Most pedestrian trajectory prediction methods rely on a huge amount of trajectories annotation, which is time-consuming and expensive. Moreover, a well-trained model may not effectively generalize to a new scenario captured by another camera. Therefore, it is desirable to adapt the model trained on an annotated source domain to the target domain. To achieve domain adaptation for trajectory prediction, we propose a Cross-domain Trajectory Prediction Network (CTP-Net). In this framework, encoders are used in both domains to encode the observed trajectories, then their features are aligned by a cross-domain feature discriminator. Further, considering the consistency between the observed and the predicted trajectories, a target domain offset discriminator is utilized to adversarially regularize the future trajectory predictions to be in line with the observed trajectories. Extensive experiments demonstrate the effectiveness of our method on domain adaptation for pedestrian trajectory prediction.
翻译:大多数行人轨迹预测方法依赖大量耗时和昂贵的轨迹注释。此外,经过良好训练的模型可能无法有效地概括到另一摄像头所捕捉的新情景中。因此,最好将经过附加说明的来源域培训的模型调整到目标域。为了实现轨道预测的域适应,我们提议建立一个跨域轨迹预测网络(CTP-Net)。在这个框架中,两个域都使用编码器来编码观察到的轨迹,然后由跨界特征区分器调整其特征。此外,考虑到所观察到的轨迹与预测轨迹的一致性,利用目标域抵消器对未来轨迹预测进行对抗性调整,使之与所观察到的轨迹相一致。广泛的实验表明我们域适应行人轨迹预测的方法的有效性。