Computer-vision-tracking-system

🔬 Research Contribution: Multi-Object Tracking for Precision Poultry Farming

Role: Research Assistant
Institution: University of Georgia
Project Title: Enhancing Multi-Object Tracking of Broiler Chickens using Deep Learning, Machine Learning, and Computer Vision


🧠 Overview

Contributed to the development of a robust, real-time, identity-preserving AI tracking system for broiler chickens in commercial poultry farms. The goal was to improve behavior analysis, tracking reliability, and animal welfare using modern deep learning and ML pipelines.


🚀 Technical Highlights

1. Object Detection & Optimization

  • Trained and benchmarked 10 YOLO variants
  • Best model: YOLOv11x
    • Precision: 0.968
    • Recall: 0.960
    • mAP@50: 0.986
    • mAP@50–95: 0.805
  • Applied L1 unstructured pruning for latency reduction
    • Inference Speed: Improved from 46.5 FPS → 60 FPS
    • Pruning Ratio: 0.09

2. Deep Feature Extraction & Re-Identification

Designed a hybrid deep feature extractor using:

  • Vision Transformer (ViT)
  • ResNet152
  • DenseNet201

Embedding Evaluation Metrics:

  • Cosine Similarity: 0.956 ± 0.032
  • Euclidean Distance: 0.020 ± 0.007

3. Kinematics-Aware Identity Classification

Developed classifiers using features like velocity, acceleration, and displacement. Benchmarked 15 ML models, including:

  • Logistic Regression, Random Forest, Extra Trees Classifier (Best)
  • Gradient Boosting, XGBoost, LightGBM, CatBoost, AdaBoost
  • K-Nearest Neighbors (KNN), Support Vector Machine (SVM)
  • Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA)
  • Decision Tree, Naive Bayes, Multilayer Perceptron (MLP)

Top Performer: Extra Trees Classifier

  • Accuracy: 0.917
  • Precision: 0.958
  • Recall: 0.920
  • F1 Score: 0.939

4. Multi-Object Tracking System

Evaluated and optimized 6 tracking algorithms:

  • DeepSORT, StrongSORT, SMILEtrack, OC-SORT, ByteTrack, Modified ByteTrack

Final Pipeline Metrics:

  • MOTA: 0.904 ± 0.073
  • MOTP: 0.953 ± 0.057
  • Tracking Speed: 30.1 ± 3.3 FPS
  • Continuous Duration: Up to 17.3 minutes

📈 Impact & Deployment

Tracked over 5,700 broiler chickens under diverse real-world conditions including:

  • Lighting variability
  • Occlusions
  • Region-specific zones (feeder, drinker, open floor)

Enabled:

  • Long-term identity preservation
  • Automated behavior monitoring
  • Precision livestock farming integrations

This project bridged Computer Vision, ML, and Precision Agriculture, delivering a high-accuracy, scalable pipeline to advance smart farming and animal welfare monitoring systems.

Visit original content creator repository
https://github.com/saiakshitha33/Computer-vision-tracking-system

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