Human trajectory prediction has received increased attention lately due to its importance in applications such as autonomous vehicles and indoor robots. However, most existing methods make predictions based on human-labeled trajectories and ignore the errors and noises in detection and tracking. In this paper, we study the problem of human trajectory forecasting in raw videos, and show that the prediction accuracy can be severely affected by various types of tracking errors. Accordingly, we propose a simple yet effective strategy to correct the tracking failures by enforcing prediction consistency over time. The proposed "re-tracking" algorithm can be applied to any existing tracking and prediction pipelines. Experiments on public benchmark datasets demonstrate that the proposed method can improve both tracking and prediction performance in challenging real-world scenarios. The code and data are available at https://git.io/retracking-prediction.
翻译:人类轨迹预测最近由于在诸如自主飞行器和室内机器人等应用中的重要性而日益受到重视,然而,大多数现有方法都根据人类标签的轨迹作出预测,而忽略探测和跟踪中的错误和噪音。在本文件中,我们研究了原始视频中的人类轨迹预测问题,并表明预测准确性可能受到各种类型的跟踪错误的严重影响。因此,我们提出了一个简单而有效的战略,通过长期执行预测一致性来纠正跟踪失败。拟议的“重新跟踪”算法可以适用于任何现有的跟踪和预测管道。对公共基准数据集的实验表明,拟议的方法可以在挑战现实世界的情景中改进跟踪和预测绩效。代码和数据可在https://git.io/retracting-preptrection上查阅。