Combining Object Detection, Super-Resolution GANs and Transformers to Facilitate Tick Identification Workflow from Crowdsourced Images on the eTick Platform
Author:
Publication type:
Journal Article
Publication date:
2025-08
Journal/Series title:
Insects
Volume:
16
Issue:
8
Abstract:
Given that Dermacentor ticks represent more than 60% of tick volume submitted on the eTick platform, the integration of a low granularity model in the processing workflow could save significant time while maintaining very high standards of identification accuracy. Our findings highlight the potential of combining modern AI methods to facilitate efficient and accurate tick image processing in community science platforms, while emphasizing the need to adapt model complexity and class resolution to task-specific constraints.