Vision Applications 15:204-215.
60. Jolliffe I.T. 1986. Principal Component Analysis. 1st ed. NY:Springer Verlag.
61. Johnson L. F., S. R. Herwitz, B. M. Lobitz, S. E. Dunagan. 2004. Feasibility of Monitoring Coffee Field Ripeness with Airborne Multispectral Imagery. Transactions of the ASAE 20(6): 845-849.
62. Jung, Y. H., J. S. Kim, B. S. Hur and M. G. Kang. 2000. Design of Real-Time Image Enhancement Preprocessor for CMOS Image Sensor. IEEE Transactions on Consumer Electronics 46: 68 -75.
63. Kacira M. and P. P. Ling. 2001. Design and Development of an Automated and Non-Contact Sensing System for Continuous Monitoring of Plant Health and Growth. Transactions of the ASAE 44(4): 989-996.
64. Kacira M., P. P. Ling and T. H. Short. 2002. Establishing Crop Water Stress Index(CWSI) Threshold for Early, Non-contact Detection of Plant Water Stress. Transactions of the ASAE 45(3): 775-780.
65. Kacira M., P. P. Ling and T. H. Short. 2002. Machine Vision Extracted Movement for Early Detection of Plant Water Stress. Transactions of the ASAE 45(4): 1147-1153.
66. Karnieli A., A Gabai, C. Ichoku, E. Zaady and M. Shachak. 2002. Temporal Dynamics of Soil and Vegetation Spectral Response in a Semi-Arid Environment. Transactions of the IJRS 23:4073-4087.
67. King M. D., Y. J. Kaufman, W. P. Menzel and D. Tanre. 1992. Remote Sensing of Cloud , Aerosol, and Water Vapor Properties from Moderate Resolution Imaging Spectrometer. IEEE Transactions on Geoscience and Remote Sensing 21(5): 927-933.
68. Koller M. and S. K. Upadhyaya. 2005. Relationship Between Modified Normalized Difference Vegetation Index and Leaf Area Index for Processing Tomatoes. Transactions of the ASAE 21(5): 927-933.
69. Kuno, T., H. Sugiura and N. Matoba. 1998. A New Automatic Exposure System for Digital Still Cameras. Transactions of the IEEE 44(1):192-199.
70. Lattin J. M. J. D. Carroll and P. E. Green. 2003. Analyzing Multivariate Data. 1st ed. CA:Thomson Brooks.
71. Majumdar S. and D. S. Jayas. 2000. Classification of Cereal Grains Using Machine Vision:Ⅲ. Texture Models. Transactions of the ASAE 43(6): 1681-1687.
72. Majumdar S. and D. S. Jayas. 2000. Classification of Cereal Grains Using Machine Vision:Ⅳ. Combined Morphology, Color, and Texture Models. Transactions of the ASAE 43(6): 1689-1694.
73. Matlab. 2002. Ver. 6.5.0. The MathWorks, Inc.
74. Meyer G. E., T. Metha, M. F. Kocher, D. A. Mortensen and A. Samal. 1998. Textural Imaging and Discrimination Analysis for Distinguishing Weeds for Spot Spraying. Transactions of the ASAE 41(4): 1189-1197.
75. Michael F. J and S. E. Peter . 1990. Estimation of Subpixel Vegetation Cover Using Red-Infrared Scattergrams. Transactions of the IEEE Geoscience and Remote Sensing 28(2): 253-267.
76. Murakami M. and N. Honda. 1996. An Exposure Control System of Video Cameras Based on Fuzzy Logic Using Color Information. IEEE Transactions on Consumer Electronics 38(3):2181-2187.
77. Noh H., Q. Zhang, S. Han, B. Shin, D. Reum. 2005. Dynamic Calibration Image Segmentation Methods for Multispectral Imaging Crop Nitrogen Deficiency Sensors. Transactions of the ASAE 48(1): 393-401.
78. Nakano, N., R. Nishimura, H. Sai, A. Nishizawa and H. Komatsu. 1998. Digital Stillcamera System for Megapixel CCD. IEEE Transactions on Consumer Electronics 44: 581 –586.
79. Okushima, L., M. Saito, S. Sase, P. Ling and M. Ishii. 2004. Spectral Characteristics of Penicillium Species Using A Frequency Controlled Liquid Crystal Filter. Transactions of the BE 88(3): 265-269.
80. Otsu N. 1979. A Threshold Selection Method from Gray-Level Histograms. IEEE Trans. on System, Man and Cybernetics 9(1):62-66.
81. Pal, N. R. and S. K. Pal. 1989. Object-Background Segmentation Using New Definitions of Entropy. Transactions of the IEE Proceedings 136(4).
82. Pal, N. R. and S. K. Pal. 1993.A Review on Image Segmentation Techniques. Transactions of the Pattern Recognition 26(9):1277- 1294.
83. Peng Y. and R. Lu. 2006. An LCTF-Based Multispectral Imaging System for Estimation of Apple Fruit Firmness :Part Ⅱ. Selection of Optimal Wavelengths and Development of Predicted Models. Transactions of the ASAE 49(1):269-275.
84. Purevdorj, Ts., R. Tateishi, T. Ishiyama ang Y. Honda. 1998. Relationship between Percent Vegetation Cover and Vegetation Indices. Transactions of the IJRS 19(18):3519-3535.
85. Pohl C. and J. L. Van Genderen. 1998. Multisensor image fusion in remote sensing:concepts, methods and applications. Transactions of the IJRS 19(5):823-854.
86. Qi, J., A. Chehbouni, A. R. Huete, Y. H. Kerr, and S. Sorooshian. 1994. A Modified soil adjusted vegetation index. Transactions of the Remote Sensing of the Environment 48(2): 119-126.
87. Rencher A. C. 1998. Multivariate Statistical Inference and Applications. 1st ed. NY:Wiley.
88. Thenkabail Prasad S., R. B. Smith and E. D Pauw. 2000. Hyperspectral Vegetation Indices and Their Relationship with Agricultural Crop Characteristics.Transaction of the RSE 71:158-182.
89. Tom A. 1999. Digital Photography. 1st ed., 16-40.London. Mitchell Beazley.
90. Xiang H., J. Zheng and H. Zhou. 2003. Machine Vision Technology for Indoor Simulated Tree Image Acquisition and Recognition. ASAE Paper No. 035013. Las Vegas ,NV. ASAE.
91. Xiang H. and L. Tian. 2005. Automatic Camera Parameters Control Under Natural Lighting Conditions. ASAE Paper No. 053016. Tampa, FL. ASAE.
92. Yao H., L. Tian, L. Tang and K Thorp. 2002. Corn Canopy Reflectance Study with a Real-Time High-Density Spectral-Image Mapping System. ASAE Paper No. 023144. Chicago, IL: ASAE.
93. Yao H. and L. Tian. 2004. Practical Methods for Geometric Distortion Correction of Aerial Hyperspectral Imagery. Transactions of the ASAE 20(3):367-375.
94. Yin H. and S. Panigrahi. 2004. Image Processing Techniques for Internal Texture Evaluation of French Fries. Transactions of the ASAE 20(6): 803-811.
dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/25728-
dc.description.abstract本研究延續使用溫室內多功能監測系統,對不同生長階段的甘藍種苗擷取R、G、B及NIR波段影像,同時記錄苗齡、鮮物重和乾物重,以建立多光譜影像檢量模式。以室內種苗樣本多光譜影像之檢量模式來說,使用影像平均灰階、植被指數及紋理特徵作為輸入參數,建立了簡單多重線性迴歸、逐步多重線性迴歸、逐步迴歸之類神經網路及主成分分析之類神經網路共四種模式,其中以逐步迴歸之類神經網路具有最佳預測能力,其Rc、Rp、SEC、SEP及RPD在預測種苗苗齡為0.98、0.96、1.11、1.92及3.61;在預測種苗鮮物重為0.98、0.98、0.32、0.36及4.36,在預測種苗乾物重為0.99、0.96、0.02、0.05及3.61。
在溫室中擷取多光譜影像時,為避免現場光度變化造成影像曝光過度或不足,研究中建立了攝影機分割畫面之自動曝光演算法,並以LabVIEW 7.1版軟體撰寫控制程式,藉由設定影像範圍及灰階區間,以曝光控制演算法求得理想電子快門及增益值,進而擷取良好品質之影像。曝光控制性能測試方面,設定任意灰階上下限為10的範圍,該演算法皆可得到理想電子快門及增益值參數;時間響應方面,電子快門在任何灰階設定範圍狀況下,皆可在3秒鐘內完成控制,增益值方面,控制時間隨著灰階設定範圍與原影像平均灰階之差距成正比趨勢。
以溫室內多光譜影像而言,藉由空間校正、灰階校正及影像縫合等影像處理技巧得到苗床平面縫合影像,可瞭解目前苗床上苗盤分佈位置,並以NDVI空間分佈,予以四種不同灌溉水量,如此溫室內多功能監測系統在不同的時間,藉由擷取苗床平面影像及環境因子分析,可建立苗床位置之灌溉水量表,提供溫室內噴灑系統作為灌溉依據,以達到精準栽培之最終目標。
zh_TW
dc.description.abstractThis study keep on the application of multi-function monitoring system for greenhouse production. To investigate different growth stage, fresh matter weight and dry matter weight of cabbage seedling, this research estalishs analytic model, by using R,G, B and NIR image. This study uses multiple linear regression, stepwise multiple linear regression, stepwise artificial neural network and principle component analysis artificial neural network with the input of image gray level average, vegetation indice and texture from cabbage seedlings samples. The best prediction model is stepwise artificial neural network. For prediction of seedings growth day, Rc=0.98, Rp=0.96, SEC=1.11, SEP=1.92 and RPD=3.61. For prediction of seedings fresh matter weight, Rc=0.98、Rp=0.98、SEC=0.32、SEP=0.36 and RPD=4.36. For prediction of dry matter weight, Rc=0.99、Rp=0.96、SEC=0.02、SEP=0.05 and RPD=3.61.
To avoid the situation of image over-exposure or under-exposure, this study uses LabVIEW 7.1 software to establish an automatic exposure algorithm for camera shutter and gain control when grapping multi-image in greehouses. By set up image region of interest and gray level range the algorithm always find the optimal shutter and gain to grap image of good quality.In performance test, the algorithm works in any gray level range. In time response, it spends 3 seconds to finish shutter control. The execution time for gain control is proportional to the difference between initial image gray level and the setting.
The whole image from spatial calibration, gray-level calibration and image stitchment can provide tray location information.With the NDVI spatial variation, there are four kinds of irrigation policies corresponding four NDVI ranges. For the purpose of precision agriculture in greenhouses, the monitoring system set up different amount of irrigation water for different cabbage seeglings and transmit this information to sprayer system
en
dc.description.provenanceMade available in DSpace on 2021-06-08T06:26:57Z (GMT). No. of bitstreams: 1
ntu-95-R93631019-1.pdf: 16172397 bytes, checksum: d7413238b677d73285687ee9c082cbf9 (MD5)
Previous issue date: 2006
en
dc.description.tableofcontents誌 謝 ii
摘 要 iii
Abstract iv
目 錄 vi
圖 目 錄 viii
表 目 錄 xii
第一章 前言 1
1.1 前言 1
1.2 研究目的 3
第二章 文獻探討 4
2.1 遙測技術與光譜影像之結合及其應用 4
2.2 影像自動曝光演算法 12
2.3 影像處理 16
2.4 植被指數及其應用 27
第三章 多功能監測系統之建立 35
3.1 溫室內多功能監測系統 35
3.2研究地點 44
第四章 研究方法 45
4.1 苗株多光譜影像擷取系統 45
4.2 多功能監測系統量測流程 57
4.3 實驗材料與規劃 58
4.4 苗株灌溉水份分級表之建立 63
第五章 結果與討論 74
5.1 系統之建立與性能之測試 74
5.2 多重線性迴歸分析結果 88
5.3 逐步多重線性迴歸分析結果 93
5.4 類神經網路預測模式 95
5.5 各分析模式之綜合比較 97
5.6 溫室內苗株灌溉水量分級表之建立 101
5.7 溫室內環境參數空間及時間之變異分析 106
第六章 結論與建議 111
6.1 結論 111
6.2 建議 112
參考文獻 113
dc.language.isozh-TW
dc.subject自動曝光演算法zh_TW
dc.subject植被指數zh_TW
dc.subject多光譜影像zh_TW
dc.subjectVegetation Indicesen
dc.subjectMulti-spectral Imageen
dc.subjectAuto-exposure Alogorithmen
dc.title應用溫室內多功能監測系統於甘藍種苗生長性狀判別之研究zh_TW
dc.titleApplying Multi-Functional Monitoring System to Investigate Growth State of Cabbage Seedlings in Greenhousesen
dc.typeThesis
dc.date.schoolyear94-2
dc.description.degree碩士
dc.contributor.oralexamcommittee謝欽城,謝廣文,江昭皚
dc.subject.keyword多光譜影像,自動曝光演算法,植被指數,zh_TW
dc.subject.keywordMulti-spectral Image,Auto-exposure Alogorithm,Vegetation Indices,en
dc.relation.page122
dc.rights.note未授權
dc.date.accepted2006-07-27
dc.contributor.author-college生物資源暨農學院zh_TW
dc.contributor.author-dept生物產業機電工程學研究所zh_TW
顯示於系所單位:生物機電工程學系

文件中的檔案:
檔案 大小格式 
ntu-95-1.pdf
  未授權公開取用
15.79 MBAdobe PDF
顯示文件簡單紀錄


系統中的文件,除了特別指名其著作權條款之外,均受到著作權保護,並且保留所有的權利。

社群連結
聯絡資訊
10617臺北市大安區羅斯福路四段1號
No.1 Sec.4, Roosevelt Rd., Taipei, Taiwan, R.O.C. 106
Tel: (02)33662353
Email: ntuetds@ntu.edu.tw
意見箱
相關連結
館藏目錄
國內圖書館整合查詢 MetaCat
臺大學術典藏 NTU Scholars
臺大圖書館數位典藏館
本站聲明
© NTU Library All Rights Reserved