论文标题
具有可转移卷积神经网络的多目标跟踪
Multi-Target Tracking with Transferable Convolutional Neural Networks
论文作者
论文摘要
多目标跟踪(MTT)是一项经典的信号处理任务,其目标是从嘈杂的传感器测量值中估算未知数量的移动目标的状态。在本文中,我们从深度学习的角度重新访问了MTT,并提出了卷积神经网络(CNN)架构来解决它。我们将目标状态和传感器测量表示为图像,并将问题重新验证为图像对图像预测任务。然后,我们在小型跟踪区域训练完全卷积的模型,并将其转移到具有许多目标和传感器的更大区域。这种转移学习方法可以大规模地启用MTT,理论上也通过我们的新颖分析来支持概括误差。实际上,提议的可转移CNN体系结构的表现优于MTT任务上的随机有限设置过滤器,其中10个目标和转移,而无需重新训练更大的MTT任务,并具有250个目标,其性能提高了29%。
Multi-target tracking (MTT) is a classical signal processing task, where the goal is to estimate the states of an unknown number of moving targets from noisy sensor measurements. In this paper, we revisit MTT from a deep learning perspective and propose a convolutional neural network (CNN) architecture to tackle it. We represent the target states and sensor measurements as images and recast the problem as an image-to-image prediction task. Then we train a fully convolutional model at small tracking areas and transfer it to much larger areas with numerous targets and sensors. This transfer learning approach enables MTT at a large scale and is also theoretically supported by our novel analysis that bounds the generalization error. In practice, the proposed transferable CNN architecture outperforms random finite set filters on the MTT task with 10 targets and transfers without re-training to a larger MTT task with 250 targets with a 29% performance improvement.