SEABAD: A Tropical Bird Activity Detection Dataset for Passive Acoustic Monitoring
Muhammad Mun'im Ahmad Zabidi, Mohd Yamani Idna Idris, Norisma Idris

TL;DR
SEABAD introduces a large, balanced dataset of Southeast Asian bird sounds for improving passive acoustic monitoring and bird detection systems in tropical environments.
Contribution
The paper presents a new tropical bird activity detection dataset, SEABAD, with a novel curation pipeline and baseline results for bird audio detection in dense tropical soundscapes.
Findings
SEABAD contains 50,000 curated clips from 1,677 species.
Baseline MobileNetV3-Small classifier achieved over 99.5% accuracy.
Class imbalance was reduced by 13.7% through the curation process.
Abstract
Passive acoustic monitoring (PAM) enables large-scale biodiversity assessment, but continuous recording generates large amounts of non-informative audio, creating challenges for storage, power consumption, and long-term edge deployment. Bird audio detection (BAD), which identifies bird vocalizations, can reduce this burden by filtering irrelevant recordings before downstream analysis. However, most BAD systems are trained on temperate datasets despite tropical soundscapes being denser, more species-rich, and acoustically unpredictable. To address this gap, we introduce SEABAD (Southeast Asian Bird Activity Detection), a dataset of 50,000 curated three-second clips from Southeast Asian soundscapes, evenly balanced between bird-present and bird-absent samples. The dataset spans 1,677 bird species and is standardized to 16 kHz mono audio for embedded and low-power inference. We developed a…
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