Deep learning in cropland field identification: A review

•A bibliometric and content analysis was conducted to comprehensively review and analyze deep learning research in cropland field identification.•The paper discusses the challenges of deep learning-based research on cropland field identification, providing readers with insights and directions for fu...

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Veröffentlicht in:Computers and electronics in agriculture 2024-07, Vol.222, p.109042, Article 109042
Hauptverfasser: Xu, Fan, Yao, Xiaochuang, Zhang, Kangxin, Yang, Hao, Feng, Quanlong, Li, Ying, Yan, Shuai, Gao, Bingbo, Li, Shaoshuai, Yang, Jianyu, Zhang, Chao, Lv, Yahui, Zhu, Dehai, Ye, Sijing
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Sprache:eng
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Zusammenfassung:•A bibliometric and content analysis was conducted to comprehensively review and analyze deep learning research in cropland field identification.•The paper discusses the challenges of deep learning-based research on cropland field identification, providing readers with insights and directions for future research in the field•This study fills the gap by providing a systematically summarized review of this research area. The cropland field (CF) is the basic unit of agricultural production and a key element of precision agriculture. High-precision delineations of CF boundaries provide a reliable data foundation for field labor and mechanized operations. In recent years, with the dual advancements in remote sensing satellite technology and artificial intelligence, enabling the extraction of CF information on a wide scale and with high precision, research on CF identification based on deep learning (DL) has emerged as a highly esteemed direction in this field. To comprehend the developmental trends within this field, this study employs bibliometric and content analysis methods to comprehensively review and analyze DL research in the field of CF identification from various perspectives. Initially, 93 relevant literature pieces were retrieved and screened from two databases, the Web of Science Core Collection and the Chinese Science Citation Database, for review. The previous studies underwent quantitative analysis using bibliometric software across five dimensions: publication year, literature type and publication journal, country, author, and keyword. Subsequently, we analyze the current status and trends of employing DL in the field of CF identification from four perspectives: remote sensing data sources, DL models, types of CF extraction results, and sample datasets. Simultaneously, we combed through current publicly available sample datasets and data products that can be referenced to produce sample datasets for CFs. Finally, the challenges and future research focus of DL-based CF identification research are discussed. This paper provides both qualitative and quantitative analyses of research on DL-based CF identification, elucidating the current status, development trends, challenges, and future research focuses.
ISSN:0168-1699
1872-7107
DOI:10.1016/j.compag.2024.109042