Automatic detection, tracking and counting of birds in marine video content

R. T'Jampens, F. Hernandez, F. Vandecasteele, S. Verstockt
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引用次数: 16

Abstract

Robust automatic detection of moving objects in a marine context is a multi-faceted problem due to the complexity of the observed scene. The dynamic nature of the sea caused by waves, boat wakes, and weather conditions poses huge challenges for the development of a stable background model. Moreover, camera motion, reflections, lightning and illumination changes may contribute to false detections. Dynamic background subtraction (DBGS) is widely considered as a solution to tackle this issue in the scope of vessel detection for maritime traffic analysis. In this paper, the DBGS techniques suggested for ships are investigated and optimized for the monitoring and tracking of birds in marine video content. In addition to background subtraction, foreground candidates are filtered by a classifier based on their feature descriptors in order to remove non-bird objects. Different types of classifiers have been evaluated and results on a ground truth labeled dataset of challenging video fragments show similar levels of precision and recall of about 95% for the best performing classifier. The remaining foreground items are counted and birds are tracked along the video sequence using spatio-temporal motion prediction. This allows marine scientists to study the presence and behavior of birds.
海洋视频内容中鸟类的自动检测、跟踪和计数
海洋环境中运动物体的鲁棒自动检测是一个多方面的问题,因为观察到的场景非常复杂。海浪、船只尾迹和天气条件引起的海洋动态特性对建立稳定的背景模型提出了巨大挑战。此外,相机的运动、反射、闪电和光照的变化都可能导致错误的检测。动态背景减法(DBGS)被广泛认为是解决海上交通分析船舶检测范围内这一问题的一种方法。本文对船舶上建议的DBGS技术进行了研究和优化,用于海洋视频内容中鸟类的监测和跟踪。除了背景减除之外,分类器还根据前景候选物的特征描述符对其进行过滤,以去除非鸟类对象。对不同类型的分类器进行了评估,在具有挑战性的视频片段的真实标记数据集上的结果显示,对于性能最好的分类器,精确度和召回率相似,约为95%。剩余的前景项目被计数,并使用时空运动预测沿视频序列跟踪鸟类。这使得海洋科学家能够研究鸟类的存在和行为。
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