請用此 Handle URI 來引用此文件:
http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/44189
完整後設資料紀錄
DC 欄位 | 值 | 語言 |
---|---|---|
dc.contributor.advisor | 陳世銘(Suming Chen) | |
dc.contributor.author | I-Chang Yang | en |
dc.contributor.author | 楊宜璋 | zh_TW |
dc.date.accessioned | 2021-06-15T02:44:04Z | - |
dc.date.available | 2014-08-12 | |
dc.date.copyright | 2009-08-12 | |
dc.date.issued | 2009 | |
dc.date.submitted | 2009-08-10 | |
dc.identifier.citation | Berman, M., P. M. Connor, L. B. Whitbourn, D. A. Coward, B. G. Osborne, and M. D. Southan. 2007. Classification of sound and stained wheat grains using visible and near infrared hyperspectral image analysis. Journal of Near Infrared Spectroscopy 754 (10): 351-358.
Boyer, J. 1970. Leaf enlargement and metabolic rates in corn, soybean, and sunflower at various leaf water potentials 1. Plant Physiology 46 (2): 233-235. 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. Cannell, M., F. Bridgwater, and M. Greenwood. 1978. Seedling growth rates, water stress responses and root-shoot relationships related to eight-year volumes among families of Pinus taeda L. Silvae Genetica 27 (6): 237-248. 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., ATB. Chen, S., Li, M. T., Chen, C. T., Lin, Y. C., Huang, C. W., Wu, T. H. and Hsieh, K. W., 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. Chen, S. and Lin, T. T. Acta Horticulturae 578: 295-301. Chen, S., C. W. Huang, C. C. Huang, C. K. Yang, T. H. Wu, Y. Z. Tsai, and P. L. Miao. 2003. Determination of nitrogen content in rice crop using multi-spectral imaging. ASAE Paper No. 03-1132, St. Joseph, MI, USA: ASAE. Chen, S., C. Y. Tsai, J. F. Hsieh, C. H. Hung, Y. C. Chiu, K. W. Hsieh, J. A. Jiang, R. L. C. Chen, H. C. Yang, C. T. Chen, I. C. Yang, C. W. Yang, T. H. Wu, M. T. Li, C. W. Huang, C. C. Huang, C. C. Tsai, C. K. Yang, and P. Brimmer. 2004. Growth status monitoring and quality evaluation for bio-production and products using spectral sensing techniques. In “Proceedings of the Second International Symposium on Machinery and Mechatronics for Agriculture and Bio-systems Engineering”, Keynote Speech, KN-9 ~ 23. Kobe, Japan: Kobe University. Chen, S., C. T. Chen, I. C. Yang, M. T. Li, C. W. Huang, C. C. Huang, and K. W. Hsieh. 2005. Plant-oriented status monitoring using multi-spectral imaging techniques. In “Proceedings of International Conference on Research Highlights and Vanguard Technology on Environmental Engineering in Agricultural Systems”, 221-226. Kanazawa, Japan: Kanazawa University. Chen, S., H. C. Lu, K. W. Hsieh, Y. I. Huang, C. T. Chen, I. C. Yang, C. L. Chang, G. H. Yeh. 2006. Development of multi-functional remote sensing system for greenhouse production. In “Proceedings of SPIE International Symposium on Optics East – Sensors and Photonics for Applications in Industry, Life Sciences, and Communications”. Boston, MA, USA: The International Society for Optical Engineering. Vol. 6381 638103-1. Codex. 2003. Discussion paper on deoxynivalenol. Codex Committee on Food Additives and Contaminants. in 35th Session, Codex Alimentarius Commission, FAO/WHO, Rome. Cogdill, R. P., C. R. Hurburgh, G. R. Rippke, S. J. Bajic, R. W. Jones, J. F. McClelland, T. C. Jensen, and J. Liu. 2004. Single-kernel maize analysis by near-infrared hyperspectral imaging. Transactions of the ASAE 47 (1): 311-320. Delwiche, S. R., and M. S. Kim. 2000. Hyperspectral imaging for detection of scab in wheat. In “Proceedings of SPIE International Symposium on Optics East -- Biological Quality and Precision Agriculture II”. Vol. 4203, 13-20. James A. DeShazer and George E. Meyer, Eds. Boston, MA, USA: The International Society for Optical Engineering. Delwiche, S. R. 2003. Classification of scab- and other mold-damaged wheat kernels by near-infrared reflectance spectroscopy. Transactions of the ASAE 46 (3): 731–738. Delwiche, S. R., and G. A. Hareland. 2004. Detection of scab damaged hard red spring wheat kernels by near-infrared reflectance. Cereal Chemistry 81 (5): 643–649. Delwiche, S. R., and C. S. Gaines. 2005. Wavelength selection for monochromatic and bichromatic sorting of Fusarium-damaged wheat. Applied Engineering in Agriculture 21(4): 681–688. Delwiche, S. R., T. C. Pearson, and D. L. Brabec. 2005. High-speed optical sorting of soft wheat for reduction of deoxynivalenol. Plant Disease 89 (11): 1214–1219. Delwiche, S. R. 2008. High-speed bichromatic inspection of wheat kernels for mold and color class using high-power pulsed LEDs. Sensing and Instrumentation in Food Quality and Safety 1 (2): 103–110. Dexter, J. E., and R. R. Matsuo. 1982. Effect of smudge and blackpoint, mildewed kernels, and ergot on durum wheat quality. Cereal Chemistry 59 (1): 63-69. Dexter, J. E., and T. W. Nowicki. 2003. Safety assurance and quality assurance issues associated with Fusarium head blight in wheat. Chap. 16 in Fusarium Head Blight of Wheat and Barley, K. J. Leonard and W. R. Bushnell, Eds., pp. 420–460, American Phytopathological Society, St. Paul, MN. Dowell, F. E., M. S. Ram, and L. M. Seitz. 1999. Predicting scab, vomitoxin, and ergosterol in single wheat kernels using near-infrared spectroscopy. Cereal Chemistry 76 (4): 573–576. Dowell, F. E., T. N. Boratynski, R. E. Ykema, A. K. Dowdy and R. T. Staten. 2002. Use of optical sorting to detect wheat kernels infected with Tilletia indica. Plant Disease 86 (9): 1011–1013. FAO. 2003. Worldwide regulations for mycotoxins in food and feed in 2003. In Food Nutrition. (Roma) p. 81, Food and Agriculture Organization of the United Nations, Rome. Fulcher, R. G., T. P. O'Brien, and J. W. Lee. 1972. Studies on the aleurone layer. I. Conventional and fluorescence microscopy of the cell wall with emphasis on phenol-carbohydrate complexes in wheat. Australian Journal of Biological Sciences 25 (1): 23. Fulcher, R. G., and S. I. Wong. 1980. Inside cereals–A fluorescence microchemical view. In 'Cereals for Food and Beverages', ed. GE Inglett and L. Munck, eds, 1-26. New York: Academic Press. Gonzalez, R. C. and R. E. Woods. 1992. Digital Image Processing. New York: Addison-Wesley Publishing Company Inc., U.S.A. Hache, C. 2003. Site-specific crop response to soil variability in an upland field. Master Science Thesis. Tokyo, Japan: Tokyo University of Agriculture and Technology, Division of Environmental and Agricultural Engineering. Han, S., L. Hendrickson and B. Ni. 2001. Comparison of satellite remote sensing and aerial photography for ability to detect in-season nitrogen stress in corn. ASAE Paper No. 011142. St. Joseph, Mich.: ASAE. Hart, L. P., and O. Schabenberger. 1998. Variability of vomitoxin in truckloads of wheat in a wheat scab epidemic year. Plant Disease 82 (6): 625–630. Hsiao, T., E. Acevedo, E. Fereres, and D. Henderson. 1976. Water stress, growth, and osmotic adjustment. Philosophical Transactions of the Royal Society of London. Series B, Biological Sciences 479-500. Irving, D. W., R. G. Fulcher, M. M. Bean, and R. M. Saunders. 1989. Differentiation of wheat based on fluorescence, hardness, and protein. Cereal Chemistry 66 (6): 471-477. Johnson, D. A., M. D. Rumbaugh, L. S. Willardson, K. H. Asay, D. N. Rinehart, and M. R. Aurasteh. 1982. A greenhouse line-source sprinkler system for evaluating plant response to a water application gradient. Crop Science 22 (2): 441. Kacira, M., P. Ling, and T. Short. 2002. Machine vision extracted plant movement for early detection of plant water stress. Transactions of the ASAE 45 (4): 1147-1153. Kim, M. S., Y. R. Chen, and P. M. Mehl. 2001. Hyperspectral reflectance and fluorescence imaging system for food quality and safety. Transactions of the ASAE 44 (3): 721-729. King, J. E., A. D. Evers, and B. A. Stewart. 1981. Black-point of grain in spring wheats of the 1978 harvest. Plant Pathology 30 (1): 51-53. Kittas, C., T. Bartzanas, and A. Jaffrin. 2003. Temperature gradients in a partially shaded large greenhouse equipped with evaporative cooling pads. Biosystems Engineering 85 (1): 87-94. Kostrzewski, M., P. Waller, P. Guertin, J. Haberland, P. Colaizzi, E. Barnes, T. Thompson, T. Clarke, E. Riley and C. Choi. 2002. Ground-based remote sensing of water and nitrogen stress. Transactions of the ASAE 47 (1): 291-299. Lizaso, J. I., W. D. Batchelor and M. E. Westgare. 2002. Using the normalized difference vegetation index and a crop simulation model to predict soil spatial variability. Transactions of the ASAE 45 (4): 1217-1222. Lu, F. M., S. Chen, C. K. Yeh, T. T. Lin, K. N. Wang, T. H. Wu, F. S. Chang, and W. J. Chen. 2000. Utilization of satellite-based information on the development of precision agriculture for crop production system in Taiwan. In “Proceedings of the XIV Memorial CIGR World Congress 2000”, 442-447. Tsukuba, Japan: Tsukuba University. Luo, X., D. S. Jayas, and S. J. Symons. 1999. Identification of damaged kernels in wheat using a colour machine vision system. Journal of Cereal Science 30, 49–59. Marino, B. D. V., P. Geissler, B. O’Connell, N. Dieter, T. Burgess, C. Roberts, and J. Lunine. 1999. Multispectral imaging of vegetation at Biosphere 2. Ecological Engineering 13: 321-331. McKeehen, J. D., R. H. Busch, and R. G. Fulcher. 1999. Evaluation of wheat (Triticum aestivum L.) phenolic acids during grain development and their contribution to Fusarium resistance. Journal of Agricultural and Food Chemistry 47 (4): 1476-1482. Mündermann, L., Y. Erasmus, B. Lane, E. Coen, and P. Prusinkiewicz. 2005. Quantitative modeling of Arabidopsis development. Plant Physiology 139 (2): 960-968 Paul, P. A., P. E. Lipps, and L. V. Madden. 2005. Relationship between visual estimates of Fusarium head blight intensity and deoxynivalenol accumulation in harvested wheat grain: a meta-analysis. Phyto-pathology 95 (10): 1225–1236. Pasikatan, M. C., and F. E. Dowell. 2003. Evaluation of a high-speed color sorter for segregation of red and white wheat. Applied Engineering in Agriculture 19 (1): 33–38. Pasikatan, M. C., and F. E. Dowell. 2004. High-speed NIR segregation of high- and low-protein single wheat seeds. Cereal Chemistry 81 (1): 145–150. Pearson, T. C., D. T. Wicklow, and M. C. Pasikatan. 2004. Reduction of aflatoxin and fumonisin contamination in yellow corn by high-speed dual wavelength sorting. Cereal Chemistry 81 (4): 490–498. Plant, R., D. Munk, B. Roberts, R. Vargas, D. Rains, R. Travis, and R. Hutmacher. 2000. Relationships between remotely sensed reflectance data and cotton growth and yield. Transactions of the ASAE 43 (3): 535-546. Ram, M. S., L. M. Seitz, and F. E. Dowell. 2004. Natural fluorescence of red and white wheat kernels. Cereal Chemistry 81 (2): 244-248. Rees, R. G., D. J. Martin, and D. P. Law. 1984. Black point in bread wheat: effects on quality and germination, and fungal associations. Australian Journal of Experimental Agriculture and Animal Husbandry 24 (127): 601-605. Ruan, R., S. Ning, A. Song, A. Ning, R. Jones, and P. Chen. 1998. Estimation of Fusarium scab in wheat using machine vision and a neural network. Cereal Chemistry 75 (4): 455–459. SAS Institute Inc. 2004. The DISCRIM procedure. Chap. 25 in SAS/ STAT® 9.1 User’s Guide, pp. 1137–1246, SAS Institute Inc., Cary, NC. Singh, C. B., D. S. Jayas, J. Paliwal, and N. D. G. White. 2007. Fungal detection in wheat using near-infrared hyperspectral imaging. Transactions of the ASAE 50 (6): 2171-2176. Singh, C. B., D. S. Jayas, J. Paliwal, and N. D. G. White. 2009. Detection of sprouted and midge-damaged wheat kernels using near-infrared hyperspectral imaging. Cereal Chemistry 86 (3): 256-260. Smail, V. W., A. K. Fritz, and D. L. Wetzel. 2006. Chemical imaging of intact seeds with NIR focal plane array assists plant breeding. Vibrational Spectroscopy 42 (2): 215-221. Stack, R. W. 2003. History of Fusarium head blight with emphasis on North America,” Chap. 1 in Fusarium Head Blight of Wheat and Barley, K. J. Leonard and W. R. Bushnell, Eds., pp. 1–34, The American Phytopathological Society, St. Paul, MN. Tisserat, N., M. Burrow, and R. Koski. 2007. Black point (Black tip fungus or kernel smudge). HIGH PLAINS Integrated Pest Management. Available at: http://scarab.msu.montana.edu/HpIPMSearch/Docs/BlackPoint-SmallGrains.htm. Accessed 30 April 2009. U.S. Food and Drug Administration. 1993. Letter from Ronald Chesemore to State Agricultural Directors, state feed control officials, and food, feed and grain trade organizations on advisory levels for DON (vomitoxin) in food and feed U.S. Department of Health and Human Services. Public Health Service, Rockville, MD. USDA-GIPSA. 2006. Subpart M - United States Standards for Wheat. USDA-GIPSA. Available at: http://archive.gipsa.usda.gov/reference-library/standards/810wheat.pdf. Accessed 17 February 2009. USDA-GIPSA. 2009. Visual Reference Images -- Interpretive Lines. USDA-GIPSA. Available at: http://archive.gipsa.usda.gov/tech-servsup/visualref/vrionweb/vrionweb_.htm. Accessed 1 April 2009. Yang, I., S. Chen, Y. Huang, K. Hsieh, C. Chen, H. Lu, C. Chang, H. Lin, Y. Chen, and C. Chen. 2008. RFID-integrated multi-functional remote sensing system for seedling production management. In ' Food Processing Automation Conference Proceedings', Providence, Rhode Island, USA: the American Society of Agricultural and Biological Engineers. Yao, H., L. Tian. and N. Noguchi. 2001. Hyperspectral system optimization and image processing. ASAE Paper, No. 011105. St. Joseph, Mich.: ASAE. Zandomeneghi, M. 1999. Fluorescence of cereal flours. Journal of Agricultural and Food Chemistry 47 (3): 878-882. | |
dc.identifier.uri | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/44189 | - |
dc.description.abstract | 使用非破壞、非侵入性的檢測方法已漸成為生物材料測定方法的新趨勢。而光學方法正符合這樣的性質,且能依據不同的檢測目的來進行檢測系統的設計,包含外部與內部品質。本論文包含三部份,從光學分析的角度,探討穀物的安全及品質檢測,並延伸探討在溫室中種苗生長的檢測與管理。在第一部份提到鐮胞菌枯萎症 (Fusarium Head Blight, FHB) 是一種在小粒穀物上由真菌引起之全球性疾病,因此影響了產量、食品和飼料產品的品質與食用安全。本研究發展有效的光學檢測方法,從正常的麥粒中,檢測枯萎損壞的小麥。經由高功率脈衝的LED (綠光和紅光)檢測系統的發展,發現鐮胞菌損壞和正常小麥粒有不同的反射能量表現,以其反射響應強度迴歸而得之雙參數(斜率與判定係數r2)建立線性判別分析模型。在良好、受控制的條件下,麥粒以動態自由落體方式檢測其精度,可大於90%。第二部份研究中,應用高光譜影像來鑑別健康小麥與由真菌引起的黑頭損傷。經由波長影像之分析,於531 nm 波長取得之螢光影像用於影像處理及分類之分析。分析結果指出,當麥粒皆位於背向朝著上方攝影機時,其分類的準確率可高達95%。論文的第三部份,是將RFID(無線射頻辨識系統)導入溫室內精準栽培環境,以光譜影像遙測技術為基礎,針對溫室開發多功能監測系統。透過RFID技術建立一套種苗生產履歷資料庫,內部架構涵蓋栽培管理履歷、設施環境履歷。對溫室內種苗植株進行遙測光譜影像及環境因子擷取,搭配RFID技術整合生產相關履歷資料,自動巡走及擷取、記錄相關種苗生產資訊,以提供溫室種苗生產管理之依據。 | zh_TW |
dc.description.abstract | Non-destructive and non-invasive inspection of biomaterials is a relatively new technology. The detection apparatus design depends on the purpose of the inspection, such as whether external or internal quality is of interest. There are three parts in this dissertation. From the view point of the optical analysis, the safety and quality issues of grain were discussed in the first two parts, and the monitoring and management of seedling production in the greenhouse was also elaborated in this dissertation. These three parts are summarized as follows: First, a study was implemented to develop more efficient methods for optically detecting wheat kernels damaged by Fusarium head blight, a fungal disease that is usually accompanied by the mycotoxin, deoxynivalenol. Through development of a high-power pulsed LED (green and red light) inspection system, it was found that Fusarium-damaged and normal wheat kernels have different reflected energy responses. Two parameters (slope and coefficient of determination r2) from a regression analysis of the green and red LED responses were used as input parameters in linear discriminant analysis models. The examined factors affecting accuracy were the orientation of the optical probe, the color contrast between normal and Fusarium-damaged kernels, and the manner in which one LED’s response was time-matched to the other LED. The current research on free-falling kernels has demonstrated accuracies (>90% for wheat samples with high visual contrast) that approach those of controlled, in-laboratory conditions. This approach may lead to improvements in high-speed optical sorters. Second, a feasibility study was conducted on the use of hyperspectral imaging to differentiate sound wheat kernels from those with a damage condition called black point. Through analysis of wavelength images, one fluorescence wavelength (531 nm) was selected for image processing and classification analysis. Results indicated that with this wavelength alone, classification accuracy could be as high as 95% when kernels were oriented with their dorsal side toward the camera. Third, a system was designed and implemented for precision cultivation and micro-environment monitoring for seedling production in the greenhouse. Based on RFID-integrated multi-functional remote sensors with a plant-oriented sensing algorithm for both monitoring and controlling the greenhouse environment, the system linked spectral and environmental inputs for the control of seedling irrigation. Further, the study aimed to construct a traceability system for seedling production in greenhouses using RFID technology. The contents of the developed database were divided into two parts, a management traceability system and an environment traceability system. The traceability systems provided the operators with records of seedling growth and management history and served as the decision bases for spray and related operations. | en |
dc.description.provenance | Made available in DSpace on 2021-06-15T02:44:04Z (GMT). No. of bitstreams: 1 ntu-98-F90631003-1.pdf: 1938597 bytes, checksum: 469dde5510cc93b67912cd8153f157b2 (MD5) Previous issue date: 2009 | en |
dc.description.tableofcontents | 口試委員會審定書 i
誌謝 ii ACKNOWLEDGEMENTS iii 中文摘要 iv ABSTRACT v CONTENTS vii LIST OF FIGURES xii LIST OF TABLES xvii LIST OF SYMBOL xviii CHAPTER 1. GENEREAL INTRODUCTION 1 1.1 INTRODUCTION 1 1.2 PROJECT BACKGROUND 7 1.3 GENERAL OBJECTIVE 7 1.4 DISSERTATION ORGANIZATION 7 CHAPTER 2. ENHANCEMENT OF FUSARIUM HEAD BLIGHT DETECTION IN FREE-FALLING WHEAT KERNELS USING A BICHROMATIC PULSED LED DESIGN 9 2.1 INTRODUCTION 9 2.2 EXPERIMENTAL 12 2.2.1 WHEAT KERNEL PREPARATION 12 2.2.2 EXPERIMENTAL APPARATUS AND DESIGN 12 2.2.3 OPERATION 17 2.2.4 DATA ANALYSIS 18 2.3 RESULTS 21 2.3.1 SIGNAL ACQUISITION 21 2.3.2 ANGLE AND ANALYSIS METHODS 24 2.3.3 CONTRAST OF KERNELS 30 2.3.4 METHOD OF PAIRING LED RESPONSES 31 2.4 DISCUSSION 33 2.5 SUMMARY AND CONCLUSIONS 37 CHAPTER 3. DETERMINATION OF WHEAT KERNEL BLACK POINT DAMAGE USING HYPER-SPECTRAL IMAGING 38 3.1 INTRODUCTION 38 3.2 MATERIALS AND METHODS 40 3.2.1 WHEAT 40 3.2.2 KERNEL PREPARATION 41 3.2.3 HYPERSPECTRAL IMAGING SYSTEM 43 3.2.4 LIGHTING AND CALIBRATION OF REFLECTANCE 45 3.2.5 LIGHTING AND CALIBRATION OF FLUORESCENCE 46 3.2.6 KERNEL SPECTRAL FEATURE ANALYSIS 47 3.2.7 IMAGE PROCESSING 50 3.2.7.1 SEGMENTATION AND THE KERNEL MASK EXTRACTION 52 3.2.7.2 EROSION FOR NOISE ELIMINATION AND DILATION FOR KERNEL RECOVERY 52 3.2.7.3 KERNEL IMAGE FEATURE CALCULATION 52 3.2.8 STATISTICAL CLASSIFICATION 54 3.3 RESULTS AND DISCUSSION 55 3.3.1 LDA ANALYSIS 56 3.3.2 DISCUSSION 66 3.4 CONCLUSION 67 CHAPTER 4. RFID-INTEGRATED MULTI-FUNCTIONAL REMOTE SENSING SYSTEM FOR SEEDLING PRODUCTION MANAGEMENT IN GREENHOUSE 68 4.1 INTRODUCTION 68 4.2 MATERIALS AND METHODS 70 4.2.1 HARDWARE SYSTEM 70 4.2.1.1 IMAGING SUB-SYSTEM 71 4.2.1.2 ENVIRONMENTAL FACTORS MEASUREMENT SYSTEM 72 4.2.1.3 RFID INFORMATION SYSTEM 73 4.2.2 SOFTWARE PLATFORM 73 4.2.2.1 IMAGE PROCESSING 74 4.2.2.1.1 SPATIAL CALIBRATION 74 4.2.2.1.2 IMAGE STITCHING 74 4.2.2.1.3 IMAGE SEGMENTATION 75 4.2.2.2 MIDDLEWARE OF RFID SYSTEM 76 4.2.3 SAMPLE AND EXPERIMENT GREENHOUSE 76 4.3 RESULTS AND DISCUSSION 76 4.3.1 REMOTE SENSING OF CANOPY AND ENVIRONMENTAL FACTOR MEASUREMENTS 76 4.3.2 RFID-INTEGRATED PRODUCTION TRACEABILITY SYSTEM WITH THE WATERING CRITERIA 81 4.3.3 IRRIGATION CRITERIA IN THE GREENHOUSE 84 4.4 DISCUSSION 89 4.5 CONCLUSION 89 CHAPTER 5. GNEREAL CONCLUSIONS 91 5.1 GENERAL DISCUSSION 91 5.2 RECOMMENDATIONS FOR FUTURE RESEARCH 93 REFERENCES 94 | |
dc.language.iso | en | |
dc.title | 應用光學非破壞性檢測技術於生物材料分析 | zh_TW |
dc.title | Assessments of Biomaterials Using Non-Destructive Optical Inspection | en |
dc.type | Thesis | |
dc.date.schoolyear | 97-2 | |
dc.description.degree | 博士 | |
dc.contributor.oralexamcommittee | 艾群(Chyung Ay),林達德(Ta-Te Lin),林宗賢(Tzong-Shyan Lin),謝廣文(Kuang-Wen Hsieh),史蒂芬李查戴爾維奇(Stephen R. Delwiche),羅揚銘(Y. Martin Lo) | |
dc.subject.keyword | 生物材料,光學檢測,麥粒,鐮胞菌枯萎症,種苗,溫室,無線射頻辨識系統,光譜影像, | zh_TW |
dc.subject.keyword | Biomaterials,Optical Inspection,Wheat Kernel,Fusarium Head Blight,Seedlings,Greenhouse,RFID (Radio Frequency Identification),Spectral Imaging, | en |
dc.relation.page | 102 | |
dc.rights.note | 有償授權 | |
dc.date.accepted | 2009-08-10 | |
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-98-1.pdf 目前未授權公開取用 | 1.89 MB | Adobe PDF |
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。