@article{Jiang2026, 
author = {Qihao Jiang and Ruirui Mao and Yilin Zhao and Jiangjian Xie and Congtian Lin and Rui Zhu and Zhishu Xiao and Jiang Chang},
title = {Removing non-avian sounds enhances correlations between acoustic indices and bird vocal activity in urban environments},
year = {2026},
journal = {Avian Research},
volume = {17},
number = {2},
keywords = {Urban Environment, Acoustic indices, Bird vocal activity, Non-target removal, Soundscape classification},
url = {https://www.sciopen.com/article/10.1016/j.avrs.2026.100361},
doi = {10.1016/j.avrs.2026.100361},
abstract = {Acoustic indices have been increasingly explored as possible proxies for biodiversity, yet in complex environments non-avian sounds often mask bird vocalizations, compromising assessment accuracy and ecological representativeness. To address this, we developed an integrated framework that combines deep learning-based soundscape classification with a threshold-optimized strategy for removing non-avian recordings. A multi-label model was trained to identify 12 representative soundscape categories. Non-avian recordings were then removed using threshold criteria optimized through systematic evaluation of threshold combinations, maximizing correlations between six acoustic indices [acoustic complexity index (ACI), acoustic diversity index (ADI), acoustic evenness index (AEI), bioacoustic index (BIO), normalized difference soundscape index (NDSI), acoustic entropy index (H)] and bird vocal activity while retaining as much useable recording data as possible to avoid excessive reduction of sample size. To validate the effectiveness of our framework, generalized additive models and random forest regressions were used to compare diel patterns and predict bird vocal activity before and after removal. Using data from 19 passive acoustic recorders in the Central Green Forest Park, Beijing, we found insect sounds exerted the strongest masking effect on relationships between indices and bird vocal activity. Applying optimized removal improved temporal alignment of indices with bird vocal activity and enhanced predictive performance. This study demonstrates that threshold-guided removal of non-avian recordings strengthen the ecological interpretability and predictive utility of acoustic indices in biodiversity monitoring.}
}