Journal of Agricultural Big Data ›› 2026, Vol. 8 ›› Issue (2): 258-265.doi: 10.19788/j.issn.2096-6369.100072

Previous Articles     Next Articles

Construction and Benchmark Evaluation of the Rehmannia Leaf Pest-induced Hole Image Dataset (RPHD)

XU LinNa(), HUANG Ting, ZHENG LiPing*(), FEI Xuan   

  1. School of Artificial Intelligence and Big Data, Henan University of Technology, Zhengzhou 450001, China
  • Received:2026-03-07 Accepted:2026-04-20 Online:2026-06-26 Published:2026-06-26
  • Contact: ZHENG LiPing

Abstract:

Rehmannia glutinosa is an important traditional Chinese medicinal herb. Its large-scale cultivation is often affected by various pests, leading to frequent leaf pest-induced holes that severely impact yield and quality. However, current deep learning-based Pest-induced Hole detection methods face challenges such as complex field environments, small target scales, and irregular morphological characteristics. To address these issues, this paper presents the first Rehmannia Leaf Pest-induced Hole Dataset (RPHD) specifically designed for complex field environments. The dataset comprises an initial version (298 images with 5,059 annotations) and a refined version (291 images with 2,678 high-quality annotations). Through a systematic image preprocessing pipeline, including content-aware cropping and resolution normalization (1024×1024), adaptive bilateral filtering for noise reduction, and illumination equalization, combined with meticulous manual annotation and multiple rounds of cross-validation quality control mechanisms, the annotation consistency and target discriminability of the dataset were significantly improved. Three mainstream object detection models—YOLOv10n, YOLOv11n, and YOLOv12n—were employed to evaluate the dataset, comparing the performance of the two versions across different models. Experimental results show that training on the refined dataset yields substantial performance improvements across all models:YOLOv10n: mAP@0.5 increased from 40.3% to 87.2%;YOLOv11n: mAP@0.5 increased from 48.9% to 92.1%;YOLO12n: mAP@0.5 increased from 51.2% to 93.0%. This dataset provides standardized, high-quality benchmark data for research on small-target pest and disease detection algorithms for Rehmannia and other crops, contributing to the practical and intelligent development of agricultural vision detection technologies.

Data summary:

Items Description
Dataset name Rehmannia Leaf Pest-induced Hole Image Dataset (RPHD)
Specific subject area Computer science; Agricultural science
Research topic Pest-induced hole detection, Image dataset, Object detection, Rehmannia glutinosa
Time range June 2024 - September 2024
Temporal resolution Not applicable
Geographical scope Core planting area of Wen County, Henan Province, China (112.95°E-113.15°E, 34.88°N-35.00°N)
Spatial resolution Not applicable
Data types and technical formats Raw field images (JPEG); Preprocessed images (JPEG, 1024×1024 pixels); Object detection annotation files (YOLO format.txt)
Dataset structure Raw version: 298 images, 5,059 annotations; Enhanced version: 291 images, 2,678 annotations.
Volume of dataset Approx. 848 MB
Key index in dataset Pest-induced hole bounding box coordinates (x_center, y_center, width, height), class ID = 0
Data accessibility DOI:10.57760/sciencedb.29865; https://www.scidb.cn/detail?dataSetId=8954e40ec0eb4f3fb7dad889e982547f
CSTR: 31253.11.sciencedb.29865; https://www.scidb.cn/s/RF7J3q
Financial support None

Key words: Rehmannia glutinosa, Pest-induced Hole detection, image dataset, data annotation, YOLO, agricultural artificial intelligence