Existing tomato datasets often focus on short-term experiments or lack integrated environmental and agronomic data. We present Horti-M3-Tomato, a comprehensive three-year dataset collected in Northeast China’s greenhouse, including high-resolution RGB images, environmental sensor data (recorded every 30 minutes), soil conditions, and detailed agronomic records such as yield data and management practices. Spanning three growing seasons (2023–2025), the dataset integrates temporal imaging, environmental monitoring, soil data, and manual phenotypic and yield records. Horti-M3-Tomato supports research on growth dynamics, genotype-environment interactions, and provides a benchmark for AI-based phenotyping and precision horticulture. The dataset is openly available for further research in controlled-environment agriculture.
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Yu Gong
Yifei He
X Zhang
Scientific Data
Harbin Institute of Technology
Heilongjiang Institute of Technology
Heilongjiang Provincial Academy of Agricultural Sciences
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Gong et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69bf86ecf665edcd009e9072 — DOI: https://doi.org/10.1038/s41597-026-07074-w
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