Tracking individuals is a vital part of many experiments conducted to understand collective behaviour. Ants are the paradigmatic model system for such experiments but their lack of individually distinguishing visual features and their high colony densities make it extremely difficult to perform reliable tracking automatically. Additionally, the wide diversity of their species' appearances makes a generalized approach even harder. In this paper, we propose a data-driven multi-object tracker that, for the first time, employs domain adaptation to achieve the required generalisation. This approach is built upon a joint-detection-and-tracking framework that is extended by a set of domain discriminator modules integrating an adversarial training strategy in addition to the tracking loss. In addition to this novel domain-adaptive tracking framework, we present a new dataset and a benchmark for the ant tracking problem. The dataset contains 57 video sequences with full trajectory annotation, including 30k frames captured from two different ant species moving on different background patterns. It comprises 33 and 24 sequences for source and target domains, respectively. We compare our proposed framework against other domain-adaptive and non-domain-adaptive multi-object tracking baselines using this dataset and show that incorporating domain adaptation at multiple levels of the tracking pipeline yields significant improvements. The code and the dataset are available at https://github.com/chamathabeysinghe/da-tracker.
翻译:跟踪个人是许多为理解集体行为而进行的实验的重要组成部分。 Ants是这类实验的范式模型系统,但是它们缺乏单独区分的视觉特征和高聚居密度使得难以自动地进行可靠的跟踪。 此外,其物种外观的多样性使得一种普遍的方法更加困难。在本文件中,我们提议采用数据驱动的多对象跟踪器,首次利用领域适应来实现所要求的概括化。这个方法基于一个联合检测和跟踪框架,在跟踪损失之外,通过一套结合对抗性培训战略的域区分模块加以扩展。除了这个全新的域适应性跟踪框架外,我们还提出了一个新的数据集和反向跟踪问题基准。该数据集包含57个视频序列,配有全轨注,包括从两种不同前方物种中采集的30K框架。它分别包括33和24个源和目标区域序列。我们将我们提议的框架与其他域适应性和非常态适应性培训模块模块加以比较,除跟踪损失之外,我们还将一个新的域适应性适应性跟踪框架和基准,我们提出了新的前方跟踪问题。 数据集包含全轨注的57个视频序列,包括从不同背景模式上移动两个不同物种的30K框架。 我们用该轨道/多位跟踪的多位数据,在数据库跟踪数据中显示现有数据。