Published October 27, 2025 | Version v1
Dataset Open

Deep-Plant-Disease Dataset Is All You Need for Plant Disease Identification

  • 1. ROR icon Swinburne University of Technology Sarawak Campus
  • 1. ROR icon Swinburne University of Technology Sarawak Campus
  • 2. EDMO icon National Institute for Research in Computer and Control Sciences
  • 3. ROR icon Centre de Coopération Internationale en Recherche Agronomique pour le Développement

Description

Deep learning models have emerged as a promising alternative to conventional approaches for plant disease identification, a critical challenge in agricultural production. However, the existing plant disease datasets are insufficient to address the complexities of real-world agricultural scenarios, such as multi crop disease, unseen, few-shot, and domain shift adaptation. Additionally, the lack of standardized evaluation protocols and benchmark datasets hinders the fair evaluation of models against these challenges. To bridge this gap, we introduce Deep-Plant-Disease, the largest and most diverse dataset with novel text data designed to enhance model generalization in multi crop disease identification. We revisit and reformulate the task by establishing a standardized evaluation framework that supports consistent benchmarking and guides future research. Through experiments, we further validate the robustness and adaptability of models trained on our dataset, highlighting their effective transferability to real-world agricultural challenges.

Files

A5_DPD_dataset_images.zip

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Additional details

Funding

Ministry of Higher Education
Fundamental Research Grant Scheme (FRGS) MoHE Grant FRGS / 1 / 2021 / ICT02 / SWIN / 03 / 2
Swinburne University of Technology Sarawak Campus
Swinburne Sarawak Research Supervision Grants (SSRSG) SUTS / SoR / RMC / SSRGS / 2023
Agence Nationale de la Recherche
Pl@ntAgroEco project (France 2030 programme) ANR-22-PEAE-0009

Dates

Available
2025-10-27
This dataset is published in ACM International Conference on Multimedia 2025