Deep Learning for Vehicle Tracking and Wheel Detection

Versione 1.1.2 (81,1 MB) da 영수
Deep learning-based vehicle tracking and segmentation using SiamFC, DeepLabV3+, and Mask R-CNN for speed analysis.
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Aggiornato 20 dic 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.

Cita come

영수 (2026). Deep Learning for Vehicle Tracking and Wheel Detection (https://it.mathworks.com/matlabcentral/fileexchange/176278-deep-learning-for-vehicle-tracking-and-wheel-detection), MATLAB Central File Exchange. Recuperato .

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

Compatibilità della release di MATLAB
Creato con R2024b
Compatibile con R2022a fino a R2024b
Compatibilità della piattaforma
Windows macOS Linux
Versione Pubblicato Note della release
1.1.2

Modifying image files

1.1.1

Modifying Mask-RCNN dataset

1.0.1

Image update

1.0.0