Vehicle Driving Behavior Video Dataset
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Project Overview:
Objective
The primary goal of this project was to compile and annotate a comprehensive video dataset to analyze and understand vehicle driving behaviors. This dataset aims to provide invaluable insights into driving patterns, assist in developing advanced driver assistance systems (ADAS), and enhance autonomous vehicle algorithms.
Scope
The project involved collecting a wide range of driving videos, covering diverse scenarios like urban driving, highway driving, different weather conditions, and varied lighting situations. The focus was on capturing a realistic spectrum of driving behaviors including normal operations, aggressive maneuvers, and anomalous events.
Sources
- Real-World Traffic Footage: We amassed over 12,000 hours of high-definition video recordings from urban and rural traffic scenarios.
- Controlled Environments: An additional 5,000 hours of footage were captured in simulated settings, showcasing a range of driving behaviors under different controlled conditions.
- Collaborations with Transportation Authorities: Leveraging our partnerships, we integrated 3,000 hours of video data from traffic surveillance systems.
Data Collection Metrics
- Total Video Hours: 20,000
- Real-World Traffic Footage: 12,000 hours
- Controlled Environment Footage: 5,000 hours
- Surveillance System Contributions: 3,000 hours
Annotation Process
Stages
- Behavior Tagging: Each video was meticulously tagged, identifying key driving behaviors like sudden stops, aggressive turns, and adherence to traffic signals.
- Environmental Context: Videos were enriched with metadata, including weather conditions, time of day, and traffic density.
- Driver Response Analysis: We classified driver reactions in various scenarios, providing a deeper insight into driving patterns.
Annotation Metrics
- Videos with Behavior Annotations: 20,000 hours
- Contextual Metadata Added: 20,000 hours
- Driver Responses Classified: 20,000 hours
Quality Assurance
Stages
Model Performance Monitoring: We continuously assess the effectiveness of machine learning models trained with our dataset, ensuring high accuracy and relevance.
Privacy Compliance: Our dataset is curated with strict adherence to privacy standards, ensuring all footage is ethically sourced and anonymized.
Feedback Integration: We engage with automotive experts and traffic analysts for feedback, keeping our dataset aligned with industry needs.
QA Metrics
- Model Precision on Evaluated Data: 97%
- Analysis Speed: 30 ms per frame
- Accuracy in Behavior Detection: 95%
Conclusion
The “Vehicle Driving Behavior Video Dataset” project represents a significant stride in understanding and predicting driver behaviors. By meticulously collecting and annotating a vast array of driving scenarios, this dataset lays the foundation for advancements in driver safety, ADAS development, and autonomous vehicle technologies. This effort underscores our commitment to providing high-quality, diverse datasets for cutting-edge machine learning applications in the automotive industry.
Quality Data Creation
Guaranteed TAT
ISO 9001:2015, ISO/IEC 27001:2013 Certified
HIPAA Compliance
GDPR Compliance
Compliance and Security
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