Skip to main content

VehicleDetectionTracker 🚗: Effortlessly track and detect vehicles in images and videos with advanced algorithms. 🚙🚕 Boost your computer vision project!" 🔍📹

Project description

🚗 VehicleDetectionTracker: Real-time vehicle detection and tracking powered by YOLO. 🚙🚕

Effortlessly track and detect vehicles in images and videos using state-of-the-art YOLO object detection and tracking, powered by Ultralytics. Boost your computer vision project with the VehicleDetectionTracker, a versatile Python package that simplifies vehicle tracking and detection in a variety of applications. 🚙🚕

  • 👀 Detect vehicles in real-time or from pre-recorded videos.
  • 📍 Accurately track vehicles' positions.
  • 🎨 Brand and color classification. The classifiers are based on MobileNet v3 (Alibaba MNN backend).
  • 🚀 Empower traffic analysis, automated surveillance, and more.
  • 🔍 Harness the capabilities of YOLO for precise object detection.

Whether you're working on traffic management, video analysis, or machine learning projects, the VehicleDetectionTracker provides the tools you need to enhance your results. Explore detailed documentation and examples on the repository, and get started with vehicle tracking in no time! 📚🚗

GitHub PyPI License

🙏🙏 I would like to extend my gratitude to the team at Spectrico for their car make and model recognition module. Thanks to their technology, my project has significantly improved in accuracy and efficiency in vehicle identification. You can find more information about their car make and model recognition classifier here.

Features 🌟

  • Efficient vehicle detection and tracking in images and videos.
  • Accurate vehicle speed estimation in kilometers per hour (KM/H).
  • Precise determination of the direction of each detected vehicle.
  • Vehicle color estimation.
  • Easy integration into your computer vision projects.

Installation 🚀

You can easily install VehicleDetectionTracker using pip:

pip install VehicleDetectionTracker

How Vehicle Detection Works

Vehicle detection is a crucial component of many traffic management and surveillance systems. In this section, we'll explain how vehicle detection works using a simplified description.

1. Video Input

  • The process begins with a video input, typically captured from cameras placed in various locations, such as roads, highways, or parking lots.

2. Frame Extraction

  • The video is composed of a sequence of frames (images). Vehicle detection works on each frame individually. These frames are extracted from the video stream.

3. YOLO Model

  • A specialized model, often based on YOLO (You Only Look Once) or similar deep learning frameworks, is used for vehicle detection. This model is pre-trained to recognize vehicles.

4. Object Detection

  • Each frame is processed by the YOLO model, which analyzes the image and identifies objects present. In this case, it's looking for vehicles. The model detects vehicles by drawing bounding boxes around them and assigning a confidence score to each detection.

5. Tracking

  • To keep track of vehicles over time, the system uses a tracking mechanism. This ensures that the same vehicle is consistently recognized as it moves through the frames. Tracking may involve assigning unique IDs to vehicles and following their movements.

6. Attribute Calculation

  • The system calculates several attributes for each detected vehicle:
    • Speed: By analyzing the position of the vehicle in successive frames and measuring the time difference, the system calculates the vehicle's speed.
    • Direction: It determines the vehicle's direction of movement by comparing its position in different frames. This can be done by calculating the angle of motion.
    • Reliability: The reliability of the calculated speed and direction is assessed based on the number of samples used. More samples often lead to higher reliability.

7. Information Collection

  • Information about each detected vehicle, such as its type (car, truck, etc.), coordinates (position in the frame), speed, direction, and reliability, is collected and stored.

8. Annotated Frames

  • Annotated frames are generated by adding visual overlays to the original frames. These overlays include tracking lines and bounding boxes around detected vehicles.

9. Display or Analysis

  • The annotated frames can be displayed for real-time monitoring, analysis, or traffic management. They provide a visual representation of vehicle movements, and the collected data can be used for various purposes, including traffic flow analysis, incident detection, and more.

10. Data Output

  • The processed data, including vehicle attributes and annotated frames, can be stored, analyzed, or further processed according to the requirements of the application or system.

In summary, vehicle detection involves using a deep learning model to identify vehicles in video frames, tracking their movements, calculating attributes like speed and direction, and providing this information for display or analysis. This technology is a key component in traffic management, surveillance, and various other applications where vehicle monitoring is essential.

Explanation of Detection Results JSON.

0: 384x640 1 car, 171.0ms
Speed: 5.0ms preprocess, 171.0ms inference, 2.0ms postprocess per image at shape (1, 3, 384, 640)

{
  "number_of_vehicles_detected": 1,  // Number of vehicles detected in this frame
  "detected_vehicles": [  // List of information about detected vehicles
    {
      "vehicle_id": 5,  // Unique identifier for the detected vehicle
      "vehicle_type": "car",  // Type of the detected vehicle (e.g., "car", "truck")
      "detection_confidence": 0.4797525107860565,  // Confidence score of the detection, indicating how accurate the model believes the detection is
      "color_info": '[{"color": "Black", "prob": "0.2470433"}, {"color": "White", "prob": "0.21236196"}, {"color": "Blue", "prob": "0.15445676"}]',  // Detected vehicle color information with respective probabilities
      "model_info": '[{"make": "Jeep", "model": "Wrangler", "prob": "0.022544071"}, {"make": "Ford", "model": "Mustang", "prob": "0.014573687"}, {"make": "Honda", "model": "Civic", "prob": "0.010537574"}]',  // Detected vehicle make and model information with respective probabilities
      "speed_info": {  // Information about the vehicle's speed
        "kph": 68.1191847125589,  // Calculated speed in kilometers per hour (kph)
        "reliability": 1.0,  // Reliability of the speed measurement
        "direction_label": "Top Left",  // Label indicating the direction of the vehicle (e.g., "Top Left" means moving towards the top left of the frame)
        "direction": -2.2559461480857093  // Direction of movement in radians
      },
      "vehicle_coordinates": {  // Coordinates and dimensions of the detected vehicle in the frame
        "x": 123.45,  // Horizontal position (x-axis) of the vehicle in the frame
        "y": 678.90,  // Vertical position (y-axis) of the vehicle in the frame
        "width": 50.0,  // Width of the bounding box around the vehicle
        "height": 30.0  // Height of the bounding box around the vehicle
      },
      "vehicle_frame_base64": "data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAA...",  // Base64 encoded image of the video frame where the vehicle was detected
      "vehicle_frame_timestamp": "2024-08-10T15:30:45.123456Z"  // Timestamp indicating the exact moment when the video frame was captured
    }
  ]
}

Usage 📷

You can quickly get started with VehicleDetectionTracker to detect and track vehicles in images and videos. Below are two usage examples, each tailored to different scenarios:

Example 1: Real-Time Video Stream (OpenCV)

This example demonstrates how to use VehicleDetectionTracker to process a real-time video stream using OpenCV. Simply provide the URL of the video stream to get started:

from VehicleDetectionTracker.VehicleDetectionTracker import VehicleDetectionTracker

video_path = "[[YOUR_STREAMING_SOURCE]]"
vehicle_detection = VehicleDetectionTracker()
result_callback = lambda result: print({
    "number_of_vehicles_detected": result["number_of_vehicles_detected"],
    "detected_vehicles": [
        {
            "vehicle_id": vehicle["vehicle_id"],
            "vehicle_type": vehicle["vehicle_type"],
            "detection_confidence": vehicle["detection_confidence"],
            "color_info": vehicle["color_info"],
            "model_info": vehicle["model_info"],
            "speed_info": vehicle["speed_info"]
        }
        for vehicle in result['detected_vehicles']
    ]
})
vehicle_detection.process_video(video_path, result_callback)

Example 2: Kafka Topic Processing

For more advanced use cases, VehicleDetectionTracker can also be integrated with Apache Kafka for processing video frame by frame:

from confluent_kafka import Consumer, KafkaError
from VehicleDetectionTracker.VehicleDetectionTracker import VehicleDetectionTracker
import json

conf = {
    'bootstrap.servers': '192.168.1.39:9092"',  # Configure this to your Kafka broker's address.
    'group.id': 'my-group-1',
    'auto.offset.reset': 'earliest'
}

topic = 'iot-camera-frames'
consumer = Consumer(conf)
consumer.subscribe([topic])

vehicleDetection = VehicleDetectionTracker()

while True:
    msg = consumer.poll(1.0)

    if msg is None:
        continue
    if msg.error():
        if msg.error().code() == KafkaError._PARTITION_EOF:
            print('End of partition, message read: {} [{}] at offset {}'.format(
                msg.key(), msg.partition(), msg.offset()))
        else:
            print('Kafka error: {}'.format(msg.error()))
    else:
        # Process the message (a frame) received from Kafka
        payload = json.loads(msg.value())
        
        mac_address = payload.get('mac_address', '')
        frame_timestamp = payload.get('frame_timestamp', '')
        frame_data = payload.get('frame_data', '')

        # Process the frame with the tracker
        results = vehicleDetection.process_frame_base64(frame_data, frame_timestamp)
    
        # Optionally, you can access the MAC address and timestamp for further processing
        print(f"MAC Address: {mac_address}")
        print(f"Timestamp: {frame_timestamp}")
        result_callback = lambda result: print({
            "number_of_vehicles_detected": result["number_of_vehicles_detected"],
            "detected_vehicles": [
                {
                    "vehicle_id": vehicle["vehicle_id"],
                    "vehicle_type": vehicle["vehicle_type"],
                    "detection_confidence": vehicle["detection_confidence"],
                    "color_info": vehicle["color_info"],
                    "model_info": vehicle["model_info"],
                    "speed_info": vehicle["speed_info"]
                }
                for vehicle in result['detected_vehicles']
            ]
        })
        result_callback(results)

consumer.close()

These examples showcase the flexibility of VehicleDetectionTracker and its ability to adapt to various real-world scenarios. Explore the repository's documentation and examples for more in-depth guidance.

Screenshots 📷

Here are some screenshots that demonstrate the functionality of VehicleDetectionTracker:

Screenshot 1 Screenshot 2
Screenshot 1 Screenshot 2
Screenshot 3 Screenshot 4
Screenshot 3 Screenshot 4
Screenshot 5 Screenshot 6
Screenshot 5 Screenshot 6
Screenshot 7 Screenshot 8
Screenshot 7 Screenshot 6
Screenshot 9 Screenshot 10
Screenshot 7 Screenshot 6
Screenshot 11 Screenshot 12
Screenshot 7 Screenshot 6

License 📜

This project is licensed under the MIT License - see the LICENSE file for details.

Acknowledgments 🙏

  • This package is powered by ultralytics YOLO for object detection.
  • Special thanks to the open-source community for their contributions.
  • I would like to extend my gratitude to the team at Spectrico for their car make and model recognition module. Thanks to their technology, my project has significantly improved in accuracy and efficiency in vehicle identification. You can find more information about their car make and model recognition classifier here.

Contribution

Contributions to VehicleDetectionTracker are highly encouraged! If you're interested in adding new features, resolving bugs, or enhancing the project's functionality, please feel free to submit pull requests.

Get in Touch 📬

VehicleDetectionTracker is developed and maintained by Sergio Sánchez Sánchez (Dream Software). Special thanks to the open-source community and the contributors who have made this project possible. If you have any questions, feedback, or suggestions, feel free to reach out at dreamsoftware92@gmail.com.

Happy Tracking! 🚀👁️

GitHub PyPI

Visitors Count

Please Share & Star the repository to keep me motivated.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

vehicledetectiontracker-0.0.32.tar.gz (34.8 MB view details)

Uploaded Source

Built Distribution

VehicleDetectionTracker-0.0.32-py3-none-any.whl (34.8 MB view details)

Uploaded Python 3

File details

Details for the file vehicledetectiontracker-0.0.32.tar.gz.

File metadata

File hashes

Hashes for vehicledetectiontracker-0.0.32.tar.gz
Algorithm Hash digest
SHA256 9fcc6db56375bdadf1e1850260b885ff4478b2ebcf9a19b9039c03b632a2ca37
MD5 0c1783dcbe49b319f68e5e6f32a2dce8
BLAKE2b-256 f84faa2cdb195ac2cb96d8bfcf24236801dea2ab71108bd747bb9039f825736f

See more details on using hashes here.

File details

Details for the file VehicleDetectionTracker-0.0.32-py3-none-any.whl.

File metadata

File hashes

Hashes for VehicleDetectionTracker-0.0.32-py3-none-any.whl
Algorithm Hash digest
SHA256 5e27ca07e3fd8710e7a6437b1e4dec77f35e21e8054ea7334d4f62c30b326be7
MD5 a7658dbc597c30b730cf685035fc6cc9
BLAKE2b-256 ff76d3a431fe2db4d13b7832f6a1d33e0b0b1e8dc3dcb5d8a5e5ea7557631e0d

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page