Trajectory prediction is a fundamental and challenging task for numerous applications, such as autonomous driving and intelligent robots. Currently, most of existing work treat the pedestrian trajectory as a series of fixed two-dimensional coordinates. However, in real scenarios, the trajectory often exhibits randomness, and has its own probability distribution. Inspired by this observed fact, also considering other movement characteristics of pedestrians, we propose one simple and intuitive movement description, probability trajectory, which maps the coordinate points of pedestrian trajectory into two-dimensional Gaussian distribution in images. Based on this unique description, we develop one novel trajectory prediction method, called social probability. The method combines the new probability trajectory and powerful convolution recurrent neural networks together. Both the input and output of our method are probability trajectories, which provide the recurrent neural network with sufficient spatial and random information of moving pedestrians. And the social probability extracts spatio-temporal features directly on the new movement description to generate robust and accurate predicted results. The experiments on public benchmark datasets show the effectiveness of the proposed method.
翻译:对自主驾驶和智能机器人等多种应用而言,轨迹预测是一项根本性的、具有挑战性的任务。目前,大多数现有工作将行人轨迹作为一系列固定的二维坐标进行。然而,在实际情况下,轨迹往往显示随机性,并有其自身的概率分布。受此观察事实的启发,我们还考虑到行人的其他移动特征,提出了一个简单和直观的移动描述、概率轨迹,将行人轨迹的坐标绘制成两维高斯图像的分布。基于这一独特的描述,我们开发了一种新颖的轨迹预测方法,称为社会概率。该方法将新的概率轨迹和强大的共振动经常性神经网络结合起来。我们方法的输入和输出都是概率轨迹,为经常性神经网络提供了足够的移动行人空间和随机信息。社会概率直接从新的运动描述中提取spotio-时空特征,以产生可靠和准确的预测结果。关于公共基准数据集的实验显示了拟议方法的有效性。