Garage Vehicle Type Image Recognition Dataset

#object detection #image classification #computer vision #smart parking #vehicle recognition #traffic management
  • 500 records
  • 1.3G
  • JPG
  • CATL
  • MOBIUSI INCMOBIUSI INC
Updated:2026-06-21

AI Analysis & Value Prop

With the rapid development of urban traffic and the increasing demand for daily management of parking lots, quickly and accurately identifying vehicle types in garages has become a major challenge. Existing solutions usually rely on traditional sensors or RFID technology, but these technologies are susceptible to environmental influences and have limitations in identifying new and unregistered vehicles. This dataset aims to solve the technical problems of vehicle type recognition through high-quality vehicle image data, improving recognition accuracy and speed. The data is collected in different types of garage environments, including above-ground garages, underground garages, and multi-story garages. High-resolution cameras are used to ensure data consistency under different lighting conditions. Strict quality control is implemented, with multiple rounds of annotation and expert review to ensure high annotation accuracy. The annotation team is composed of professionals with rich experience in traffic management, with a team size of 20 people. Data preprocessing includes image denoising, brightness adjustment, and normalization, and is stored in a structured JPG format for easy access and use.

Dataset Insights

Sample Examples

459a1eff**.jpg|4096*3072|705.38 KB

Technical Specifications

FieldTypeDescription
file_namestringFile name
qualitystringResolution
vehicle_typestringThis field represents the type of vehicle in the image, such as sedan, SUV, truck, etc.
colorstringThis field indicates the color of the vehicle in the image.
makestringThis field specifies the make of the vehicle in the image.
modelstringThis field specifies the model of the vehicle in the image.
license_plate_visibilitybooleanThis field indicates whether the license plate is visible in the image.
vehicle_orientationstringThis field describes the orientation of the vehicle in the image, such as front, rear, side, etc.

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 types of vehicles are included in the Garage Vehicle Type Image Recognition Dataset?
The dataset includes various common vehicle types such as sedans, SUVs, and trucks.
How can the Garage Vehicle Type Image Recognition Dataset improve vehicle detection accuracy?
By training machine learning models, this dataset can help enhance the accuracy of vehicle detection and classification algorithms.
Which industry field is the Garage Vehicle Type Image Recognition Dataset targeted at?
The dataset falls under the general everyday field, suitable for various applications requiring vehicle recognition technology.
What is the source of images in the Garage Vehicle Type Image Recognition Dataset?
The images typically come from surveillance cameras in parking lots and garages.
In which real-world scenarios can the Garage Vehicle Type Image Recognition Dataset be applied?
The dataset can be applied in traffic monitoring, parking management systems, and autonomous driving research.

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Cite this Work

@dataset{Mobiusi2026,
  title={Garage Vehicle Type Image Recognition Dataset},
  author={MOBIUSI INC},
  year={2026},
  url={https://www.mobiusi.com/datasets/f0134dc4d55f3ff1a17f9431b3a242fe?cate=2},
  urldate={2026-02-04},
  keywords={vehicle recognition dataset, smart parking data, traffic management image set},
  version={1.0}
}

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