Artificial intelligence (AI) currently exhibits considerable potential within the realm of biodiversity conservation. However, high-quality regionally customized datasets remain scarce, particularly within urban environments. The existing large-scale bird image datasets often lack a dedicated focus on endangered species endemic to specific geographic regions, as well as a nuanced consideration of the complex interplay between urban and natural environmental contexts. Therefore, this paper introduces Macao-ebird, a novel dataset designed to advance AI-driven recognition and conservation of endangered bird species in Macao. The dataset comprises two subsets: (1) Macao-ebird-cls, a classification dataset with 7341 images covering 24 bird species, emphasizing endangered and vulnerable species native to Macao; and (2) Macao-ebird-det, an object detection dataset generated through AI-agent-assisted labeling using grounding DETR with improved denoising anchor boxes (DINO), significantly reducing manual annotation effort while maintaining high-quality bounding-box annotations. We validate the dataset’s utility through baseline experiments with the You Only Look Once (YOLO) v8–v12 series, achieving a mean average precision (mAP50) of up to 0.984. Macao-ebird addresses critical gaps in the existing datasets by focusing on region-specific endangered species and complex urban–natural environments, providing a benchmark for AI applications in avian conservation.
Sofia Frappi, Shannon G. Klein, Silvia Arossa, Tadzio Bervoets, Ioana-Andreea Ciocanaru, Olivia F. L. Dixon, Austin J. Gallagher, Royale S. Hardenstine, Sander D. den Haring, Alkiviadis Kalampokis, Mattie Rodrigue, Oliver N. Shipley, Luis Silva, Alexandra Steckbauer, Collin T. Williams, Ivor D. Williams, Burton H. Jones, Vincent A. Pieribone, Mohammad A. Qurban, Carlos M. Duarte
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