BeeMonitor: Automated IoT video surveillance and an AI-powered video processing system for monitoring the foraging and nesting behavior of solitary bees - Datasets

Pollinators, including bees, play a crucial role in plant reproduction and food production, yet populations of many species are declining due to habitat loss, pesticide exposure, and climate variability. Monitoring pollinator nesting and foraging behavior is essential for understanding their responses to environmental changes, but manual observation is labor-intensive and error-prone. In this study, we introduce BeeMonitor, an automated video surveillance and AI-powered processing system for monitoring solitary bees that nest in above-ground cavities. The system integrates hardware for continuous video recording and a software pipeline utilizing YOLOv8 object detection and BeeTrack, a custom multiple-object tracking algorithm tailored for tracking fast-moving bees. We evaluated BeeMonitor by recording and analyzing 110 minutes of monitoring footage and comparing its performance against manual observations. Our results show that BeeMonitor achieved a high recall of 93.5% and a precision of 74.7%. The BeeMonitor system offers a scalable and efficient approach for researchers and conservationists to monitor solitary bee activity, contributing to ecological studies and pollinator conservation efforts.

Citation

Amoah, Edward; Grozinger, Christina; Boyle, Natalie; Sanjel, Santosh (2025). BeeMonitor: Automated IoT video surveillance and an AI-powered video processing system for monitoring the foraging and nesting behavior of solitary bees - Datasets [Data set]. Scholarsphere. https://doi.org/10.26207/z3df-qs02

Files

Metadata

Work Title BeeMonitor: Automated IoT video surveillance and an AI-powered video processing system for monitoring the foraging and nesting behavior of solitary bees - Datasets
Access
Open Access
Creators
  1. Edward Amoah
  2. Christina Grozinger
  3. Natalie Boyle
  4. Santosh Sanjel
License MIT License
Work Type Dataset
Publication Date April 4, 2025
DOI doi:10.26207/z3df-qs02
Deposited April 04, 2025

Versions

Analytics

Collections

This resource is currently not in any collection.

Work History

Version 1
published

  • Created
  • Updated
  • Updated Description, Publication Date Show Changes
    Description
    • Pollinators, including bees, play a crucial role in plant reproduction and food production, yet populations of many species are declining due to habitat loss, pesticide exposure, and climate variability. Monitoring pollinator nesting and foraging behavior is essential for understanding their responses to environmental changes, but manual observation is labor-intensive and error-prone. In this study, we introduce BeeMonitor, an automated video surveillance and AI-powered processing system for monitoring solitary bees that nest in above-ground cavities. The system integrates hardware for continuous video recording and a software pipeline utilizing YOLOv8 object detection and BeeTrack, a custom multiple-object tracking algorithm tailored for tracking fast-moving bees. We evaluated BeeMonitor by recording and analyzing 110 minutes of monitoring footage and comparing its performance against manual observations. Our results show that BeeMonitor achieved a high recall of 93.5% and a precision of 74.7%. The BeeMonitor system offers a scalable and efficient approach for researchers and conservationists to monitor solitary bee activity, contributing to ecological studies and pollinator conservation efforts.
    Publication Date
    • 2025-04-04
  • Added Creator Edward Amoah
  • Added Creator Christina Grozinger
  • Added Creator Natalie Boyle
  • Added Creator Santosh Sanjel
  • Added Manual_Foraging_Events_Observation.csv
  • Added CVPR_Evaluation_Video_Data.zip
  • Added CVPR_May_9th_Videos.zip
  • Added README.md
  • Updated License Show Changes
    License
    • https://opensource.org/licenses/MIT
  • Published

Version 2
published

  • Created
  • Added weather_data_2024_5_9.csv
  • Published
  • Updated