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Exploiting Time-Series Image-to-Image Translation to Expand the Range of Wildlife Habitat Analysis

机译:利用时间序列图像到图像转换,扩大野生动物栖息地分析范围

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Characterizing wildlife habitat is one of the main topics in animal ecology. Locational data obtained from radio tracking and field observation are widely used in habitat analysis. However, such sampling methods are costly and laborious, and insufficient relocations often prevent scientists from conducting large-range and long-term research. In this paper, we innovatively exploit the image-to-image translation technology to expand the range of wildlife habitat analysis. We proposed a novel approach for implementing time-series image-to-image translation via metric embedding. A siamese neural network is used to learn the Euclidean temporal embedding from the image space. This embedding produces temporal vectors which bring time information into the adversarial network. The well-trained framework could effectively map the probabilistic habitat models from remote sensing imagery, helping scientists get rid of the persistent dependence on animal relocations. We illustrate our approach in a real-world application for mapping the habitats of Bar-headed Geese at Qinghai Lake breeding ground. We compare our model against several baselines and achieve promising results.
机译:表征野生动物栖息地是动物生态学的主要主题之一。从无线电跟踪和场观察获得的位置数据被广泛用于栖息地分析。然而,这种抽样方法昂贵且艰苦,并且迁移不足通常会阻止科学家进行大规模和长期的研究。在本文中,我们创新地利用图像到图像形象翻译技术扩展了野生动物栖息地分析范围。我们提出了一种用于通过度量嵌入实现时间序列图像到图像转换的新方法。暹罗神经网络用于学习来自图像空间的欧几里德时间嵌入。该嵌入产生时间向量,将时间信息带入对抗网络。训练有素的框架可以有效地将概率栖息地模型从遥感图像上映射,帮助科学家摆脱持续依赖动物搬迁。我们说明了我们在一个真实世界中的方法,用于在青海湖养殖场映射酒吧鹅的栖息地。我们将模型与几个基线进行比较并实现有前途的结果。

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