Enhancing practicality of deep learning for crop disease identification under field conditions: insights from model evaluation and crop-specific approaches.
Qi TianGang ZhaoChangqing YanLinjia YaoJunjie QuLing YinHao FengNing YaoQiang YuPublished in: Pest management science (2024)
Our findings underscore the importance of enriching data representation and volumes over employing new model architectures. Furthermore, the need for more field-specific images was highlighted. Ultimately, these insights contribute to the advancement of crop disease identification applications, facilitating their practical implementation in farmer's fields. © 2024 Society of Chemical Industry.