compaTAI-CDMX-Alpha / README.md
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metadata
license: cc-by-nc-4.0
language:
  - en
  - es
pretty_name: compatai-CDMX-Alpha
size_categories:
  - 100M<n<1B
task_categories:
  - video-classification
  - object-detection
  - image-segmentation
  - robotics
tags:
  - mexico
  - cdmx
  - latin-america
  - autonomous-driving
  - traffic-analysis
  - smart-cities
  - edge-cases
  - jsonl
  - label-studio
  - real-world-data
  - chaos-detection
  - behavioral-analysis
  - pedestrian-safety

πŸš€ compaTAI: Mexico City Chaos Dataset (Video Alpha Sample)"

Training AI to survive where the rules are suggestions.

"compaTAI presents a high-entropy Video Tracking Dataset captured in the chaotic heart of Mexico City (CDMX). While standard datasets (Waymo, nuScenes) are built on predictable environments, compaTAI focuses on "The Chaos Edge Case": the informal and non-linear traffic behaviors unique to Latin American megacities.

🌟 Why Video Tracking?

Unlike static image datasets, our video sequence provides temporal consistency. This allows models to train for Multi-Object Tracking (MOT) and Behavior Prediction, essential for navigating environments where lane markings don't exist and movement is erratic.

πŸ“Š Dataset SpecificationsTotal Duration: 52.06 Seconds.

  • Total Frames: 1,562 (at 30 FPS).
  • Resolution: High Definition (Processed for Fast-Start Streaming).
  • Annotation Format: Label Studio JSONL (Temporal Bounding Box Sequences).
  • Location 1: Mexico City (Critical Junctions).
  • Location 2: State of Mexico (Critical Junctions)
  • Type: 2D Video Rectangle Tracking with Interpolated Keyframes.

🏷️ The "Chaos" Taxonomy

Our labels capture the specific "Mexican Edge Cases" that standard sensors often misinterpret:

Label Description Why it matters
Pedestrian_Irregular Pedestrians crossing mid-avenue or between cars Predicts non-linear human trajectory.
Street_Vendor Mobile vendors navigating active traffic lanes. Unique obstacle detection for informal economies.
Infrastructure_Deficit Missing signals, potholes, or zero lane markings. Trains defensive driving and path planning.
Moto_Filtering Motorcycles weaving between lanes at high speed. High-frequency proximity detection.
Microbus_Stop Public transport stopping in the middle of the road. Predicts sudden traffic flow interruptions.

πŸ› οΈ Data Structure

The .jsonl file contains the temporal sequence of each object. Each annotation includes a sequence array tracking:frame: The exact frame number.x, y, width, height: Normalized coordinates (0-100) for resolution-independent training.time: Exact timestamp within the 52-second clip.

πŸš€ How to AccessYou can download the raw video and the JSONL metadata directly from this repository to start training your trajectory prediction models.

Python# Coming soon: compaTAI utility script to visualize trackingfrom datasets import load_dataset dataset = load_dataset("manuelvarale/compaTAI-CDMX-Chaos-Alpha")

πŸ’° Commercial Version & Custom ServicesThis repository is a technical sample.

compaTAI offers specialized data for enterprise-grade autonomous systems:Full Video Datasets: 100+ hours of labeled CDMX traffic footage. Specific Edge Cases: Custom recordings of "Rainy Nights" or "Peak Hour at Indios Verdes". Custom Labeling: We use the compaTAI pipeline to label your raw data with our specialized taxonomy. Enterprise Licensing & Custom Data Requests: [manuel.vargas@compatai.mx]

πŸ”— Visit our Hub: compatai.mx