Evaluation of BugBox, a software platform for AI-assisted bioinventories of arthropods
收藏DataONE2025-10-30 更新2025-11-01 收录
下载链接:
https://search.dataone.org/view/sha256:7bac60271f9d80c7c199974e49b250574e1c00aca7a7efba834ef46cfae22cae
下载链接
链接失效反馈官方服务:
资源简介:
Artificial intelligence (AI) technology has the potential to revolutionize entomology and biodiversity research, allowing entomologists to address biodiversity questions on a larger scale than ever before. A new software program, called BugBox, has been developed to facilitate large-scale arthropod bioinventories. BugBox uses an AI algorithm to rapidly classify arthropods from specimen photographs and calculates per-sample diversity indices from its classifications. We evaluated the performance of the AI algorithm over three consecutive training cycles by comparing the AIâs classifications to classifications by an expert human taxonomist. BugBox demonstrated substantial improvement in all test metrics over the three cycles as it was allowed to incorporate the human expertâs corrections into each new model version (e.g., raw accuracy improved from 44% to 78% over the three consecutive model versions). We also used both AI and human data to separately test the hypothesis that regenerative..., This data is part of Ecdysis Foundation's 1000 Farms Initiative. Arthropods were collected along transects in agricultural fields, pastures and orchards across multiple states. The specimens were photographed and submitted to the machine-learning software BugBox for classification according to a morphospecies database maintained by Ecdysis Foundation. Submitted data were also reviewed and re-identified by a human expert to document the software's accuracy and to compare biodiversity calculations and hypothesis tests based on AI identifications and human identifications., , # Evaluation of BugBox, a software platform for AI-assisted bioinventories of arthropods
Dataset DOI: [10.5061/dryad.7sqv9s51k](10.5061/dryad.7sqv9s51k)
## Principle Investigator Contact Information
```
Name: Kelton Welch
Institution: Ecdysis Foundation
Email: kelton.welch@ecdysis.bio
```
## Dataset Overview
This dataset includes two spreadsheets with complete data used in analyses for Welch et al. (in review). This manuscript details the use of artificial intelligence (AI) technology to evaluate biodiversity in agricultural habitats in various regions of the United States and Canada. The research implements a work pipeline in which biodiversity surveys are conducted using the AI for identifications in conjunction with continual human reviews and model improvements over successive versions of the model.
The file \"BBE_Dryad_Full_Evaluation.xlsx\" contains data collected from agricultural habitats and classified by both the AI agent and a human expert (KDW).
The file \"BBE_dryad_vers...,
创建时间:
2025-10-31



