Corcoran Evangeline, Denman Simon, Hamilton Grant
School of Earth, Environmental and Biological Sciences Queensland University of Technology (QUT) Brisbane QLD Australia.
School of Electrical Engineering and Computer Science Queensland University of Technology (QUT) Brisbane QLD Australia.
Ecol Evol. 2020 Jun 30;10(15):8176-8185. doi: 10.1002/ece3.6522. eCollection 2020 Aug.
Reliable estimates of abundance are critical in effectively managing threatened species, but the feasibility of integrating data from wildlife surveys completed using advanced technologies such as remotely piloted aircraft systems (RPAS) and machine learning into abundance estimation methods such as N-mixture modeling is largely unknown due to the unique sources of detection errors associated with these technologies.We evaluated two modeling approaches for estimating the abundance of koalas detected automatically in RPAS imagery: (a) a generalized N-mixture model and (b) a modified Horvitz-Thompson (H-T) estimator method combining generalized linear models and generalized additive models for overall probability of detection, false detection, and duplicate detection. The final estimates from each model were compared to the true number of koalas present as determined by telemetry-assisted ground surveys.The modified H-T estimator approach performed best, with the true count of koalas captured within the 95% confidence intervals around the abundance estimates in all 4 surveys in the testing dataset ( = 138 detected objects), a particularly strong result given the difficulty in attaining accuracy found with previous methods.The results suggested that N-mixture models in their current form may not be the most appropriate approach to estimating the abundance of wildlife detected in RPAS surveys with automated detection, and accurate estimates could be made with approaches that account for spurious detections.
可靠的种群数量估计对于有效管理濒危物种至关重要,但由于与诸如遥控飞机系统(RPAS)和机器学习等先进技术相关的独特检测误差来源,将使用这些先进技术完成的野生动物调查数据整合到诸如N-混合模型等种群数量估计方法中的可行性在很大程度上尚不清楚。我们评估了两种用于估计在RPAS图像中自动检测到的考拉种群数量的建模方法:(a)广义N-混合模型和(b)一种改进的霍维茨-汤普森(H-T)估计方法,该方法结合了广义线性模型和广义相加模型来计算总体检测概率、误检测概率和重复检测概率。将每个模型的最终估计值与通过遥测辅助地面调查确定的实际存在的考拉数量进行比较。改进的H-T估计方法表现最佳,在测试数据集中的所有4次调查中(=138个检测对象),考拉的实际数量都落在种群数量估计值周围的95%置信区间内,鉴于以前的方法难以达到准确结果,这是一个特别突出的结果。结果表明,当前形式的N-混合模型可能不是估计在RPAS调查中通过自动检测发现的野生动物种群数量的最合适方法,而考虑到虚假检测的方法可以得出准确的估计值。