Evaluating a tandem human-machine approach to labelling of wildlife in remote camera monitoring
收藏U.S. Geological Survey2023-01-01 更新2026-04-23 收录
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Remote cameras (?trail cameras?) are a popular tool for non-invasive, continuous wildlife monitoring, and as they become more prevalent in wildlife research, machine learning (ML) is increasingly used to automate or accelerate the labor-intensive process of labelling (i.e., tagging) photos. Human-machine hybrid tagging approaches have been shown to greatly increase tagging efficiency (i.e., time to tag a single image). However, those potential increases hinge on the extent to which an ML model makes correct vs. incorrect predictions. We performed an experiment using a ML model that produces bounding boxes around animals, people, and vehicles in remote camera imagery (MegaDetector), to consider the impact of a ML model?s performance on its ability to accelerate human labeling. Six participants tagged trail camera images collected from 12 sites in Vermont and Maine, USA (January-September 2022) using three tagging methods (one with ML bounding box assistance and two without assistance).
提供机构:
U.S. Geological Survey; Vermont Cooperative Fish and Wildlife Research Unit; United States Geological Survey; null
创建时间:
2023-01-01



