Feng Jiangfan, Xiao Xinxin
School of Computer Science and Technology, Chongqing University of Posts and Telecommunications, Chongqing 400065, China.
Animals (Basel). 2022 May 9;12(9):1223. doi: 10.3390/ani12091223.
Camera trapping and video recording are now ubiquitous in the study of animal ecology. These technologies hold great potential for wildlife tracking, but are limited by current learning approaches, and are hampered by dependence on large samples. Most species of wildlife are rarely captured by camera traps, and thus only a few shot samples are available for processing and subsequent identification. These drawbacks can be overcome in multiobject tracking by combining wildlife detection and tracking with few-shot learning. This work proposes a multiobject-tracking approach based on a tracking-by-detection paradigm for wildlife to improve detection and tracking performance. We used few-shot object detection to localize objects using a camera trap and direct video recordings that could augment the synthetically generated parts of separate images with spatial constraints. In addition, we introduced a trajectory reconstruction module for better association. It could alleviate a few-shot object detector's missed and false detections; in addition, it could optimize the target identification between consecutive frames. Our approach produced a fully automated pipeline for detecting and tracking wildlife from video records. The experimental results aligned with theoretical anticipation according to various evaluation metrics, and revealed the future potential of camera traps to address wildlife detection and tracking in behavior and conservation.
相机诱捕和视频记录如今在动物生态学研究中无处不在。这些技术在野生动物追踪方面具有巨大潜力,但受当前学习方法的限制,且因依赖大量样本而受阻。大多数野生动物物种很少被相机陷阱捕捉到,因此只有少量拍摄样本可用于处理和后续识别。通过将野生动物检测与追踪和少样本学习相结合,多目标追踪可以克服这些缺点。这项工作提出了一种基于检测跟踪范式的多目标追踪方法,用于野生动物,以提高检测和跟踪性能。我们使用少样本目标检测,通过相机陷阱和直接视频记录来定位目标,这些记录可以利用空间约束增强单独图像的合成生成部分。此外,我们引入了一个轨迹重建模块以实现更好的关联。它可以减轻少样本目标检测器的漏检和误检;此外,它还可以优化连续帧之间的目标识别。我们的方法产生了一个用于从视频记录中检测和跟踪野生动物的全自动管道。根据各种评估指标,实验结果与理论预期一致,并揭示了相机陷阱在解决野生动物行为和保护中的检测与跟踪问题方面的未来潜力。