Visuals captured by high-flying aerial drones are increasingly used to assess biodiversity and animal population dynamics around the globe. Yet, challenging acquisition scenarios and tiny animal depictions in airborne imagery, despite ultra-high resolution cameras, have so far been limiting factors for applying computer vision detectors successfully with high confidence. In this paper, we address the problem for the first time by combining deep object detectors with super-resolution techniques and altitude data. In particular, we show that the integration of a holistic attention network based super-resolution approach and a custom-built altitude data exploitation network into standard recognition pipelines can considerably increase the detection efficacy in real-world settings. We evaluate the system on two public, large aerial-capture animal datasets, SAVMAP and AED. We find that the proposed approach can consistently improve over ablated baselines and the state-of-the-art performance for both datasets. In addition, we provide a systematic analysis of the relationship between animal resolution and detection performance. We conclude that super-resolution and altitude knowledge exploitation techniques can significantly increase benchmarks across settings and, thus, should be used routinely when detecting minutely resolved animals in aerial imagery.
翻译:然而,尽管超高分辨率照相机,但具有挑战性的获取情景和空中图像中的微小动物描述迄今一直是以高度自信成功应用计算机视觉探测器的限制因素。在本文件中,我们首次通过将深物体探测器与超分辨率技术和高度数据相结合来解决这一问题。我们特别表明,基于超分辨率的超视网和定制的高度数据开发网络结合到标准识别管道中,可以大大提高真实世界环境中的检测效力。我们评估了两个公共大型空中捕获动物数据集、反车辆地雷和亚经体的系统。我们发现,拟议方法可以不断改进,超越已铺开的基线和两个数据集的最新性能。此外,我们还系统地分析动物分辨率和探测性能之间的关系。我们的结论是,超分辨率和高度知识开发技术可以大大提高各种环境的基准,因此,在空中图像中探测小解的动物时,应定期使用。