1. |
Ganatra N. and Patel A. A Survey on Diseases Detection and Classification of Agriculture Products using Image Processing and Machine Learning. International Journal of Computer Applications, vol. 180, no. 13, pp. 1-13, 2018.
|
2. |
Tripathi M.K. and Maktedar, D.D. A Role of Computer Vision in Fruits and Vegetables Among Various Horticulture Products of Agriculture Fields: A Survey. Information Processing in Agriculture, vol. 7, no. 2, pp. 183-203, 2020.
|
3. |
Iglesias A., Quiroga S., Moneo M., and Garrote L. from Climate Change Impacts to the Development of Adaptation Strategies: Challenges for Agriculture in Europe. Climatic Change, vol. 112, pp. 143-168, 2012.
|
4. |
Nchuchuwe F.F. and Adejuwon, K.D. The Challenges of Agriculture and Rural Development in Africa: The Case of Nigeria. International Journal of Academic Research in Progressive Education and Development, vol. 1, no. 3, pp. 45-61, 2012.
|
5. |
Henry R.J. Innovations in Plant Genetics Adapting Agriculture to Climate Change. Current Opinion in Plant Biology, vol. 56, pp. 168-173, 2020.
|
6. |
Makate C. Effective Scaling of Climate Smart Agriculture Innovations in African Smallholder Agriculture: A Review of Approaches, Policy and Institutional Strategy Needs. Environmental science & policy, vol. 96, pp. 37-51, 2019.
|
7. |
Guo J., Wei P.L., Liu J., Jin B., Su B.F., and Zhou Z.S. Crop Classification based on Differential Characteristics of $ H/\alpha $ Scattering Parameters for Multitemporal Quad-and Dual-Polarization SAR Images. IEEE Transactions on Geoscience and Remote Sensing, vol. 56, no. 10, pp. 6111-6123, 2018.
|
8. |
Mittal A., Sarangi S., Ramanath S., Bhatt P.V., Sharma R., and Srinivasu P.IoT-Based Precision Monitoring of Horticultural Crops—A Case-Study on Cabbage and Capsicum. In 2018 IEEE Global Humanitarian Technology Conference (GHTC), IEEE, pp. 1-7, 2018.
|
9. |
Mohanty S.P., Hughes D.P., and Salathé M. using Deep Learning for Image-Based Plant Disease Detection. Frontiers in plant science, vol. 7, pp. 1419, 2016.
|
10. |
Vanitha V. Rice Disease Detection using Deep Learning. The International Journal of Recent Technology and Engineering (IJRTE), vol. 7, pp. 534-542, 2019.
|
11. |
Singh D., Jain N., Jain P., Kayal P., Kumawat S., and Batra N. PlantDoc: A Dataset for Visual Plant Disease Detection. In Proceedings of the 7th ACM India Joint International Conference on Data Science and Management of Data, pp. 249-253, 2020.
|
12. |
Arsenovic M., Karanovic M., Sladojevic S., Anderla A., and Stefanovic D. Solving Current Limitations of Deep Learning Based Approaches for Plant Disease Detection. Symmetry, vol. 11, no. 7, pp. 939, 2019.
|
13. |
Lu L., Wang X., Carneiro G., andYang, L. eds.eds. Deep learning and convolutional neural networks for medical imaging and clinical informatics, Berlin/Heidelberg, Germany: Springer International Publishing, pp. 6330, 2019.
|
14. |
Pujari P., Karim M.R., and Sewak M. Practical Convolutional Neural Networks. Birmingham, UK: Packt Publishing, 2018.
|
15. |
Dataset P. Dataset of diseased plant leaf images and corresponding labels, 2019.
|
16. |
Planet Natural, Plant Diseases,
|
17. |
University of Nebraska-Lincoln, CropWatch, .
|
18. |
HDF Group, Learning HDF 5 basics, .
|
19. |
.
|
20. |
Android Developers, Android NDK, .
|
21. |
Flutter, Developing packages & plugins, .
|