Crop Flood Disaster Classification Dataset

#Image classification #machine learning training #deep learning #Crop monitoring #disaster assessment #artificial intelligence applications
  • 5000 records
  • 1.2G
  • JPG/PNG/JSON
  • CATL
  • MOBIUSI INCMOBIUSI INC
Updated:2026-04-17

AI Analysis & Value Prop

The current agricultural industry faces challenges of frequent flood disasters, making it difficult to quickly assess crop damage, affecting the stability of agricultural production and supply chains. Existing solutions largely rely on manual assessments which are inefficient and highly subjective, failing to meet the need for rapid response. This dataset aims to help AI models quickly assess damage by providing images of crops with varying levels of flooding, improving the accuracy and efficiency of post-disaster assessments. Data collection is performed using a combination of high-altitude drone photography and ground sampling under different weather conditions and geographic environments. All data undergo multiple rounds of annotation and consistency checks to ensure accuracy and reliability of the labels, and are ultimately stored and organized in JPG format to facilitate subsequent machine learning and data analysis.

Dataset Insights

Sample Examples

4405370e**.png|1499*2000|3.85 MB

3a92512e**.png|3045*2000|6.87 MB

d5500e67**.png|1604*2000|2.94 MB

7fb94efd**.png|2092*2000|3.96 MB

Technical Specifications

FieldTypeDescription
file_namestringFile name
qualitystringResolution
crop_typestringIdentify the type of crop in the image, such as rice, wheat, etc.
flood_severitystringDetermine the severity of flood impact based on the image, such as mild, moderate, and severe damage.
vegetation_healthstringAssess the health status of the crops through the image, such as normal, damaged, and dead.
lighting_conditionstringIdentify the lighting conditions of the image, such as sunny, cloudy, or overcast.

Compliance Statement

Authorization TypeProprietary - Commercial AI Training License (No Redistribution)
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

Frequently Asked Questions

What type of images are included in the Crop Flood Damage Classification Dataset?
The images in this dataset primarily consist of photographs of crops under varying degrees of flooding, showing the actual damage situations.
Which agricultural AI models can be trained using this dataset?
This dataset can be used to train and evaluate AI models for identifying and classifying the damage levels of crops under various flood conditions.
What agricultural problems can be solved using the Crop Flood Damage Classification Dataset?
With this dataset, agricultural researchers and producers can better assess the impact of flood disasters on crops, aiding in the implementation of more effective disaster management strategies.
What is the significance of the Crop Flood Damage Classification Dataset in the agricultural field?
This dataset is crucial in the agricultural field as it aids in developing precision agriculture techniques, enhancing crop resilience and yield post-disaster.
How can this dataset be used for agricultural disaster assessment?
Researchers can train AI models to analyze the damage extent of crops in images, leading to effective agricultural disaster assessment and management.

Can't find the data you need?

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

Get this Dataset

Verified for Enterprise Use

Cite this Work

@dataset{Mobiusi2025,
  title={Crop Flood Disaster Classification Dataset},
  author={MOBIUSI INC},
  year={2025},
  url={https://www.mobiusi.com/datasets/d117013d811b1a9a5eb55b6ba4834ea8?dataset_scene_id=5},
  urldate={2025-09-15},
  keywords={Crop classification dataset, flood disaster assessment, image classification, agricultural AI},
  version={1.0}
}

Using this in research? Please cite us.

placeholder
placeholder
placeholder
placeholder
placeholder
placeholder
placeholder

Popular Dataset Searches