Deep Learning for Sustainable Agriculture
Poonia, Ramesh Chandra
Singh, Vijander
Nayak, Soumya Ranjan
The evolution of deep learning models, combined with with advances in the Internet of Things and sensor technology, has gained more importance for weather forecasting, plant disease detection, underground water detection, soil quality, crop condition monitoring, and many other issues in the field of agriculture. agriculture. Deep Learning for Sustainable Agriculture discusses topics such as the impactful role of deep learning during the analysis of sustainable agriculture data and how deep learning can help farmers make better decisions. It also considers the latest deep learning techniques for effective agriculture data management, as well as the standards established by international organizations in related fields. The book provides advanced students and professionals in agricultural science and engineering, geography, and geospatial technology science with an in-depth explanation of the relationship between agricultural inference and the decision-support amenities offered by an advanced mathematical evolutionary algorithm. . Introduces new deep learning models developed to address sustainable solutions for issues related to agriculture . Provides reviews on the latest intelligent technologies and algorithms related to the state-of-the-art methodologies of monitoring and mitigation of sustainable agriculture . Illustrates through case studies how deep learning has been used to address a variety of agricultural diseases that are currently on the cutting edge . Delivers an accessible explanation of artificial intelligence algorithms, making it easier for the reader to implement or use them in their own agricultural domain INDICE: 1. Smart agriculture: Technological advancements on agriculture-A systematical review 2. A systematic review of artificial intelligence in agriculture 3. Introduction to deep learning in precision agriculture: Farm image feature detection using unmanned aerial vehicles through classification and optimization process of machine learning with convolution neural network 4. Design and implementation of a crop recommendation system using nature-inspired intelligence for Rajasthan, India 5. Artificial intelligent-based water and soil management 6. Machine learning for soil moisture assessment 7. Automated real-time forecasting of agriculture using chlorophyll content and its impact on climate change 8. Transformations of urban agroecology landscape in territory transition 9. WeedNet: A deep neural net for weed identification 10. Sensors make sense: Functional genomics, deep learning, and agriculture 11. Crop management: Wheat yield prediction and disease detection using an intelligent predictive algorithms and metrological parameters 12. Sugarcane leaf disease detection through deep learning 13. Prediction of paddy cultivation using deep learning on land cover variation for sustainable agriculture 14. Artificial intelligence-based detection and counting of olive fruit flies: A comprehensive survey
- ISBN: 978-0-323-85214-2
- Editorial: Academic Press
- Encuadernacion: Rústica
- Páginas: 406
- Fecha Publicación: 24/01/2022
- Nº Volúmenes: 1
- Idioma: Inglés