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231010 ||| eng |
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|a 9789819949731
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100 |
1 |
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|a Wang, Rujing
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245 |
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|a Deep Learning for Agricultural Visual Perception
|h Elektronische Ressource
|b Crop Pest and Disease Detection
|c by Rujing Wang, Lin Jiao, Kang Liu
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250 |
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|a 1st ed. 2023
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260 |
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|a Singapore
|b Springer Nature Singapore
|c 2023, 2023
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300 |
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|a XII, 131 p. 1 illus
|b online resource
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505 |
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|a Chapter 1. Introduction -- Chapter 2. Deep Learning Technology -- Chapter 3. Large-Scale Agricultural Pest and Disease Datasets -- Chapter 4. Sampling-balanced Region Proposal Network for Pest Detection -- Chapter 5. Crop Pest Detection Methods in Field -- Chapter 6. A CNN-based Arbitrary-oriented Wheat Disease Detection Method
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653 |
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|a Machine learning
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653 |
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|a Image processing / Digital techniques
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653 |
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|a Machine Learning
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653 |
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|a Computer vision
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653 |
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|a Image processing
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653 |
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|a Artificial Intelligence
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653 |
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|a Computer Vision
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653 |
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|a Computer Imaging, Vision, Pattern Recognition and Graphics
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653 |
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|a Image Processing
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653 |
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|a Artificial intelligence
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653 |
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|a Agriculture
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700 |
1 |
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|a Jiao, Lin
|e [author]
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700 |
1 |
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|a Liu, Kang
|e [author]
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041 |
0 |
7 |
|a eng
|2 ISO 639-2
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989 |
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|b Springer
|a Springer eBooks 2005-
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028 |
5 |
0 |
|a 10.1007/978-981-99-4973-1
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856 |
4 |
0 |
|u https://doi.org/10.1007/978-981-99-4973-1?nosfx=y
|x Verlag
|3 Volltext
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082 |
0 |
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|a 006.3
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520 |
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|a This monograph provides a detailed and systematic introduction to the application of deep learning technology in the intelligent monitoring of crop diseases and pests. Taking 24 types of crop pests, wheat aphids, and wheat diseases with complex backgrounds as examples, a large-scale crop pest and disease dataset was constructed to provide necessary data support for the deep learning module. Various schemes for identifying and detecting large-scale crop diseases and pests based on deep convolutional neural network technology have also been proposed. This book can be used as a reference for teachers and students majoring in agriculture, computer science, artificial intelligence, intelligent science and technology, and other related fields in higher education institutions. It can also be used as a reference book for researchers in fields such as image processing technology, intelligent manufacturing, and high-tech applications
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