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A Study on Web Services Management Architecture of Digital Forestry Platform 被引量:1
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作者 JIAO Fan ZHANG Xu LI Fan LIU Yan 《Chinese Forestry Science and Technology》 2007年第1期87-92,共6页
This paper discussed the function of web service technology in Digital Forestry Platform. The work principle and the system structure of the management mechanism of web service resource were also discussed. The web se... This paper discussed the function of web service technology in Digital Forestry Platform. The work principle and the system structure of the management mechanism of web service resource were also discussed. The web service management architecture was designed and all the workflow under this architecture was elaborated. As an important component of Digital Forestry Support Platform, web service management has provided essential guarantee for the operation of Digital Forestry Platform. 展开更多
关键词 digital forestry Platform web service web service management
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Machine learning-based spectral and spatial analysis of hyper-and multi-spectral leaf images for Dutch elm disease detection and resistance screening
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作者 Xing Wei Jinnuo Zhang +7 位作者 Anna O.Conrad Charles E.Flower Cornelia C.Pinchot Nancy Hayes-Plazolles Ziling Chen Zhihang Song Songlin Fei Jian Jin 《Artificial Intelligence in Agriculture》 2023年第4期26-34,共9页
Diseases caused by invasive pathogens are an increasing threat to forest health,and early and accurate disease detection is essential for timely and precision forest management.The recent technological advancements in... Diseases caused by invasive pathogens are an increasing threat to forest health,and early and accurate disease detection is essential for timely and precision forest management.The recent technological advancements in spectral imaging and artificial intelligence have opened up new possibilities for plant disease detection in both crops and trees.In this study,Dutch elm disease(DED;caused by Ophiostoma novo-ulmi,)and American elm(Ulmus americana)was used as example pathosystem to evaluate the accuracy of two in-house developed high-precision portable hyper-and multi-spectral leaf imagers combined with machine learning as new tools for forest disease detection.Hyper-and multi-spectral images were collected from leaves of American elm geno-types with varied disease susceptibilities after mock-inoculation and inoculation with O.novo-ulmi under green-house conditions.Both traditional machine learning and state-of-art deep learning models were built upon derived spectra and directly upon spectral image cubes.Deep learning models that incorporate both spectral and spatial features of high-resolution spectral leaf images have better performance than traditional machine learning models built upon spectral features alone in detecting DED.Edges and symptomatic spots on the leaves were highlighted in the deep learning model as important spatial features to distinguish leaves from inoculated and mock-inoculated trees.In addition,spectral and spatial feature patterns identified in the machine learning-based models were found relative to the DED susceptibility of elm genotypes.Though further studies are needed to assess applications in other pathosystems,hyper-and multi-spectral leaf imagers combined with machine learning show potential as new tools for disease phenotyping in trees. 展开更多
关键词 American elm Dutch elm disease Hyperspectral imaging Multispectral imaging Support vector machine Convolution neural network Disease phenotyping digital forestry
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