Deep Learning for Vehicle Tracking and Wheel Detection

Deep learning-based vehicle tracking and segmentation using SiamFC, DeepLabV3+, and Mask R-CNN for speed analysis.
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Updated 20 Dec 2024

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The Vehicle Speed Analysis System is designed to automatically analyze the speed of vehicles in video footage. The project includes two main modules:
  1. Module 1 - Object Tracking:This module uses Siamese Fully Convolutional Networks (SiamFC) to track a target vehicle across frames. The system is enhanced with a Kalman filter to improve tracking accuracy under varying conditions such as occlusions, low resolution, and shape changes. The implementation uses MATLAB's Deep Learning Toolbox to integrate pre-trained models for efficient tracking.
  2. Module 2 - Instance Segmentation:This module focuses on precise segmentation of vehicle parts using DeepLabV3+ for semantic segmentation and Mask R-CNN for instance segmentation. The methodology is tailored to overcome challenges like scale variations and low resolution. A custom dataset, annotated for segmentation tasks, is used for model training and validation.
Key project highlights include:
  • Deployment of deep learning models with MATLAB for tracking and segmentation.
  • Comparative analysis of DeepLabV3+ and Mask R-CNN performance.
  • Pretrained models for Module 2 can be downloaded from the following links:
This system demonstrates the potential of MATLAB's deep learning frameworks to solve complex computer vision tasks effectively.

Cite As

Choi Youngsoo (2025). Deep Learning for Vehicle Tracking and Wheel Detection (https://www.mathworks.com/matlabcentral/fileexchange/176278-deep-learning-for-vehicle-tracking-and-wheel-detection), MATLAB Central File Exchange. Retrieved .

https://www.matlabexpo.com/kr/2023/proceedings.html

MATLAB Release Compatibility
Created with R2024b
Compatible with R2022a to R2024b
Platform Compatibility
Windows macOS Linux

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Version Published Release Notes
1.1.2

Modifying image files

1.1.1

Modifying Mask-RCNN dataset

1.0.1

Image update

1.0.0