Home/Agriculture/Cabbage Leaf Integrity Analysis Dataset

Cabbage Leaf Integrity Analysis Dataset

V1.0
Latest Update:
2025-10-14
Samples:
5000 records
File Size:
1.5G
Format:
JPG/PNG/JSON
Data Domain:
Image
Holder:
MOBIUSI INCMOBIUSI INC
Industry Scope:
crop health monitoring | precision agriculture | pest detection
Applications:
target detection | image classification

Brief Introduction

Currently, the agricultural sector faces challenges such as untimely crop health monitoring and inaccurate pest identification. Traditional manual detection methods are inefficient and prone to errors. Existing solutions, like rule-based detection systems, often fail to adapt to complex field environments, resulting in frequent missed or incorrect detections. This dataset aims to assist researchers and developers in building more accurate target detection models by providing high-quality images of cabbage leaves, enabling automated crop health monitoring and pest detection. The dataset is constructed using high-resolution cameras in diverse field environments and annotated with the expertise of professional agricultural personnel, ensuring data reliability and effectiveness. We have implemented strict quality control measures, including consistency checks and multiple rounds of review, to ensure the accuracy of information in each image. The data is stored in JPG format, organized in a directory structure for easy access and processing.

Sample Examples

ImageFile NameResolutionLeaf IntegrityLeaf Damage TypeLeaf ColorPest Presence
9b9a4ffeba3fa36a89065be32515b650.jpg8368*5584partially damagedinsect damagegreenyes
14f8536044a5b412d60b0a62fa86aba9.jpg4196*5067IntactNo obvious damageDark greenNo pests detected
bad344e7a70b7eabf7f1ed8844f25869.jpg3840*2560Partially DamagedPest DamageGreenYes

Data Structure

FieldTypeDescription
file_namestringFile name
qualitystringResolution
leaf_integritystringDescribes the integrity of the cabbage leaf, such as intact, partially damaged, or severely damaged.
leaf_damage_typestringIdentifies the type of damage to the leaf, such as pest damage, disease, or mechanical injury.
leaf_colorstringRecords the color of the leaf, which may reflect the health status of the leaf.
pest_presencebooleanIndicates whether pest presence has been detected on the leaf.

Compliance Statement

ItemContent
Authorization TypeCC-BY-NC-SA 4.0 (Attribution–NonCommercial–ShareAlike)
Commercial UseRequires exclusive subscription or authorization contract (monthly or per-invocation charging)
Privacy and AnonymizationNo PII, no real company names, simulated scenarios follow industry standards
Compliance SystemCompliant with China’s Data Security Law / EU GDPR / supports enterprise data access logs

Can't find the data you need?

Post a request and let data providers reach out to you.