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Automated multi-source YOLO detection and training pipeline for research.

Project description

YOLO4r

You Only Look Once For Research

An open-source, automated animal-behavior detection pipeline.

Overview

YOLO4r (v0.1.10) is a research-oriented, Ultralytics-based pipeline designed to make custom deep-learning model training & behavioral detection accessible to field & laboratory researchers.

YOLO4r supports:

  • Choice in a variety of YOLO models, including YOLOv8, YOLO11, and YOLO12.
  • Option to use transfer-learning weights or train a model from scratch only using model architecture backbone (.yaml).
  • Automatically processes Label-Studio projects into the data folder.
  • Multi-source real-time inference (video & live camera feeds).
  • Structured logging of detections, interactions, & per-frame aggregate statistics.
  • Automatic metadata extraction for precise timestamping for video sources.
  • Full configurability & modular design for research reproducibility.

This project remains open-source & under active development as part of an undergraduate research initiative. Contributions & feedback are always welcome!

Features

Model Training

  • Supports transfer learning, training from scratch, or incremental updating of an existing model.
  • Automatically exports training metrics to:
    • Weights & Biases (W&B)
    • quick-summary.txt (local lightweight summary)
  • Supports aggressive data augmentation & auto-detection of new data for retraining.

Detection Pipeline

  • Multi-threaded inference across multiple sources (camera feeds & videos).
  • Metadata-aware timestamping for accurate frame-aligned measurements.
  • Centralized message handling using Printer for all info, warnings, errors, & save confirmations.
  • Robust exception handling for model initialization, frame errors, & I/O failures.

Classes & Configuration

  • YOLO4r uses user-defined class configurations:
    • FOCUS_CLASSES: primary subjects (e.g., animal species)
    • CONTEXT_CLASSES: contextual or environmental elements (e.g., feeders, water trays, etc)
  • Class lists are stored in & managed through classes_config.yaml per model within the config folder, allowing for easy modification without editing code.

Example model trained on 7 classes:

  • M (Male Passer domesticus), F (Female Passer domesticus), Feeder, Main_Perch, Wooden_Perch, Sky_Perch, Nesting_Box

Measurement System

  • Data collection centralized in single helper utility that handles:
    • Frame-level counts
    • Interval-level aggregation
    • Session summaries
    • Interaction tracking (focus vs. context classes if defined)
  • Exports structured .csv summaries:
    • counts.csv, average_counts.csv
    • interval_results.csv, session_summary.csv
    • interactions.csv Supports automatic calculation of ratios (e.g., M:F) & normalized detection rates.

Directory and Output Structure

Integrates a clean, timestamped log structure for both camera feeds & videos:

Camera sources:

/YOLO4r/logs/(model_name)/measurements/camera-feed/(source_name)/(system_timestamp)/measurements/
├── recordings/
│   └── usb0.mp4
└── scores/
    ├── source_metadata.json
    ├── frame-data/
    │   ├── interval_results.csv
    │   └── session_summary.csv
    ├── counts/
    │   ├── counts.csv
    │   └── average_counts.csv
    └── interactions/
        └── interactions.csv

Video sources:

/YOLO4r/logs/(model_name)/measurements/video-in/(source_name)/(video_timestamp)/measurements/
├── recordings/
│   └── video.mp4
└── scores/
    ├── source_metadata.json
    ├── frame-data/
    │   ├── interval_results.csv
    │   └── session_summary.csv
    ├── counts/
    │   ├── counts.csv
    │   └── average_counts.csv
    └── interactions/
        └── interactions.csv
  • Folder names are automatically sanitized to avoid filesystem errors.
  • Each source has its own isolated measurement subdirectory.

Installation

1. Install MiniConda or Conda:

https://www.anaconda.com/docs/getting-started/miniconda/main

https://www.anaconda.com/download

2. Create & activate environment using:

conda create -n YOLO4r python=3.10

conda activate YOLO4r

3. Ensure Python wheels & installation tools are updated:

python -m pip install --upgrade pip setuptools wheel

4. Use pip to install the package:

pip install yolo4r

Prerequisites

  • Must use Python 3.10 or older.
  • Keep in mind, training & detection require entirely separate system requirements.
  • A computer with a relatively powerful CPU or has a GPU with CUDA enabled is required.

Execution

Initiate Training

- Transfer-learning by default:

yolo4r train

Option to specify weights from either OBB or standard YOLO models:

yolo4r train --model <yolo11, yolo11-obb, yolov8, yolov8-obb, yolo12>

yolo4r train -m <yolo11, yolo11-obb, yolov8, yolov8-obb, yolo12>

This will default to using YOLO11n.pt if not specified.

Option to name the model:

yolo4r train --name <custom name>

yolo4r train -n <custom name>

Option to specify dataset within data folder.

yolo4r train --dataset <name of dataset>

yolo4r train -d <name of dataset>

This will default to the most recent dataset within the /data folder.

- Update the most recently trained model:

yolo4r train --update

yolo4r train --u <name of model>

This refers to the most recent best.pt file by default to train from IF there are new images found in the dataset folder. The model can be specified.

- Train a model only from custom dataset:

yolo4r train --scratch

yolo4r train -s

Option to specify model architecture from either OBB or standard YOLO11 model.

yolo4r train --arch <yolo11, yolo11-obb, yolov8, yolov8-obb, yolo12, yolo12-obb>

This will default to YOLO11.yaml if not specified.

- Designed to allow users to debug training operation:

yolo4r train --test

yolo4r train -t

Initiate Detection

- Prompts to select trained model & initiates usb0:

yolo4r detect

- Initiate multiple sources in parallel:

yolo4r detect usb0 usb1 video1.type video2.type

- Designed to allow users to route to debug model:

yolo4r detect --test

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