Deep Migration Learning-based Recognition of Diseases and Insect Pests in Yunnan Tea under Complex Environments
Zhaowen Li,
Jihong Sun,
Yingming Shen
et al.
Abstract:Background
The occurrence, development, and outbreak of tea diseases and pests pose a significant challenge to the quality and yield of tea, necessitating prompt identification and control measures. Given the vast array of tea diseases and pests, coupled with the intricacies of the tea planting environment, accurate and rapid diagnosis remains elusive. In addressing this issue, the present study investigates the utilization of transfer learning convolution neural networks for the identification of tea disease… Show more
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