FAO AGRIS - International System for Agricultural Science and Technology

Prediction of the chlorophyll content in pomegranate leaves based on digital image processing technology and stacked sparse autoencoder

Peng, Yingshu | Wang, Yi


Bibliographic information
Volume 22 Issue 1 Pagination 1720 - 1732 ISSN 1094-2912
Publisher
Taylor & Francis
Other Subjects
Chlorophyll content; Digital images; Pomegranate leaves; Stacked sparse autoencoder; Processing technology; Deep learning
Language
English
Note
This work was supported by the Doctorate Fellowship Foundation of Nanjing Forestry University (163010550), and the Priority Academic Program Development of Jiangsu High Education Institutions (PAPD).
Type
Journal Article; Text

2024-02-29
2026-02-03
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