Visual Tracking of Small Animals in Cluttered Natural Environments Using a Freely Moving Camera

B. Risse, M. Mangan, B. Webb, Luca Del Pero
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引用次数: 33

Abstract

Image-based tracking of animals in their natural habitats can provide rich behavioural data, but is very challenging due to complex and dynamic background and target appearances. We present an effective method to recover the positions of terrestrial animals in cluttered environments from video sequences filmed using a freely moving monocular camera. The method uses residual motion cues to detect the targets and is thus robust to different lighting conditions and requires no a-priori appearance model of the animal or environment. The detection is globally optimised based on an inference problem formulation using factor graphs. This handles ambiguities such as occlusions and intersections and provides automatic initialisation. Furthermore, this formulation allows a seamless integration of occasional user input for the most difficult situations, so that the effect of a few manual position estimates are smoothly distributed over long sequences. Testing our system against a benchmark dataset featuring small targets in natural scenes, we obtain 96% accuracy for fully automated tracking. We also demonstrate reliable tracking in a new data set that includes different targets (insects, vertebrates or artificial objects) in a variety of environments (desert, jungle, meadows, urban) using different imaging devices (day / night vision cameras, smart phones) and modalities (stationary, hand-held, drone operated).
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在杂乱的自然环境中使用自由移动相机的小动物视觉跟踪
基于图像的动物自然栖息地跟踪可以提供丰富的行为数据,但由于复杂和动态的背景和目标外观,这是非常具有挑战性的。我们提出了一种有效的方法,从使用自由移动的单目摄像机拍摄的视频序列中恢复杂乱环境中陆生动物的位置。该方法使用残余运动线索来检测目标,因此对不同的光照条件具有鲁棒性,并且不需要先验的动物或环境外观模型。检测是基于使用因子图的推理问题公式进行全局优化的。这样可以处理歧义,如遮挡和交叉,并提供自动初始化。此外,该公式允许在最困难的情况下无缝集成偶尔的用户输入,以便一些手动位置估计的效果在长序列中平滑分布。针对自然场景中具有小目标的基准数据集测试我们的系统,我们获得了96%的全自动跟踪准确率。我们还展示了可靠的跟踪在一个新的数据集中,包括不同的目标(昆虫,脊椎动物或人工物体)在各种环境(沙漠,丛林,草地,城市)使用不同的成像设备(昼/夜视相机,智能手机)和模式(固定,手持,无人机操作)。
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