Zeppelzauer Matthias
Interactive Media Systems Group, Institute for Software Technology and Interactive Systems, Vienna University of Technology, Favoritenstrasse 9-11, Vienna 1040, Austria.
EURASIP J Image Video Process. 2013 Aug 1;2013:46. doi: 10.1186/1687-5281-2013-46.
Biologists often have to investigate large amounts of video in behavioral studies of animals. These videos are usually not sufficiently indexed which makes the finding of objects of interest a time-consuming task. We propose a fully automated method for the detection and tracking of elephants in wildlife video which has been collected by biologists in the field. The method dynamically learns a color model of elephants from a few training images. Based on the color model, we localize elephants in video sequences with different backgrounds and lighting conditions. We exploit temporal clues from the video to improve the robustness of the approach and to obtain spatial and temporal consistent detections. The proposed method detects elephants (and groups of elephants) of different sizes and poses performing different activities. The method is robust to occlusions (e.g., by vegetation) and correctly handles camera motion and different lighting conditions. Experiments show that both near- and far-distant elephants can be detected and tracked reliably. The proposed method enables biologists efficient and direct access to their video collections which facilitates further behavioral and ecological studies. The method does not make hard constraints on the species of elephants themselves and is thus easily adaptable to other animal species.
在动物行为研究中,生物学家常常需要研究大量视频。这些视频通常索引不足,这使得寻找感兴趣的对象成为一项耗时的任务。我们提出了一种全自动方法,用于在野外生物学家收集的野生动物视频中检测和跟踪大象。该方法从一些训练图像中动态学习大象的颜色模型。基于该颜色模型,我们在具有不同背景和光照条件的视频序列中定位大象。我们利用视频中的时间线索来提高该方法的鲁棒性,并获得空间和时间上一致的检测结果。所提出的方法能够检测不同大小和姿势、进行不同活动的大象(以及大象群)。该方法对遮挡(例如被植被遮挡)具有鲁棒性,并能正确处理相机运动和不同的光照条件。实验表明,远近不同的大象都能被可靠地检测和跟踪。所提出的方法使生物学家能够高效、直接地访问他们的视频集,这有助于进一步的行为和生态研究。该方法对大象本身的物种没有严格限制,因此很容易适应其他动物物种。