cs.AI updates on arXiv.org 10月17日 12:18
基于VHR图像的鲸鱼种群监测方法研究
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本文提出一种基于高分辨率卫星图像的鲸鱼种群监测方法,通过统计异常检测识别图像中的鲸鱼,并利用在线标注工具提高检测效率,显著降低专家审核工作量。

arXiv:2510.14709v1 Announce Type: cross Abstract: Effective monitoring of whale populations is critical for conservation, but traditional survey methods are expensive and difficult to scale. While prior work has shown that whales can be identified in very high-resolution (VHR) satellite imagery, large-scale automated detection remains challenging due to a lack of annotated imagery, variability in image quality and environmental conditions, and the cost of building robust machine learning pipelines over massive remote sensing archives. We present a semi-automated approach for surfacing possible whale detections in VHR imagery using a statistical anomaly detection method that flags spatial outliers, i.e. "interesting points". We pair this detector with a web-based labeling interface designed to enable experts to quickly annotate the interesting points. We evaluate our system on three benchmark scenes with known whale annotations and achieve recalls of 90.3% to 96.4%, while reducing the area requiring expert inspection by up to 99.8% -- from over 1,000 sq km to less than 2 sq km in some cases. Our method does not rely on labeled training data and offers a scalable first step toward future machine-assisted marine mammal monitoring from space. We have open sourced this pipeline at https://github.com/microsoft/whales.

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鲸鱼监测 高分辨率图像 机器学习 卫星遥感
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